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636a04b957
git-svn-id: https://tesseract-ocr.googlecode.com/svn/trunk@488 d0cd1f9f-072b-0410-8dd7-cf729c803f20
154 lines
5.6 KiB
C++
154 lines
5.6 KiB
C++
/**********************************************************************
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* File: otsuthr.cpp
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* Description: Simple Otsu thresholding for binarizing images.
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* Author: Ray Smith
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* Created: Fri Mar 07 12:31:01 PST 2008
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*
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* (C) Copyright 2008, Google Inc.
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** Licensed under the Apache License, Version 2.0 (the "License");
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** you may not use this file except in compliance with the License.
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** You may obtain a copy of the License at
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** http://www.apache.org/licenses/LICENSE-2.0
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** Unless required by applicable law or agreed to in writing, software
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** distributed under the License is distributed on an "AS IS" BASIS,
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** WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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** See the License for the specific language governing permissions and
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** limitations under the License.
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*
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**********************************************************************/
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#include <string.h>
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#include "otsuthr.h"
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namespace tesseract {
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// Compute the Otsu threshold(s) for the given image rectangle, making one
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// for each channel. Each channel is always one byte per pixel.
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// Returns an array of threshold values and an array of hi_values, such
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// that a pixel value >threshold[channel] is considered foreground if
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// hi_values[channel] is 0 or background if 1. A hi_value of -1 indicates
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// that there is no apparent foreground. At least one hi_value will not be -1.
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// Delete thresholds and hi_values with delete [] after use.
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void OtsuThreshold(const unsigned char* imagedata,
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int bytes_per_pixel, int bytes_per_line,
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int left, int top, int width, int height,
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int** thresholds, int** hi_values) {
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// Of all channels with no good hi_value, keep the best so we can always
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// produce at least one answer.
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int best_hi_value = 1;
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int best_hi_index = 0;
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bool any_good_hivalue = false;
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double best_hi_dist = 0.0;
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*thresholds = new int[bytes_per_pixel];
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*hi_values = new int[bytes_per_pixel];
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for (int ch = 0; ch < bytes_per_pixel; ++ch) {
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(*thresholds)[ch] = -1;
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(*hi_values)[ch] = -1;
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// Compute the histogram of the image rectangle.
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int histogram[kHistogramSize];
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HistogramRect(imagedata + ch, bytes_per_pixel, bytes_per_line,
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left, top, width, height, histogram);
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int H;
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int best_omega_0;
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int best_t = OtsuStats(histogram, &H, &best_omega_0);
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if (best_omega_0 == 0 || best_omega_0 == H) {
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// This channel is empty.
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continue;
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}
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// To be a convincing foreground we must have a small fraction of H
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// or to be a convincing background we must have a large fraction of H.
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// In between we assume this channel contains no thresholding information.
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int hi_value = best_omega_0 < H * 0.5;
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(*thresholds)[ch] = best_t;
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if (best_omega_0 > H * 0.75) {
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any_good_hivalue = true;
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(*hi_values)[ch] = 0;
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} else if (best_omega_0 < H * 0.25) {
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any_good_hivalue = true;
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(*hi_values)[ch] = 1;
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} else {
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// In case all channels are like this, keep the best of the bad lot.
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double hi_dist = hi_value ? (H - best_omega_0) : best_omega_0;
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if (hi_dist > best_hi_dist) {
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best_hi_dist = hi_dist;
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best_hi_value = hi_value;
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best_hi_index = ch;
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}
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}
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}
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if (!any_good_hivalue) {
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// Use the best of the ones that were not good enough.
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(*hi_values)[best_hi_index] = best_hi_value;
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}
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}
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// Compute the histogram for the given image rectangle, and the given
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// channel. (Channel pointed to by imagedata.) Each channel is always
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// one byte per pixel.
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// Bytes per pixel is used to skip channels not being
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// counted with this call in a multi-channel (pixel-major) image.
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// Histogram is always a kHistogramSize(256) element array to count
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// occurrences of each pixel value.
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void HistogramRect(const unsigned char* imagedata,
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int bytes_per_pixel, int bytes_per_line,
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int left, int top, int width, int height,
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int* histogram) {
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int bottom = top + height;
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memset(histogram, 0, sizeof(*histogram) * kHistogramSize);
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const unsigned char* pixels = imagedata +
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top * bytes_per_line +
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left * bytes_per_pixel;
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for (int y = top; y < bottom; ++y) {
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for (int x = 0; x < width; ++x) {
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++histogram[pixels[x * bytes_per_pixel]];
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}
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pixels += bytes_per_line;
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}
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}
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// Compute the Otsu threshold(s) for the given histogram.
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// Also returns H = total count in histogram, and
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// omega0 = count of histogram below threshold.
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int OtsuStats(const int* histogram, int* H_out, int* omega0_out) {
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int H = 0;
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double mu_T = 0.0;
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for (int i = 0; i < kHistogramSize; ++i) {
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H += histogram[i];
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mu_T += static_cast<double>(i) * histogram[i];
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}
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// Now maximize sig_sq_B over t.
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// http://www.ctie.monash.edu.au/hargreave/Cornall_Terry_328.pdf
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int best_t = -1;
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int omega_0, omega_1;
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int best_omega_0 = 0;
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double best_sig_sq_B = 0.0;
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double mu_0, mu_1, mu_t;
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omega_0 = 0;
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mu_t = 0.0;
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for (int t = 0; t < kHistogramSize - 1; ++t) {
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omega_0 += histogram[t];
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mu_t += t * static_cast<double>(histogram[t]);
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if (omega_0 == 0)
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continue;
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omega_1 = H - omega_0;
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if (omega_1 == 0)
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break;
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mu_0 = mu_t / omega_0;
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mu_1 = (mu_T - mu_t) / omega_1;
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double sig_sq_B = mu_1 - mu_0;
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sig_sq_B *= sig_sq_B * omega_0 * omega_1;
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if (best_t < 0 || sig_sq_B > best_sig_sq_B) {
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best_sig_sq_B = sig_sq_B;
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best_t = t;
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best_omega_0 = omega_0;
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}
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}
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if (H_out != NULL) *H_out = H;
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if (omega0_out != NULL) *omega0_out = best_omega_0;
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return best_t;
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}
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} // namespace tesseract.
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