1552 lines
54 KiB
Plaintext
1552 lines
54 KiB
Plaintext
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unit imjquant2;
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{ This file contains 2-pass color quantization (color mapping) routines.
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These routines provide selection of a custom color map for an image,
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followed by mapping of the image to that color map, with optional
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Floyd-Steinberg dithering.
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It is also possible to use just the second pass to map to an arbitrary
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externally-given color map.
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Note: ordered dithering is not supported, since there isn't any fast
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way to compute intercolor distances; it's unclear that ordered dither's
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fundamental assumptions even hold with an irregularly spaced color map. }
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{ Original: jquant2.c; Copyright (C) 1991-1996, Thomas G. Lane. }
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interface
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{$I imjconfig.inc}
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uses
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imjmorecfg,
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imjdeferr,
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imjerror,
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imjutils,
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imjpeglib;
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{ Module initialization routine for 2-pass color quantization. }
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{GLOBAL}
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procedure jinit_2pass_quantizer (cinfo : j_decompress_ptr);
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implementation
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{ This module implements the well-known Heckbert paradigm for color
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quantization. Most of the ideas used here can be traced back to
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Heckbert's seminal paper
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Heckbert, Paul. "Color Image Quantization for Frame Buffer Display",
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Proc. SIGGRAPH '82, Computer Graphics v.16 #3 (July 1982), pp 297-304.
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In the first pass over the image, we accumulate a histogram showing the
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usage count of each possible color. To keep the histogram to a reasonable
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size, we reduce the precision of the input; typical practice is to retain
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5 or 6 bits per color, so that 8 or 4 different input values are counted
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in the same histogram cell.
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Next, the color-selection step begins with a box representing the whole
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color space, and repeatedly splits the "largest" remaining box until we
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have as many boxes as desired colors. Then the mean color in each
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remaining box becomes one of the possible output colors.
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The second pass over the image maps each input pixel to the closest output
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color (optionally after applying a Floyd-Steinberg dithering correction).
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This mapping is logically trivial, but making it go fast enough requires
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considerable care.
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Heckbert-style quantizers vary a good deal in their policies for choosing
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the "largest" box and deciding where to cut it. The particular policies
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used here have proved out well in experimental comparisons, but better ones
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may yet be found.
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In earlier versions of the IJG code, this module quantized in YCbCr color
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space, processing the raw upsampled data without a color conversion step.
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This allowed the color conversion math to be done only once per colormap
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entry, not once per pixel. However, that optimization precluded other
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useful optimizations (such as merging color conversion with upsampling)
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and it also interfered with desired capabilities such as quantizing to an
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externally-supplied colormap. We have therefore abandoned that approach.
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The present code works in the post-conversion color space, typically RGB.
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To improve the visual quality of the results, we actually work in scaled
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RGB space, giving G distances more weight than R, and R in turn more than
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B. To do everything in integer math, we must use integer scale factors.
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The 2/3/1 scale factors used here correspond loosely to the relative
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weights of the colors in the NTSC grayscale equation.
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If you want to use this code to quantize a non-RGB color space, you'll
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probably need to change these scale factors. }
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const
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R_SCALE = 2; { scale R distances by this much }
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G_SCALE = 3; { scale G distances by this much }
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B_SCALE = 1; { and B by this much }
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{ Relabel R/G/B as components 0/1/2, respecting the RGB ordering defined
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in jmorecfg.h. As the code stands, it will do the right thing for R,G,B
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and B,G,R orders. If you define some other weird order in jmorecfg.h,
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you'll get compile errors until you extend this logic. In that case
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you'll probably want to tweak the histogram sizes too. }
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{$ifdef RGB_RED_IS_0}
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const
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C0_SCALE = R_SCALE;
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C1_SCALE = G_SCALE;
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C2_SCALE = B_SCALE;
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{$else}
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const
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C0_SCALE = B_SCALE;
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C1_SCALE = G_SCALE;
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C2_SCALE = R_SCALE;
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{$endif}
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{ First we have the histogram data structure and routines for creating it.
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The number of bits of precision can be adjusted by changing these symbols.
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We recommend keeping 6 bits for G and 5 each for R and B.
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If you have plenty of memory and cycles, 6 bits all around gives marginally
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better results; if you are short of memory, 5 bits all around will save
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some space but degrade the results.
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To maintain a fully accurate histogram, we'd need to allocate a "long"
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(preferably unsigned long) for each cell. In practice this is overkill;
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we can get by with 16 bits per cell. Few of the cell counts will overflow,
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and clamping those that do overflow to the maximum value will give close-
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enough results. This reduces the recommended histogram size from 256Kb
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to 128Kb, which is a useful savings on PC-class machines.
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(In the second pass the histogram space is re-used for pixel mapping data;
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in that capacity, each cell must be able to store zero to the number of
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desired colors. 16 bits/cell is plenty for that too.)
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Since the JPEG code is intended to run in small memory model on 80x86
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machines, we can't just allocate the histogram in one chunk. Instead
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of a true 3-D array, we use a row of pointers to 2-D arrays. Each
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pointer corresponds to a C0 value (typically 2^5 = 32 pointers) and
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each 2-D array has 2^6*2^5 = 2048 or 2^6*2^6 = 4096 entries. Note that
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on 80x86 machines, the pointer row is in near memory but the actual
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arrays are in far memory (same arrangement as we use for image arrays). }
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const
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MAXNUMCOLORS = (MAXJSAMPLE+1); { maximum size of colormap }
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{ These will do the right thing for either R,G,B or B,G,R color order,
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but you may not like the results for other color orders. }
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const
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HIST_C0_BITS = 5; { bits of precision in R/B histogram }
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HIST_C1_BITS = 6; { bits of precision in G histogram }
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HIST_C2_BITS = 5; { bits of precision in B/R histogram }
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{ Number of elements along histogram axes. }
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const
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HIST_C0_ELEMS = (1 shl HIST_C0_BITS);
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HIST_C1_ELEMS = (1 shl HIST_C1_BITS);
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HIST_C2_ELEMS = (1 shl HIST_C2_BITS);
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{ These are the amounts to shift an input value to get a histogram index. }
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const
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C0_SHIFT = (BITS_IN_JSAMPLE-HIST_C0_BITS);
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C1_SHIFT = (BITS_IN_JSAMPLE-HIST_C1_BITS);
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C2_SHIFT = (BITS_IN_JSAMPLE-HIST_C2_BITS);
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type { Nomssi }
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RGBptr = ^RGBtype;
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RGBtype = packed record
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r,g,b : JSAMPLE;
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end;
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type
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histcell = UINT16; { histogram cell; prefer an unsigned type }
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type
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histptr = ^histcell {FAR}; { for pointers to histogram cells }
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type
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hist1d = array[0..HIST_C2_ELEMS-1] of histcell; { typedefs for the array }
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{hist1d_ptr = ^hist1d;}
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hist1d_field = array[0..HIST_C1_ELEMS-1] of hist1d;
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{ type for the 2nd-level pointers }
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hist2d = ^hist1d_field;
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hist2d_field = array[0..HIST_C0_ELEMS-1] of hist2d;
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hist3d = ^hist2d_field; { type for top-level pointer }
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{ Declarations for Floyd-Steinberg dithering.
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Errors are accumulated into the array fserrors[], at a resolution of
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1/16th of a pixel count. The error at a given pixel is propagated
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to its not-yet-processed neighbors using the standard F-S fractions,
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... (here) 7/16
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3/16 5/16 1/16
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We work left-to-right on even rows, right-to-left on odd rows.
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We can get away with a single array (holding one row's worth of errors)
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by using it to store the current row's errors at pixel columns not yet
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processed, but the next row's errors at columns already processed. We
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need only a few extra variables to hold the errors immediately around the
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current column. (If we are lucky, those variables are in registers, but
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even if not, they're probably cheaper to access than array elements are.)
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The fserrors[] array has (#columns + 2) entries; the extra entry at
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each end saves us from special-casing the first and last pixels.
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Each entry is three values long, one value for each color component.
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Note: on a wide image, we might not have enough room in a PC's near data
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segment to hold the error array; so it is allocated with alloc_large. }
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{$ifdef BITS_IN_JSAMPLE_IS_8}
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type
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FSERROR = INT16; { 16 bits should be enough }
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LOCFSERROR = int; { use 'int' for calculation temps }
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{$else}
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type
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FSERROR = INT32; { may need more than 16 bits }
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LOCFSERROR = INT32; { be sure calculation temps are big enough }
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{$endif}
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type { Nomssi }
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RGB_FSERROR_PTR = ^RGB_FSERROR;
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RGB_FSERROR = packed record
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r,g,b : FSERROR;
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end;
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LOCRGB_FSERROR = packed record
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r,g,b : LOCFSERROR;
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end;
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type
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FSERROR_PTR = ^FSERROR;
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jFSError = 0..(MaxInt div SIZEOF(RGB_FSERROR))-1;
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FS_ERROR_FIELD = array[jFSError] of RGB_FSERROR;
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FS_ERROR_FIELD_PTR = ^FS_ERROR_FIELD;{far}
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{ pointer to error array (in FAR storage!) }
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type
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error_limit_array = array[-MAXJSAMPLE..MAXJSAMPLE] of int;
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{ table for clamping the applied error }
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error_limit_ptr = ^error_limit_array;
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{ Private subobject }
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type
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my_cquantize_ptr = ^my_cquantizer;
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my_cquantizer = record
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pub : jpeg_color_quantizer; { public fields }
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{ Space for the eventually created colormap is stashed here }
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sv_colormap : JSAMPARRAY; { colormap allocated at init time }
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desired : int; { desired # of colors = size of colormap }
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{ Variables for accumulating image statistics }
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histogram : hist3d; { pointer to the histogram }
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needs_zeroed : boolean; { TRUE if next pass must zero histogram }
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{ Variables for Floyd-Steinberg dithering }
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fserrors : FS_ERROR_FIELD_PTR; { accumulated errors }
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on_odd_row : boolean; { flag to remember which row we are on }
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error_limiter : error_limit_ptr; { table for clamping the applied error }
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end;
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{ Prescan some rows of pixels.
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In this module the prescan simply updates the histogram, which has been
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initialized to zeroes by start_pass.
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An output_buf parameter is required by the method signature, but no data
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is actually output (in fact the buffer controller is probably passing a
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NIL pointer). }
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{METHODDEF}
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procedure prescan_quantize (cinfo : j_decompress_ptr;
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input_buf : JSAMPARRAY;
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output_buf : JSAMPARRAY;
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num_rows : int);
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var
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cquantize : my_cquantize_ptr;
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{register} ptr : RGBptr;
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{register} histp : histptr;
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{register} histogram : hist3d;
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row : int;
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col : JDIMENSION;
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width : JDIMENSION;
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begin
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cquantize := my_cquantize_ptr(cinfo^.cquantize);
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histogram := cquantize^.histogram;
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width := cinfo^.output_width;
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for row := 0 to pred(num_rows) do
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begin
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ptr := RGBptr(input_buf^[row]);
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for col := pred(width) downto 0 do
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begin
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{ get pixel value and index into the histogram }
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histp := @(histogram^[GETJSAMPLE(ptr^.r) shr C0_SHIFT]^
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[GETJSAMPLE(ptr^.g) shr C1_SHIFT]
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[GETJSAMPLE(ptr^.b) shr C2_SHIFT]);
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{ increment, check for overflow and undo increment if so. }
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Inc(histp^);
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if (histp^ <= 0) then
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Dec(histp^);
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Inc(ptr);
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end;
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end;
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end;
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{ Next we have the really interesting routines: selection of a colormap
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given the completed histogram.
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These routines work with a list of "boxes", each representing a rectangular
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subset of the input color space (to histogram precision). }
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type
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box = record
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{ The bounds of the box (inclusive); expressed as histogram indexes }
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c0min, c0max : int;
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c1min, c1max : int;
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c2min, c2max : int;
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{ The volume (actually 2-norm) of the box }
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volume : INT32;
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{ The number of nonzero histogram cells within this box }
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colorcount : long;
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end;
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type
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jBoxList = 0..(MaxInt div SizeOf(box))-1;
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box_field = array[jBoxlist] of box;
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boxlistptr = ^box_field;
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boxptr = ^box;
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{LOCAL}
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function find_biggest_color_pop (boxlist : boxlistptr; numboxes : int) : boxptr;
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{ Find the splittable box with the largest color population }
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{ Returns NIL if no splittable boxes remain }
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var
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boxp : boxptr ; {register}
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i : int; {register}
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maxc : long; {register}
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which : boxptr;
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begin
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which := NIL;
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boxp := @(boxlist^[0]);
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maxc := 0;
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for i := 0 to pred(numboxes) do
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begin
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if (boxp^.colorcount > maxc) and (boxp^.volume > 0) then
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begin
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which := boxp;
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maxc := boxp^.colorcount;
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end;
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Inc(boxp);
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end;
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find_biggest_color_pop := which;
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end;
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{LOCAL}
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function find_biggest_volume (boxlist : boxlistptr; numboxes : int) : boxptr;
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{ Find the splittable box with the largest (scaled) volume }
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{ Returns NULL if no splittable boxes remain }
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var
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{register} boxp : boxptr;
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{register} i : int;
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{register} maxv : INT32;
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which : boxptr;
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begin
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maxv := 0;
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which := NIL;
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boxp := @(boxlist^[0]);
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for i := 0 to pred(numboxes) do
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begin
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if (boxp^.volume > maxv) then
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begin
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which := boxp;
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maxv := boxp^.volume;
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end;
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Inc(boxp);
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end;
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find_biggest_volume := which;
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end;
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{LOCAL}
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procedure update_box (cinfo : j_decompress_ptr; var boxp : box);
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label
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have_c0min, have_c0max,
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have_c1min, have_c1max,
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have_c2min, have_c2max;
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{ Shrink the min/max bounds of a box to enclose only nonzero elements, }
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{ and recompute its volume and population }
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var
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cquantize : my_cquantize_ptr;
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histogram : hist3d;
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histp : histptr;
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c0,c1,c2 : int;
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c0min,c0max,c1min,c1max,c2min,c2max : int;
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dist0,dist1,dist2 : INT32;
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ccount : long;
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begin
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cquantize := my_cquantize_ptr(cinfo^.cquantize);
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histogram := cquantize^.histogram;
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c0min := boxp.c0min; c0max := boxp.c0max;
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c1min := boxp.c1min; c1max := boxp.c1max;
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c2min := boxp.c2min; c2max := boxp.c2max;
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if (c0max > c0min) then
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for c0 := c0min to c0max do
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for c1 := c1min to c1max do
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begin
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histp := @(histogram^[c0]^[c1][c2min]);
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for c2 := c2min to c2max do
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begin
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if (histp^ <> 0) then
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begin
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c0min := c0;
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boxp.c0min := c0min;
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goto have_c0min;
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end;
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Inc(histp);
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end;
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end;
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have_c0min:
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if (c0max > c0min) then
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|
for c0 := c0max downto c0min do
|
||
|
for c1 := c1min to c1max do
|
||
|
begin
|
||
|
histp := @(histogram^[c0]^[c1][c2min]);
|
||
|
for c2 := c2min to c2max do
|
||
|
begin
|
||
|
if ( histp^ <> 0) then
|
||
|
begin
|
||
|
c0max := c0;
|
||
|
boxp.c0max := c0;
|
||
|
goto have_c0max;
|
||
|
end;
|
||
|
Inc(histp);
|
||
|
end;
|
||
|
end;
|
||
|
have_c0max:
|
||
|
if (c1max > c1min) then
|
||
|
for c1 := c1min to c1max do
|
||
|
for c0 := c0min to c0max do
|
||
|
begin
|
||
|
histp := @(histogram^[c0]^[c1][c2min]);
|
||
|
for c2 := c2min to c2max do
|
||
|
begin
|
||
|
if (histp^ <> 0) then
|
||
|
begin
|
||
|
c1min := c1;
|
||
|
boxp.c1min := c1;
|
||
|
goto have_c1min;
|
||
|
end;
|
||
|
Inc(histp);
|
||
|
end;
|
||
|
end;
|
||
|
have_c1min:
|
||
|
if (c1max > c1min) then
|
||
|
for c1 := c1max downto c1min do
|
||
|
for c0 := c0min to c0max do
|
||
|
begin
|
||
|
histp := @(histogram^[c0]^[c1][c2min]);
|
||
|
for c2 := c2min to c2max do
|
||
|
begin
|
||
|
if (histp^ <> 0) then
|
||
|
begin
|
||
|
c1max := c1;
|
||
|
boxp.c1max := c1;
|
||
|
goto have_c1max;
|
||
|
end;
|
||
|
Inc(histp);
|
||
|
end;
|
||
|
end;
|
||
|
have_c1max:
|
||
|
if (c2max > c2min) then
|
||
|
for c2 := c2min to c2max do
|
||
|
for c0 := c0min to c0max do
|
||
|
begin
|
||
|
histp := @(histogram^[c0]^[c1min][c2]);
|
||
|
for c1 := c1min to c1max do
|
||
|
begin
|
||
|
if (histp^ <> 0) then
|
||
|
begin
|
||
|
c2min := c2;
|
||
|
boxp.c2min := c2min;
|
||
|
goto have_c2min;
|
||
|
end;
|
||
|
Inc(histp, HIST_C2_ELEMS);
|
||
|
end;
|
||
|
end;
|
||
|
have_c2min:
|
||
|
if (c2max > c2min) then
|
||
|
for c2 := c2max downto c2min do
|
||
|
for c0 := c0min to c0max do
|
||
|
begin
|
||
|
histp := @(histogram^[c0]^[c1min][c2]);
|
||
|
for c1 := c1min to c1max do
|
||
|
begin
|
||
|
if (histp^ <> 0) then
|
||
|
begin
|
||
|
c2max := c2;
|
||
|
boxp.c2max := c2max;
|
||
|
goto have_c2max;
|
||
|
end;
|
||
|
Inc(histp, HIST_C2_ELEMS);
|
||
|
end;
|
||
|
end;
|
||
|
have_c2max:
|
||
|
|
||
|
{ Update box volume.
|
||
|
We use 2-norm rather than real volume here; this biases the method
|
||
|
against making long narrow boxes, and it has the side benefit that
|
||
|
a box is splittable iff norm > 0.
|
||
|
Since the differences are expressed in histogram-cell units,
|
||
|
we have to shift back to JSAMPLE units to get consistent distances;
|
||
|
after which, we scale according to the selected distance scale factors.}
|
||
|
|
||
|
dist0 := ((c0max - c0min) shl C0_SHIFT) * C0_SCALE;
|
||
|
dist1 := ((c1max - c1min) shl C1_SHIFT) * C1_SCALE;
|
||
|
dist2 := ((c2max - c2min) shl C2_SHIFT) * C2_SCALE;
|
||
|
boxp.volume := dist0*dist0 + dist1*dist1 + dist2*dist2;
|
||
|
|
||
|
{ Now scan remaining volume of box and compute population }
|
||
|
ccount := 0;
|
||
|
for c0 := c0min to c0max do
|
||
|
for c1 := c1min to c1max do
|
||
|
begin
|
||
|
histp := @(histogram^[c0]^[c1][c2min]);
|
||
|
for c2 := c2min to c2max do
|
||
|
begin
|
||
|
if (histp^ <> 0) then
|
||
|
Inc(ccount);
|
||
|
Inc(histp);
|
||
|
end;
|
||
|
end;
|
||
|
boxp.colorcount := ccount;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{LOCAL}
|
||
|
function median_cut (cinfo : j_decompress_ptr; boxlist : boxlistptr;
|
||
|
numboxes : int; desired_colors : int) : int;
|
||
|
{ Repeatedly select and split the largest box until we have enough boxes }
|
||
|
var
|
||
|
n,lb : int;
|
||
|
c0,c1,c2,cmax : int;
|
||
|
{register} b1,b2 : boxptr;
|
||
|
begin
|
||
|
while (numboxes < desired_colors) do
|
||
|
begin
|
||
|
{ Select box to split.
|
||
|
Current algorithm: by population for first half, then by volume. }
|
||
|
|
||
|
if (numboxes*2 <= desired_colors) then
|
||
|
b1 := find_biggest_color_pop(boxlist, numboxes)
|
||
|
else
|
||
|
b1 := find_biggest_volume(boxlist, numboxes);
|
||
|
|
||
|
if (b1 = NIL) then { no splittable boxes left! }
|
||
|
break;
|
||
|
b2 := @(boxlist^[numboxes]); { where new box will go }
|
||
|
{ Copy the color bounds to the new box. }
|
||
|
b2^.c0max := b1^.c0max; b2^.c1max := b1^.c1max; b2^.c2max := b1^.c2max;
|
||
|
b2^.c0min := b1^.c0min; b2^.c1min := b1^.c1min; b2^.c2min := b1^.c2min;
|
||
|
{ Choose which axis to split the box on.
|
||
|
Current algorithm: longest scaled axis.
|
||
|
See notes in update_box about scaling distances. }
|
||
|
|
||
|
c0 := ((b1^.c0max - b1^.c0min) shl C0_SHIFT) * C0_SCALE;
|
||
|
c1 := ((b1^.c1max - b1^.c1min) shl C1_SHIFT) * C1_SCALE;
|
||
|
c2 := ((b1^.c2max - b1^.c2min) shl C2_SHIFT) * C2_SCALE;
|
||
|
{ We want to break any ties in favor of green, then red, blue last.
|
||
|
This code does the right thing for R,G,B or B,G,R color orders only. }
|
||
|
|
||
|
{$ifdef RGB_RED_IS_0}
|
||
|
cmax := c1; n := 1;
|
||
|
if (c0 > cmax) then
|
||
|
begin
|
||
|
cmax := c0;
|
||
|
n := 0;
|
||
|
end;
|
||
|
if (c2 > cmax) then
|
||
|
n := 2;
|
||
|
{$else}
|
||
|
cmax := c1;
|
||
|
n := 1;
|
||
|
if (c2 > cmax) then
|
||
|
begin
|
||
|
cmax := c2;
|
||
|
n := 2;
|
||
|
end;
|
||
|
if (c0 > cmax) then
|
||
|
n := 0;
|
||
|
{$endif}
|
||
|
{ Choose split point along selected axis, and update box bounds.
|
||
|
Current algorithm: split at halfway point.
|
||
|
(Since the box has been shrunk to minimum volume,
|
||
|
any split will produce two nonempty subboxes.)
|
||
|
Note that lb value is max for lower box, so must be < old max. }
|
||
|
|
||
|
case n of
|
||
|
0:begin
|
||
|
lb := (b1^.c0max + b1^.c0min) div 2;
|
||
|
b1^.c0max := lb;
|
||
|
b2^.c0min := lb+1;
|
||
|
end;
|
||
|
1:begin
|
||
|
lb := (b1^.c1max + b1^.c1min) div 2;
|
||
|
b1^.c1max := lb;
|
||
|
b2^.c1min := lb+1;
|
||
|
end;
|
||
|
2:begin
|
||
|
lb := (b1^.c2max + b1^.c2min) div 2;
|
||
|
b1^.c2max := lb;
|
||
|
b2^.c2min := lb+1;
|
||
|
end;
|
||
|
end;
|
||
|
{ Update stats for boxes }
|
||
|
update_box(cinfo, b1^);
|
||
|
update_box(cinfo, b2^);
|
||
|
Inc(numboxes);
|
||
|
end;
|
||
|
median_cut := numboxes;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{LOCAL}
|
||
|
procedure compute_color (cinfo : j_decompress_ptr;
|
||
|
const boxp : box; icolor : int);
|
||
|
{ Compute representative color for a box, put it in colormap[icolor] }
|
||
|
var
|
||
|
{ Current algorithm: mean weighted by pixels (not colors) }
|
||
|
{ Note it is important to get the rounding correct! }
|
||
|
cquantize : my_cquantize_ptr;
|
||
|
histogram : hist3d;
|
||
|
histp : histptr;
|
||
|
c0,c1,c2 : int;
|
||
|
c0min,c0max,c1min,c1max,c2min,c2max : int;
|
||
|
count : long;
|
||
|
total : long;
|
||
|
c0total : long;
|
||
|
c1total : long;
|
||
|
c2total : long;
|
||
|
begin
|
||
|
cquantize := my_cquantize_ptr(cinfo^.cquantize);
|
||
|
histogram := cquantize^.histogram;
|
||
|
total := 0;
|
||
|
c0total := 0;
|
||
|
c1total := 0;
|
||
|
c2total := 0;
|
||
|
|
||
|
c0min := boxp.c0min; c0max := boxp.c0max;
|
||
|
c1min := boxp.c1min; c1max := boxp.c1max;
|
||
|
c2min := boxp.c2min; c2max := boxp.c2max;
|
||
|
|
||
|
for c0 := c0min to c0max do
|
||
|
for c1 := c1min to c1max do
|
||
|
begin
|
||
|
histp := @(histogram^[c0]^[c1][c2min]);
|
||
|
for c2 := c2min to c2max do
|
||
|
begin
|
||
|
count := histp^;
|
||
|
Inc(histp);
|
||
|
if (count <> 0) then
|
||
|
begin
|
||
|
Inc(total, count);
|
||
|
Inc(c0total, ((c0 shl C0_SHIFT) + ((1 shl C0_SHIFT) shr 1)) * count);
|
||
|
Inc(c1total, ((c1 shl C1_SHIFT) + ((1 shl C1_SHIFT) shr 1)) * count);
|
||
|
Inc(c2total, ((c2 shl C2_SHIFT) + ((1 shl C2_SHIFT) shr 1)) * count);
|
||
|
end;
|
||
|
end;
|
||
|
end;
|
||
|
|
||
|
cinfo^.colormap^[0]^[icolor] := JSAMPLE ((c0total + (total shr 1)) div total);
|
||
|
cinfo^.colormap^[1]^[icolor] := JSAMPLE ((c1total + (total shr 1)) div total);
|
||
|
cinfo^.colormap^[2]^[icolor] := JSAMPLE ((c2total + (total shr 1)) div total);
|
||
|
end;
|
||
|
|
||
|
|
||
|
{LOCAL}
|
||
|
procedure select_colors (cinfo : j_decompress_ptr; desired_colors : int);
|
||
|
{ Master routine for color selection }
|
||
|
var
|
||
|
boxlist : boxlistptr;
|
||
|
numboxes : int;
|
||
|
i : int;
|
||
|
begin
|
||
|
{ Allocate workspace for box list }
|
||
|
boxlist := boxlistptr(cinfo^.mem^.alloc_small(
|
||
|
j_common_ptr(cinfo), JPOOL_IMAGE, desired_colors * SIZEOF(box)));
|
||
|
{ Initialize one box containing whole space }
|
||
|
numboxes := 1;
|
||
|
boxlist^[0].c0min := 0;
|
||
|
boxlist^[0].c0max := MAXJSAMPLE shr C0_SHIFT;
|
||
|
boxlist^[0].c1min := 0;
|
||
|
boxlist^[0].c1max := MAXJSAMPLE shr C1_SHIFT;
|
||
|
boxlist^[0].c2min := 0;
|
||
|
boxlist^[0].c2max := MAXJSAMPLE shr C2_SHIFT;
|
||
|
{ Shrink it to actually-used volume and set its statistics }
|
||
|
update_box(cinfo, boxlist^[0]);
|
||
|
{ Perform median-cut to produce final box list }
|
||
|
numboxes := median_cut(cinfo, boxlist, numboxes, desired_colors);
|
||
|
{ Compute the representative color for each box, fill colormap }
|
||
|
for i := 0 to pred(numboxes) do
|
||
|
compute_color(cinfo, boxlist^[i], i);
|
||
|
cinfo^.actual_number_of_colors := numboxes;
|
||
|
{$IFDEF DEBUG}
|
||
|
TRACEMS1(j_common_ptr(cinfo), 1, JTRC_QUANT_SELECTED, numboxes);
|
||
|
{$ENDIF}
|
||
|
end;
|
||
|
|
||
|
|
||
|
{ These routines are concerned with the time-critical task of mapping input
|
||
|
colors to the nearest color in the selected colormap.
|
||
|
|
||
|
We re-use the histogram space as an "inverse color map", essentially a
|
||
|
cache for the results of nearest-color searches. All colors within a
|
||
|
histogram cell will be mapped to the same colormap entry, namely the one
|
||
|
closest to the cell's center. This may not be quite the closest entry to
|
||
|
the actual input color, but it's almost as good. A zero in the cache
|
||
|
indicates we haven't found the nearest color for that cell yet; the array
|
||
|
is cleared to zeroes before starting the mapping pass. When we find the
|
||
|
nearest color for a cell, its colormap index plus one is recorded in the
|
||
|
cache for future use. The pass2 scanning routines call fill_inverse_cmap
|
||
|
when they need to use an unfilled entry in the cache.
|
||
|
|
||
|
Our method of efficiently finding nearest colors is based on the "locally
|
||
|
sorted search" idea described by Heckbert and on the incremental distance
|
||
|
calculation described by Spencer W. Thomas in chapter III.1 of Graphics
|
||
|
Gems II (James Arvo, ed. Academic Press, 1991). Thomas points out that
|
||
|
the distances from a given colormap entry to each cell of the histogram can
|
||
|
be computed quickly using an incremental method: the differences between
|
||
|
distances to adjacent cells themselves differ by a constant. This allows a
|
||
|
fairly fast implementation of the "brute force" approach of computing the
|
||
|
distance from every colormap entry to every histogram cell. Unfortunately,
|
||
|
it needs a work array to hold the best-distance-so-far for each histogram
|
||
|
cell (because the inner loop has to be over cells, not colormap entries).
|
||
|
The work array elements have to be INT32s, so the work array would need
|
||
|
256Kb at our recommended precision. This is not feasible in DOS machines.
|
||
|
|
||
|
To get around these problems, we apply Thomas' method to compute the
|
||
|
nearest colors for only the cells within a small subbox of the histogram.
|
||
|
The work array need be only as big as the subbox, so the memory usage
|
||
|
problem is solved. Furthermore, we need not fill subboxes that are never
|
||
|
referenced in pass2; many images use only part of the color gamut, so a
|
||
|
fair amount of work is saved. An additional advantage of this
|
||
|
approach is that we can apply Heckbert's locality criterion to quickly
|
||
|
eliminate colormap entries that are far away from the subbox; typically
|
||
|
three-fourths of the colormap entries are rejected by Heckbert's criterion,
|
||
|
and we need not compute their distances to individual cells in the subbox.
|
||
|
The speed of this approach is heavily influenced by the subbox size: too
|
||
|
small means too much overhead, too big loses because Heckbert's criterion
|
||
|
can't eliminate as many colormap entries. Empirically the best subbox
|
||
|
size seems to be about 1/512th of the histogram (1/8th in each direction).
|
||
|
|
||
|
Thomas' article also describes a refined method which is asymptotically
|
||
|
faster than the brute-force method, but it is also far more complex and
|
||
|
cannot efficiently be applied to small subboxes. It is therefore not
|
||
|
useful for programs intended to be portable to DOS machines. On machines
|
||
|
with plenty of memory, filling the whole histogram in one shot with Thomas'
|
||
|
refined method might be faster than the present code --- but then again,
|
||
|
it might not be any faster, and it's certainly more complicated. }
|
||
|
|
||
|
|
||
|
|
||
|
{ log2(histogram cells in update box) for each axis; this can be adjusted }
|
||
|
const
|
||
|
BOX_C0_LOG = (HIST_C0_BITS-3);
|
||
|
BOX_C1_LOG = (HIST_C1_BITS-3);
|
||
|
BOX_C2_LOG = (HIST_C2_BITS-3);
|
||
|
|
||
|
BOX_C0_ELEMS = (1 shl BOX_C0_LOG); { # of hist cells in update box }
|
||
|
BOX_C1_ELEMS = (1 shl BOX_C1_LOG);
|
||
|
BOX_C2_ELEMS = (1 shl BOX_C2_LOG);
|
||
|
|
||
|
BOX_C0_SHIFT = (C0_SHIFT + BOX_C0_LOG);
|
||
|
BOX_C1_SHIFT = (C1_SHIFT + BOX_C1_LOG);
|
||
|
BOX_C2_SHIFT = (C2_SHIFT + BOX_C2_LOG);
|
||
|
|
||
|
|
||
|
{ The next three routines implement inverse colormap filling. They could
|
||
|
all be folded into one big routine, but splitting them up this way saves
|
||
|
some stack space (the mindist[] and bestdist[] arrays need not coexist)
|
||
|
and may allow some compilers to produce better code by registerizing more
|
||
|
inner-loop variables. }
|
||
|
|
||
|
{LOCAL}
|
||
|
function find_nearby_colors (cinfo : j_decompress_ptr;
|
||
|
minc0 : int; minc1 : int; minc2 : int;
|
||
|
var colorlist : array of JSAMPLE) : int;
|
||
|
{ Locate the colormap entries close enough to an update box to be candidates
|
||
|
for the nearest entry to some cell(s) in the update box. The update box
|
||
|
is specified by the center coordinates of its first cell. The number of
|
||
|
candidate colormap entries is returned, and their colormap indexes are
|
||
|
placed in colorlist[].
|
||
|
This routine uses Heckbert's "locally sorted search" criterion to select
|
||
|
the colors that need further consideration. }
|
||
|
|
||
|
var
|
||
|
numcolors : int;
|
||
|
maxc0, maxc1, maxc2 : int;
|
||
|
centerc0, centerc1, centerc2 : int;
|
||
|
i, x, ncolors : int;
|
||
|
minmaxdist, min_dist, max_dist, tdist : INT32;
|
||
|
mindist : array[0..MAXNUMCOLORS-1] of INT32;
|
||
|
{ min distance to colormap entry i }
|
||
|
begin
|
||
|
numcolors := cinfo^.actual_number_of_colors;
|
||
|
|
||
|
{ Compute true coordinates of update box's upper corner and center.
|
||
|
Actually we compute the coordinates of the center of the upper-corner
|
||
|
histogram cell, which are the upper bounds of the volume we care about.
|
||
|
Note that since ">>" rounds down, the "center" values may be closer to
|
||
|
min than to max; hence comparisons to them must be "<=", not "<". }
|
||
|
|
||
|
maxc0 := minc0 + ((1 shl BOX_C0_SHIFT) - (1 shl C0_SHIFT));
|
||
|
centerc0 := (minc0 + maxc0) shr 1;
|
||
|
maxc1 := minc1 + ((1 shl BOX_C1_SHIFT) - (1 shl C1_SHIFT));
|
||
|
centerc1 := (minc1 + maxc1) shr 1;
|
||
|
maxc2 := minc2 + ((1 shl BOX_C2_SHIFT) - (1 shl C2_SHIFT));
|
||
|
centerc2 := (minc2 + maxc2) shr 1;
|
||
|
|
||
|
{ For each color in colormap, find:
|
||
|
1. its minimum squared-distance to any point in the update box
|
||
|
(zero if color is within update box);
|
||
|
2. its maximum squared-distance to any point in the update box.
|
||
|
Both of these can be found by considering only the corners of the box.
|
||
|
We save the minimum distance for each color in mindist[];
|
||
|
only the smallest maximum distance is of interest. }
|
||
|
|
||
|
minmaxdist := long($7FFFFFFF);
|
||
|
|
||
|
for i := 0 to pred(numcolors) do
|
||
|
begin
|
||
|
{ We compute the squared-c0-distance term, then add in the other two. }
|
||
|
x := GETJSAMPLE(cinfo^.colormap^[0]^[i]);
|
||
|
if (x < minc0) then
|
||
|
begin
|
||
|
tdist := (x - minc0) * C0_SCALE;
|
||
|
min_dist := tdist*tdist;
|
||
|
tdist := (x - maxc0) * C0_SCALE;
|
||
|
max_dist := tdist*tdist;
|
||
|
end
|
||
|
else
|
||
|
if (x > maxc0) then
|
||
|
begin
|
||
|
tdist := (x - maxc0) * C0_SCALE;
|
||
|
min_dist := tdist*tdist;
|
||
|
tdist := (x - minc0) * C0_SCALE;
|
||
|
max_dist := tdist*tdist;
|
||
|
end
|
||
|
else
|
||
|
begin
|
||
|
{ within cell range so no contribution to min_dist }
|
||
|
min_dist := 0;
|
||
|
if (x <= centerc0) then
|
||
|
begin
|
||
|
tdist := (x - maxc0) * C0_SCALE;
|
||
|
max_dist := tdist*tdist;
|
||
|
end
|
||
|
else
|
||
|
begin
|
||
|
tdist := (x - minc0) * C0_SCALE;
|
||
|
max_dist := tdist*tdist;
|
||
|
end;
|
||
|
end;
|
||
|
|
||
|
x := GETJSAMPLE(cinfo^.colormap^[1]^[i]);
|
||
|
if (x < minc1) then
|
||
|
begin
|
||
|
tdist := (x - minc1) * C1_SCALE;
|
||
|
Inc(min_dist, tdist*tdist);
|
||
|
tdist := (x - maxc1) * C1_SCALE;
|
||
|
Inc(max_dist, tdist*tdist);
|
||
|
end
|
||
|
else
|
||
|
if (x > maxc1) then
|
||
|
begin
|
||
|
tdist := (x - maxc1) * C1_SCALE;
|
||
|
Inc(min_dist, tdist*tdist);
|
||
|
tdist := (x - minc1) * C1_SCALE;
|
||
|
Inc(max_dist, tdist*tdist);
|
||
|
end
|
||
|
else
|
||
|
begin
|
||
|
{ within cell range so no contribution to min_dist }
|
||
|
if (x <= centerc1) then
|
||
|
begin
|
||
|
tdist := (x - maxc1) * C1_SCALE;
|
||
|
Inc(max_dist, tdist*tdist);
|
||
|
end
|
||
|
else
|
||
|
begin
|
||
|
tdist := (x - minc1) * C1_SCALE;
|
||
|
Inc(max_dist, tdist*tdist);
|
||
|
end
|
||
|
end;
|
||
|
|
||
|
x := GETJSAMPLE(cinfo^.colormap^[2]^[i]);
|
||
|
if (x < minc2) then
|
||
|
begin
|
||
|
tdist := (x - minc2) * C2_SCALE;
|
||
|
Inc(min_dist, tdist*tdist);
|
||
|
tdist := (x - maxc2) * C2_SCALE;
|
||
|
Inc(max_dist, tdist*tdist);
|
||
|
end
|
||
|
else
|
||
|
if (x > maxc2) then
|
||
|
begin
|
||
|
tdist := (x - maxc2) * C2_SCALE;
|
||
|
Inc(min_dist, tdist*tdist);
|
||
|
tdist := (x - minc2) * C2_SCALE;
|
||
|
Inc(max_dist, tdist*tdist);
|
||
|
end
|
||
|
else
|
||
|
begin
|
||
|
{ within cell range so no contribution to min_dist }
|
||
|
if (x <= centerc2) then
|
||
|
begin
|
||
|
tdist := (x - maxc2) * C2_SCALE;
|
||
|
Inc(max_dist, tdist*tdist);
|
||
|
end
|
||
|
else
|
||
|
begin
|
||
|
tdist := (x - minc2) * C2_SCALE;
|
||
|
Inc(max_dist, tdist*tdist);
|
||
|
end;
|
||
|
end;
|
||
|
|
||
|
mindist[i] := min_dist; { save away the results }
|
||
|
if (max_dist < minmaxdist) then
|
||
|
minmaxdist := max_dist;
|
||
|
end;
|
||
|
|
||
|
{ Now we know that no cell in the update box is more than minmaxdist
|
||
|
away from some colormap entry. Therefore, only colors that are
|
||
|
within minmaxdist of some part of the box need be considered. }
|
||
|
|
||
|
ncolors := 0;
|
||
|
for i := 0 to pred(numcolors) do
|
||
|
begin
|
||
|
if (mindist[i] <= minmaxdist) then
|
||
|
begin
|
||
|
colorlist[ncolors] := JSAMPLE(i);
|
||
|
Inc(ncolors);
|
||
|
end;
|
||
|
end;
|
||
|
find_nearby_colors := ncolors;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{LOCAL}
|
||
|
procedure find_best_colors (cinfo : j_decompress_ptr;
|
||
|
minc0 : int; minc1 : int; minc2 : int;
|
||
|
numcolors : int;
|
||
|
var colorlist : array of JSAMPLE;
|
||
|
var bestcolor : array of JSAMPLE);
|
||
|
{ Find the closest colormap entry for each cell in the update box,
|
||
|
given the list of candidate colors prepared by find_nearby_colors.
|
||
|
Return the indexes of the closest entries in the bestcolor[] array.
|
||
|
This routine uses Thomas' incremental distance calculation method to
|
||
|
find the distance from a colormap entry to successive cells in the box. }
|
||
|
const
|
||
|
{ Nominal steps between cell centers ("x" in Thomas article) }
|
||
|
STEP_C0 = ((1 shl C0_SHIFT) * C0_SCALE);
|
||
|
STEP_C1 = ((1 shl C1_SHIFT) * C1_SCALE);
|
||
|
STEP_C2 = ((1 shl C2_SHIFT) * C2_SCALE);
|
||
|
var
|
||
|
ic0, ic1, ic2 : int;
|
||
|
i, icolor : int;
|
||
|
{register} bptr : INT32PTR; { pointer into bestdist[] array }
|
||
|
cptr : JSAMPLE_PTR; { pointer into bestcolor[] array }
|
||
|
dist0, dist1 : INT32; { initial distance values }
|
||
|
{register} dist2 : INT32; { current distance in inner loop }
|
||
|
xx0, xx1 : INT32; { distance increments }
|
||
|
{register} xx2 : INT32;
|
||
|
inc0, inc1, inc2 : INT32; { initial values for increments }
|
||
|
{ This array holds the distance to the nearest-so-far color for each cell }
|
||
|
bestdist : array[0..BOX_C0_ELEMS * BOX_C1_ELEMS * BOX_C2_ELEMS-1] of INT32;
|
||
|
begin
|
||
|
{ Initialize best-distance for each cell of the update box }
|
||
|
for i := BOX_C0_ELEMS*BOX_C1_ELEMS*BOX_C2_ELEMS-1 downto 0 do
|
||
|
bestdist[i] := $7FFFFFFF;
|
||
|
|
||
|
{ For each color selected by find_nearby_colors,
|
||
|
compute its distance to the center of each cell in the box.
|
||
|
If that's less than best-so-far, update best distance and color number. }
|
||
|
|
||
|
|
||
|
|
||
|
for i := 0 to pred(numcolors) do
|
||
|
begin
|
||
|
icolor := GETJSAMPLE(colorlist[i]);
|
||
|
{ Compute (square of) distance from minc0/c1/c2 to this color }
|
||
|
inc0 := (minc0 - GETJSAMPLE(cinfo^.colormap^[0]^[icolor])) * C0_SCALE;
|
||
|
dist0 := inc0*inc0;
|
||
|
inc1 := (minc1 - GETJSAMPLE(cinfo^.colormap^[1]^[icolor])) * C1_SCALE;
|
||
|
Inc(dist0, inc1*inc1);
|
||
|
inc2 := (minc2 - GETJSAMPLE(cinfo^.colormap^[2]^[icolor])) * C2_SCALE;
|
||
|
Inc(dist0, inc2*inc2);
|
||
|
{ Form the initial difference increments }
|
||
|
inc0 := inc0 * (2 * STEP_C0) + STEP_C0 * STEP_C0;
|
||
|
inc1 := inc1 * (2 * STEP_C1) + STEP_C1 * STEP_C1;
|
||
|
inc2 := inc2 * (2 * STEP_C2) + STEP_C2 * STEP_C2;
|
||
|
{ Now loop over all cells in box, updating distance per Thomas method }
|
||
|
bptr := @bestdist[0];
|
||
|
cptr := @bestcolor[0];
|
||
|
xx0 := inc0;
|
||
|
for ic0 := BOX_C0_ELEMS-1 downto 0 do
|
||
|
begin
|
||
|
dist1 := dist0;
|
||
|
xx1 := inc1;
|
||
|
for ic1 := BOX_C1_ELEMS-1 downto 0 do
|
||
|
begin
|
||
|
dist2 := dist1;
|
||
|
xx2 := inc2;
|
||
|
for ic2 := BOX_C2_ELEMS-1 downto 0 do
|
||
|
begin
|
||
|
if (dist2 < bptr^) then
|
||
|
begin
|
||
|
bptr^ := dist2;
|
||
|
cptr^ := JSAMPLE (icolor);
|
||
|
end;
|
||
|
Inc(dist2, xx2);
|
||
|
Inc(xx2, 2 * STEP_C2 * STEP_C2);
|
||
|
Inc(bptr);
|
||
|
Inc(cptr);
|
||
|
end;
|
||
|
Inc(dist1, xx1);
|
||
|
Inc(xx1, 2 * STEP_C1 * STEP_C1);
|
||
|
end;
|
||
|
Inc(dist0, xx0);
|
||
|
Inc(xx0, 2 * STEP_C0 * STEP_C0);
|
||
|
end;
|
||
|
end;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{LOCAL}
|
||
|
procedure fill_inverse_cmap (cinfo : j_decompress_ptr;
|
||
|
c0 : int; c1 : int; c2 : int);
|
||
|
{ Fill the inverse-colormap entries in the update box that contains }
|
||
|
{ histogram cell c0/c1/c2. (Only that one cell MUST be filled, but }
|
||
|
{ we can fill as many others as we wish.) }
|
||
|
var
|
||
|
cquantize : my_cquantize_ptr;
|
||
|
histogram : hist3d;
|
||
|
minc0, minc1, minc2 : int; { lower left corner of update box }
|
||
|
ic0, ic1, ic2 : int;
|
||
|
{register} cptr : JSAMPLE_PTR; { pointer into bestcolor[] array }
|
||
|
{register} cachep : histptr; { pointer into main cache array }
|
||
|
{ This array lists the candidate colormap indexes. }
|
||
|
colorlist : array[0..MAXNUMCOLORS-1] of JSAMPLE;
|
||
|
numcolors : int; { number of candidate colors }
|
||
|
{ This array holds the actually closest colormap index for each cell. }
|
||
|
bestcolor : array[0..BOX_C0_ELEMS * BOX_C1_ELEMS * BOX_C2_ELEMS-1] of JSAMPLE;
|
||
|
begin
|
||
|
cquantize := my_cquantize_ptr (cinfo^.cquantize);
|
||
|
histogram := cquantize^.histogram;
|
||
|
|
||
|
{ Convert cell coordinates to update box ID }
|
||
|
c0 := c0 shr BOX_C0_LOG;
|
||
|
c1 := c1 shr BOX_C1_LOG;
|
||
|
c2 := c2 shr BOX_C2_LOG;
|
||
|
|
||
|
{ Compute true coordinates of update box's origin corner.
|
||
|
Actually we compute the coordinates of the center of the corner
|
||
|
histogram cell, which are the lower bounds of the volume we care about.}
|
||
|
|
||
|
minc0 := (c0 shl BOX_C0_SHIFT) + ((1 shl C0_SHIFT) shr 1);
|
||
|
minc1 := (c1 shl BOX_C1_SHIFT) + ((1 shl C1_SHIFT) shr 1);
|
||
|
minc2 := (c2 shl BOX_C2_SHIFT) + ((1 shl C2_SHIFT) shr 1);
|
||
|
|
||
|
{ Determine which colormap entries are close enough to be candidates
|
||
|
for the nearest entry to some cell in the update box. }
|
||
|
|
||
|
numcolors := find_nearby_colors(cinfo, minc0, minc1, minc2, colorlist);
|
||
|
|
||
|
{ Determine the actually nearest colors. }
|
||
|
find_best_colors(cinfo, minc0, minc1, minc2, numcolors, colorlist,
|
||
|
bestcolor);
|
||
|
|
||
|
{ Save the best color numbers (plus 1) in the main cache array }
|
||
|
c0 := c0 shl BOX_C0_LOG; { convert ID back to base cell indexes }
|
||
|
c1 := c1 shl BOX_C1_LOG;
|
||
|
c2 := c2 shl BOX_C2_LOG;
|
||
|
cptr := @(bestcolor[0]);
|
||
|
for ic0 := 0 to pred(BOX_C0_ELEMS) do
|
||
|
for ic1 := 0 to pred(BOX_C1_ELEMS) do
|
||
|
begin
|
||
|
cachep := @(histogram^[c0+ic0]^[c1+ic1][c2]);
|
||
|
for ic2 := 0 to pred(BOX_C2_ELEMS) do
|
||
|
begin
|
||
|
cachep^ := histcell (GETJSAMPLE(cptr^) + 1);
|
||
|
Inc(cachep);
|
||
|
Inc(cptr);
|
||
|
end;
|
||
|
end;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{ Map some rows of pixels to the output colormapped representation. }
|
||
|
|
||
|
{METHODDEF}
|
||
|
procedure pass2_no_dither (cinfo : j_decompress_ptr;
|
||
|
input_buf : JSAMPARRAY;
|
||
|
output_buf : JSAMPARRAY;
|
||
|
num_rows : int);
|
||
|
{ This version performs no dithering }
|
||
|
var
|
||
|
cquantize : my_cquantize_ptr;
|
||
|
histogram : hist3d;
|
||
|
{register} inptr : RGBptr;
|
||
|
outptr : JSAMPLE_PTR;
|
||
|
{register} cachep : histptr;
|
||
|
{register} c0, c1, c2 : int;
|
||
|
row : int;
|
||
|
col : JDIMENSION;
|
||
|
width : JDIMENSION;
|
||
|
begin
|
||
|
cquantize := my_cquantize_ptr (cinfo^.cquantize);
|
||
|
histogram := cquantize^.histogram;
|
||
|
width := cinfo^.output_width;
|
||
|
|
||
|
for row := 0 to pred(num_rows) do
|
||
|
begin
|
||
|
inptr := RGBptr(input_buf^[row]);
|
||
|
outptr := JSAMPLE_PTR(output_buf^[row]);
|
||
|
for col := pred(width) downto 0 do
|
||
|
begin
|
||
|
{ get pixel value and index into the cache }
|
||
|
c0 := GETJSAMPLE(inptr^.r) shr C0_SHIFT;
|
||
|
c1 := GETJSAMPLE(inptr^.g) shr C1_SHIFT;
|
||
|
c2 := GETJSAMPLE(inptr^.b) shr C2_SHIFT;
|
||
|
Inc(inptr);
|
||
|
cachep := @(histogram^[c0]^[c1][c2]);
|
||
|
{ If we have not seen this color before, find nearest colormap entry }
|
||
|
{ and update the cache }
|
||
|
if (cachep^ = 0) then
|
||
|
fill_inverse_cmap(cinfo, c0,c1,c2);
|
||
|
{ Now emit the colormap index for this cell }
|
||
|
outptr^ := JSAMPLE (cachep^ - 1);
|
||
|
Inc(outptr);
|
||
|
end;
|
||
|
end;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{METHODDEF}
|
||
|
procedure pass2_fs_dither (cinfo : j_decompress_ptr;
|
||
|
input_buf : JSAMPARRAY;
|
||
|
output_buf : JSAMPARRAY;
|
||
|
num_rows : int);
|
||
|
{ This version performs Floyd-Steinberg dithering }
|
||
|
var
|
||
|
cquantize : my_cquantize_ptr;
|
||
|
histogram : hist3d;
|
||
|
{register} cur : LOCRGB_FSERROR; { current error or pixel value }
|
||
|
belowerr : LOCRGB_FSERROR; { error for pixel below cur }
|
||
|
bpreverr : LOCRGB_FSERROR; { error for below/prev col }
|
||
|
prev_errorptr,
|
||
|
{register} errorptr : RGB_FSERROR_PTR; { => fserrors[] at column before current }
|
||
|
inptr : RGBptr; { => current input pixel }
|
||
|
outptr : JSAMPLE_PTR; { => current output pixel }
|
||
|
cachep : histptr;
|
||
|
dir : int; { +1 or -1 depending on direction }
|
||
|
row : int;
|
||
|
col : JDIMENSION;
|
||
|
width : JDIMENSION;
|
||
|
range_limit : range_limit_table_ptr;
|
||
|
error_limit : error_limit_ptr;
|
||
|
colormap0 : JSAMPROW;
|
||
|
colormap1 : JSAMPROW;
|
||
|
colormap2 : JSAMPROW;
|
||
|
{register} pixcode : int;
|
||
|
{register} bnexterr, delta : LOCFSERROR;
|
||
|
begin
|
||
|
cquantize := my_cquantize_ptr (cinfo^.cquantize);
|
||
|
histogram := cquantize^.histogram;
|
||
|
width := cinfo^.output_width;
|
||
|
range_limit := cinfo^.sample_range_limit;
|
||
|
error_limit := cquantize^.error_limiter;
|
||
|
colormap0 := cinfo^.colormap^[0];
|
||
|
colormap1 := cinfo^.colormap^[1];
|
||
|
colormap2 := cinfo^.colormap^[2];
|
||
|
|
||
|
for row := 0 to pred(num_rows) do
|
||
|
begin
|
||
|
inptr := RGBptr(input_buf^[row]);
|
||
|
outptr := JSAMPLE_PTR(output_buf^[row]);
|
||
|
errorptr := RGB_FSERROR_PTR(cquantize^.fserrors); { => entry before first real column }
|
||
|
if (cquantize^.on_odd_row) then
|
||
|
begin
|
||
|
{ work right to left in this row }
|
||
|
Inc(inptr, (width-1)); { so point to rightmost pixel }
|
||
|
Inc(outptr, width-1);
|
||
|
dir := -1;
|
||
|
Inc(errorptr, (width+1)); { => entry after last column }
|
||
|
cquantize^.on_odd_row := FALSE; { flip for next time }
|
||
|
end
|
||
|
else
|
||
|
begin
|
||
|
{ work left to right in this row }
|
||
|
dir := 1;
|
||
|
cquantize^.on_odd_row := TRUE; { flip for next time }
|
||
|
end;
|
||
|
|
||
|
{ Preset error values: no error propagated to first pixel from left }
|
||
|
cur.r := 0;
|
||
|
cur.g := 0;
|
||
|
cur.b := 0;
|
||
|
{ and no error propagated to row below yet }
|
||
|
belowerr.r := 0;
|
||
|
belowerr.g := 0;
|
||
|
belowerr.b := 0;
|
||
|
bpreverr.r := 0;
|
||
|
bpreverr.g := 0;
|
||
|
bpreverr.b := 0;
|
||
|
|
||
|
for col := pred(width) downto 0 do
|
||
|
begin
|
||
|
prev_errorptr := errorptr;
|
||
|
Inc(errorptr, dir); { advance errorptr to current column }
|
||
|
|
||
|
{ curN holds the error propagated from the previous pixel on the
|
||
|
current line. Add the error propagated from the previous line
|
||
|
to form the complete error correction term for this pixel, and
|
||
|
round the error term (which is expressed * 16) to an integer.
|
||
|
RIGHT_SHIFT rounds towards minus infinity, so adding 8 is correct
|
||
|
for either sign of the error value.
|
||
|
Note: prev_errorptr points to *previous* column's array entry. }
|
||
|
|
||
|
{ Nomssi Note: Borland Pascal SHR is unsigned }
|
||
|
cur.r := (cur.r + errorptr^.r + 8) div 16;
|
||
|
cur.g := (cur.g + errorptr^.g + 8) div 16;
|
||
|
cur.b := (cur.b + errorptr^.b + 8) div 16;
|
||
|
{ Limit the error using transfer function set by init_error_limit.
|
||
|
See comments with init_error_limit for rationale. }
|
||
|
|
||
|
cur.r := error_limit^[cur.r];
|
||
|
cur.g := error_limit^[cur.g];
|
||
|
cur.b := error_limit^[cur.b];
|
||
|
{ Form pixel value + error, and range-limit to 0..MAXJSAMPLE.
|
||
|
The maximum error is +- MAXJSAMPLE (or less with error limiting);
|
||
|
this sets the required size of the range_limit array. }
|
||
|
|
||
|
Inc(cur.r, GETJSAMPLE(inptr^.r));
|
||
|
Inc(cur.g, GETJSAMPLE(inptr^.g));
|
||
|
Inc(cur.b, GETJSAMPLE(inptr^.b));
|
||
|
|
||
|
cur.r := GETJSAMPLE(range_limit^[cur.r]);
|
||
|
cur.g := GETJSAMPLE(range_limit^[cur.g]);
|
||
|
cur.b := GETJSAMPLE(range_limit^[cur.b]);
|
||
|
{ Index into the cache with adjusted pixel value }
|
||
|
cachep := @(histogram^[cur.r shr C0_SHIFT]^
|
||
|
[cur.g shr C1_SHIFT][cur.b shr C2_SHIFT]);
|
||
|
{ If we have not seen this color before, find nearest colormap }
|
||
|
{ entry and update the cache }
|
||
|
if (cachep^ = 0) then
|
||
|
fill_inverse_cmap(cinfo, cur.r shr C0_SHIFT,
|
||
|
cur.g shr C1_SHIFT,
|
||
|
cur.b shr C2_SHIFT);
|
||
|
{ Now emit the colormap index for this cell }
|
||
|
|
||
|
pixcode := cachep^ - 1;
|
||
|
outptr^ := JSAMPLE (pixcode);
|
||
|
|
||
|
{ Compute representation error for this pixel }
|
||
|
Dec(cur.r, GETJSAMPLE(colormap0^[pixcode]));
|
||
|
Dec(cur.g, GETJSAMPLE(colormap1^[pixcode]));
|
||
|
Dec(cur.b, GETJSAMPLE(colormap2^[pixcode]));
|
||
|
|
||
|
{ Compute error fractions to be propagated to adjacent pixels.
|
||
|
Add these into the running sums, and simultaneously shift the
|
||
|
next-line error sums left by 1 column. }
|
||
|
|
||
|
bnexterr := cur.r; { Process component 0 }
|
||
|
delta := cur.r * 2;
|
||
|
Inc(cur.r, delta); { form error * 3 }
|
||
|
prev_errorptr^.r := FSERROR (bpreverr.r + cur.r);
|
||
|
Inc(cur.r, delta); { form error * 5 }
|
||
|
bpreverr.r := belowerr.r + cur.r;
|
||
|
belowerr.r := bnexterr;
|
||
|
Inc(cur.r, delta); { form error * 7 }
|
||
|
bnexterr := cur.g; { Process component 1 }
|
||
|
delta := cur.g * 2;
|
||
|
Inc(cur.g, delta); { form error * 3 }
|
||
|
prev_errorptr^.g := FSERROR (bpreverr.g + cur.g);
|
||
|
Inc(cur.g, delta); { form error * 5 }
|
||
|
bpreverr.g := belowerr.g + cur.g;
|
||
|
belowerr.g := bnexterr;
|
||
|
Inc(cur.g, delta); { form error * 7 }
|
||
|
bnexterr := cur.b; { Process component 2 }
|
||
|
delta := cur.b * 2;
|
||
|
Inc(cur.b, delta); { form error * 3 }
|
||
|
prev_errorptr^.b := FSERROR (bpreverr.b + cur.b);
|
||
|
Inc(cur.b, delta); { form error * 5 }
|
||
|
bpreverr.b := belowerr.b + cur.b;
|
||
|
belowerr.b := bnexterr;
|
||
|
Inc(cur.b, delta); { form error * 7 }
|
||
|
|
||
|
{ At this point curN contains the 7/16 error value to be propagated
|
||
|
to the next pixel on the current line, and all the errors for the
|
||
|
next line have been shifted over. We are therefore ready to move on.}
|
||
|
|
||
|
Inc(inptr, dir); { Advance pixel pointers to next column }
|
||
|
Inc(outptr, dir);
|
||
|
end;
|
||
|
{ Post-loop cleanup: we must unload the final error values into the
|
||
|
final fserrors[] entry. Note we need not unload belowerrN because
|
||
|
it is for the dummy column before or after the actual array. }
|
||
|
|
||
|
errorptr^.r := FSERROR (bpreverr.r); { unload prev errs into array }
|
||
|
errorptr^.g := FSERROR (bpreverr.g);
|
||
|
errorptr^.b := FSERROR (bpreverr.b);
|
||
|
end;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{ Initialize the error-limiting transfer function (lookup table).
|
||
|
The raw F-S error computation can potentially compute error values of up to
|
||
|
+- MAXJSAMPLE. But we want the maximum correction applied to a pixel to be
|
||
|
much less, otherwise obviously wrong pixels will be created. (Typical
|
||
|
effects include weird fringes at color-area boundaries, isolated bright
|
||
|
pixels in a dark area, etc.) The standard advice for avoiding this problem
|
||
|
is to ensure that the "corners" of the color cube are allocated as output
|
||
|
colors; then repeated errors in the same direction cannot cause cascading
|
||
|
error buildup. However, that only prevents the error from getting
|
||
|
completely out of hand; Aaron Giles reports that error limiting improves
|
||
|
the results even with corner colors allocated.
|
||
|
A simple clamping of the error values to about +- MAXJSAMPLE/8 works pretty
|
||
|
well, but the smoother transfer function used below is even better. Thanks
|
||
|
to Aaron Giles for this idea. }
|
||
|
|
||
|
{LOCAL}
|
||
|
procedure init_error_limit (cinfo : j_decompress_ptr);
|
||
|
const
|
||
|
STEPSIZE = ((MAXJSAMPLE+1) div 16);
|
||
|
{ Allocate and fill in the error_limiter table }
|
||
|
var
|
||
|
cquantize : my_cquantize_ptr;
|
||
|
table : error_limit_ptr;
|
||
|
inp, out : int;
|
||
|
begin
|
||
|
cquantize := my_cquantize_ptr (cinfo^.cquantize);
|
||
|
table := error_limit_ptr (cinfo^.mem^.alloc_small
|
||
|
(j_common_ptr (cinfo), JPOOL_IMAGE, (MAXJSAMPLE*2+1) * SIZEOF(int)));
|
||
|
{ not needed: Inc(table, MAXJSAMPLE);
|
||
|
so can index -MAXJSAMPLE .. +MAXJSAMPLE }
|
||
|
cquantize^.error_limiter := table;
|
||
|
{ Map errors 1:1 up to +- MAXJSAMPLE/16 }
|
||
|
out := 0;
|
||
|
for inp := 0 to pred(STEPSIZE) do
|
||
|
begin
|
||
|
table^[inp] := out;
|
||
|
table^[-inp] := -out;
|
||
|
Inc(out);
|
||
|
end;
|
||
|
{ Map errors 1:2 up to +- 3*MAXJSAMPLE/16 }
|
||
|
inp := STEPSIZE; { Nomssi: avoid problems with Delphi2 optimizer }
|
||
|
while (inp < STEPSIZE*3) do
|
||
|
begin
|
||
|
table^[inp] := out;
|
||
|
table^[-inp] := -out;
|
||
|
Inc(inp);
|
||
|
if Odd(inp) then
|
||
|
Inc(out);
|
||
|
end;
|
||
|
{ Clamp the rest to final out value (which is (MAXJSAMPLE+1)/8) }
|
||
|
inp := STEPSIZE*3; { Nomssi: avoid problems with Delphi 2 optimizer }
|
||
|
while inp <= MAXJSAMPLE do
|
||
|
begin
|
||
|
table^[inp] := out;
|
||
|
table^[-inp] := -out;
|
||
|
Inc(inp);
|
||
|
end;
|
||
|
end;
|
||
|
|
||
|
{ Finish up at the end of each pass. }
|
||
|
|
||
|
{METHODDEF}
|
||
|
procedure finish_pass1 (cinfo : j_decompress_ptr);
|
||
|
var
|
||
|
cquantize : my_cquantize_ptr;
|
||
|
begin
|
||
|
cquantize := my_cquantize_ptr (cinfo^.cquantize);
|
||
|
|
||
|
{ Select the representative colors and fill in cinfo^.colormap }
|
||
|
cinfo^.colormap := cquantize^.sv_colormap;
|
||
|
select_colors(cinfo, cquantize^.desired);
|
||
|
{ Force next pass to zero the color index table }
|
||
|
cquantize^.needs_zeroed := TRUE;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{METHODDEF}
|
||
|
procedure finish_pass2 (cinfo : j_decompress_ptr);
|
||
|
begin
|
||
|
{ no work }
|
||
|
end;
|
||
|
|
||
|
|
||
|
{ Initialize for each processing pass. }
|
||
|
|
||
|
{METHODDEF}
|
||
|
procedure start_pass_2_quant (cinfo : j_decompress_ptr;
|
||
|
is_pre_scan : boolean);
|
||
|
var
|
||
|
cquantize : my_cquantize_ptr;
|
||
|
histogram : hist3d;
|
||
|
i : int;
|
||
|
var
|
||
|
arraysize : size_t;
|
||
|
begin
|
||
|
cquantize := my_cquantize_ptr (cinfo^.cquantize);
|
||
|
histogram := cquantize^.histogram;
|
||
|
{ Only F-S dithering or no dithering is supported. }
|
||
|
{ If user asks for ordered dither, give him F-S. }
|
||
|
if (cinfo^.dither_mode <> JDITHER_NONE) then
|
||
|
cinfo^.dither_mode := JDITHER_FS;
|
||
|
|
||
|
if (is_pre_scan) then
|
||
|
begin
|
||
|
{ Set up method pointers }
|
||
|
cquantize^.pub.color_quantize := prescan_quantize;
|
||
|
cquantize^.pub.finish_pass := finish_pass1;
|
||
|
cquantize^.needs_zeroed := TRUE; { Always zero histogram }
|
||
|
end
|
||
|
else
|
||
|
begin
|
||
|
{ Set up method pointers }
|
||
|
if (cinfo^.dither_mode = JDITHER_FS) then
|
||
|
cquantize^.pub.color_quantize := pass2_fs_dither
|
||
|
else
|
||
|
cquantize^.pub.color_quantize := pass2_no_dither;
|
||
|
cquantize^.pub.finish_pass := finish_pass2;
|
||
|
|
||
|
{ Make sure color count is acceptable }
|
||
|
i := cinfo^.actual_number_of_colors;
|
||
|
if (i < 1) then
|
||
|
ERREXIT1(j_common_ptr(cinfo), JERR_QUANT_FEW_COLORS, 1);
|
||
|
if (i > MAXNUMCOLORS) then
|
||
|
ERREXIT1(j_common_ptr(cinfo), JERR_QUANT_MANY_COLORS, MAXNUMCOLORS);
|
||
|
|
||
|
if (cinfo^.dither_mode = JDITHER_FS) then
|
||
|
begin
|
||
|
arraysize := size_t ((cinfo^.output_width + 2) *
|
||
|
(3 * SIZEOF(FSERROR)));
|
||
|
{ Allocate Floyd-Steinberg workspace if we didn't already. }
|
||
|
if (cquantize^.fserrors = NIL) then
|
||
|
cquantize^.fserrors := FS_ERROR_FIELD_PTR (cinfo^.mem^.alloc_large
|
||
|
(j_common_ptr(cinfo), JPOOL_IMAGE, arraysize));
|
||
|
{ Initialize the propagated errors to zero. }
|
||
|
jzero_far(cquantize^.fserrors, arraysize);
|
||
|
{ Make the error-limit table if we didn't already. }
|
||
|
if (cquantize^.error_limiter = NIL) then
|
||
|
init_error_limit(cinfo);
|
||
|
cquantize^.on_odd_row := FALSE;
|
||
|
end;
|
||
|
|
||
|
end;
|
||
|
{ Zero the histogram or inverse color map, if necessary }
|
||
|
if (cquantize^.needs_zeroed) then
|
||
|
begin
|
||
|
for i := 0 to pred(HIST_C0_ELEMS) do
|
||
|
begin
|
||
|
jzero_far( histogram^[i],
|
||
|
HIST_C1_ELEMS*HIST_C2_ELEMS * SIZEOF(histcell));
|
||
|
end;
|
||
|
cquantize^.needs_zeroed := FALSE;
|
||
|
end;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{ Switch to a new external colormap between output passes. }
|
||
|
|
||
|
{METHODDEF}
|
||
|
procedure new_color_map_2_quant (cinfo : j_decompress_ptr);
|
||
|
var
|
||
|
cquantize : my_cquantize_ptr;
|
||
|
begin
|
||
|
cquantize := my_cquantize_ptr (cinfo^.cquantize);
|
||
|
|
||
|
{ Reset the inverse color map }
|
||
|
cquantize^.needs_zeroed := TRUE;
|
||
|
end;
|
||
|
|
||
|
|
||
|
{ Module initialization routine for 2-pass color quantization. }
|
||
|
|
||
|
|
||
|
{GLOBAL}
|
||
|
procedure jinit_2pass_quantizer (cinfo : j_decompress_ptr);
|
||
|
var
|
||
|
cquantize : my_cquantize_ptr;
|
||
|
i : int;
|
||
|
var
|
||
|
desired : int;
|
||
|
begin
|
||
|
cquantize := my_cquantize_ptr(
|
||
|
cinfo^.mem^.alloc_small (j_common_ptr(cinfo), JPOOL_IMAGE,
|
||
|
SIZEOF(my_cquantizer)));
|
||
|
cinfo^.cquantize := jpeg_color_quantizer_ptr(cquantize);
|
||
|
cquantize^.pub.start_pass := start_pass_2_quant;
|
||
|
cquantize^.pub.new_color_map := new_color_map_2_quant;
|
||
|
cquantize^.fserrors := NIL; { flag optional arrays not allocated }
|
||
|
cquantize^.error_limiter := NIL;
|
||
|
|
||
|
{ Make sure jdmaster didn't give me a case I can't handle }
|
||
|
if (cinfo^.out_color_components <> 3) then
|
||
|
ERREXIT(j_common_ptr(cinfo), JERR_NOTIMPL);
|
||
|
|
||
|
{ Allocate the histogram/inverse colormap storage }
|
||
|
cquantize^.histogram := hist3d (cinfo^.mem^.alloc_small
|
||
|
(j_common_ptr (cinfo), JPOOL_IMAGE, HIST_C0_ELEMS * SIZEOF(hist2d)));
|
||
|
for i := 0 to pred(HIST_C0_ELEMS) do
|
||
|
begin
|
||
|
cquantize^.histogram^[i] := hist2d (cinfo^.mem^.alloc_large
|
||
|
(j_common_ptr (cinfo), JPOOL_IMAGE,
|
||
|
HIST_C1_ELEMS*HIST_C2_ELEMS * SIZEOF(histcell)));
|
||
|
end;
|
||
|
cquantize^.needs_zeroed := TRUE; { histogram is garbage now }
|
||
|
|
||
|
{ Allocate storage for the completed colormap, if required.
|
||
|
We do this now since it is FAR storage and may affect
|
||
|
the memory manager's space calculations. }
|
||
|
|
||
|
if (cinfo^.enable_2pass_quant) then
|
||
|
begin
|
||
|
{ Make sure color count is acceptable }
|
||
|
desired := cinfo^.desired_number_of_colors;
|
||
|
{ Lower bound on # of colors ... somewhat arbitrary as long as > 0 }
|
||
|
if (desired < 8) then
|
||
|
ERREXIT1(j_common_ptr (cinfo), JERR_QUANT_FEW_COLORS, 8);
|
||
|
{ Make sure colormap indexes can be represented by JSAMPLEs }
|
||
|
if (desired > MAXNUMCOLORS) then
|
||
|
ERREXIT1(j_common_ptr (cinfo), JERR_QUANT_MANY_COLORS, MAXNUMCOLORS);
|
||
|
cquantize^.sv_colormap := cinfo^.mem^.alloc_sarray
|
||
|
(j_common_ptr (cinfo),JPOOL_IMAGE, JDIMENSION(desired), JDIMENSION(3));
|
||
|
cquantize^.desired := desired;
|
||
|
end
|
||
|
else
|
||
|
cquantize^.sv_colormap := NIL;
|
||
|
|
||
|
{ Only F-S dithering or no dithering is supported. }
|
||
|
{ If user asks for ordered dither, give him F-S. }
|
||
|
if (cinfo^.dither_mode <> JDITHER_NONE) then
|
||
|
cinfo^.dither_mode := JDITHER_FS;
|
||
|
|
||
|
{ Allocate Floyd-Steinberg workspace if necessary.
|
||
|
This isn't really needed until pass 2, but again it is FAR storage.
|
||
|
Although we will cope with a later change in dither_mode,
|
||
|
we do not promise to honor max_memory_to_use if dither_mode changes. }
|
||
|
|
||
|
if (cinfo^.dither_mode = JDITHER_FS) then
|
||
|
begin
|
||
|
cquantize^.fserrors := FS_ERROR_FIELD_PTR (cinfo^.mem^.alloc_large
|
||
|
(j_common_ptr(cinfo), JPOOL_IMAGE,
|
||
|
size_t ((cinfo^.output_width + 2) * (3 * SIZEOF(FSERROR))) ) );
|
||
|
{ Might as well create the error-limiting table too. }
|
||
|
init_error_limit(cinfo);
|
||
|
end;
|
||
|
end;
|
||
|
{ QUANT_2PASS_SUPPORTED }
|
||
|
end.
|