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https://github.com/tesseract-ocr/tesseract.git
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dbf6197471
git-svn-id: https://tesseract-ocr.googlecode.com/svn/trunk@1147 d0cd1f9f-072b-0410-8dd7-cf729c803f20
232 lines
8.8 KiB
C++
232 lines
8.8 KiB
C++
///////////////////////////////////////////////////////////////////////
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// File: recogtraining.cpp
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// Description: Functions for ambiguity and parameter training.
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// Author: Daria Antonova
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// Created: Mon Aug 13 11:26:43 PDT 2009
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//
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// (C) Copyright 2009, 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 "tesseractclass.h"
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#include "boxread.h"
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#include "control.h"
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#include "cutil.h"
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#include "host.h"
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#include "ratngs.h"
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#include "reject.h"
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#include "stopper.h"
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namespace tesseract {
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const inT16 kMaxBoxEdgeDiff = 2;
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// Sets flags necessary for recognition in the training mode.
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// Opens and returns the pointer to the output file.
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FILE *Tesseract::init_recog_training(const STRING &fname) {
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if (tessedit_ambigs_training) {
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tessedit_tess_adaption_mode.set_value(0); // turn off adaption
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tessedit_enable_doc_dict.set_value(0); // turn off document dictionary
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// Explore all segmentations.
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getDict().stopper_no_acceptable_choices.set_value(1);
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}
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STRING output_fname = fname;
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const char *lastdot = strrchr(output_fname.string(), '.');
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if (lastdot != NULL) output_fname[lastdot - output_fname.string()] = '\0';
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output_fname += ".txt";
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FILE *output_file = open_file(output_fname.string(), "a+");
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return output_file;
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}
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// Copies the bounding box from page_res_it->word() to the given TBOX.
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bool read_t(PAGE_RES_IT *page_res_it, TBOX *tbox) {
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while (page_res_it->block() != NULL && page_res_it->word() == NULL)
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page_res_it->forward();
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if (page_res_it->word() != NULL) {
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*tbox = page_res_it->word()->word->bounding_box();
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// If tbox->left() is negative, the training image has vertical text and
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// all the coordinates of bounding boxes of page_res are rotated by 90
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// degrees in a counterclockwise direction. We need to rotate the TBOX back
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// in order to compare with the TBOXes of box files.
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if (tbox->left() < 0) {
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tbox->rotate(FCOORD(0.0, -1.0));
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}
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return true;
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} else {
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return false;
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}
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}
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// This function takes tif/box pair of files and runs recognition on the image,
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// while making sure that the word bounds that tesseract identified roughly
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// match to those specified by the input box file. For each word (ngram in a
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// single bounding box from the input box file) it outputs the ocred result,
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// the correct label, rating and certainty.
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void Tesseract::recog_training_segmented(const STRING &fname,
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PAGE_RES *page_res,
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volatile ETEXT_DESC *monitor,
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FILE *output_file) {
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STRING box_fname = fname;
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const char *lastdot = strrchr(box_fname.string(), '.');
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if (lastdot != NULL) box_fname[lastdot - box_fname.string()] = '\0';
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box_fname += ".box";
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// read_next_box() will close box_file
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FILE *box_file = open_file(box_fname.string(), "r");
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PAGE_RES_IT page_res_it;
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page_res_it.page_res = page_res;
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page_res_it.restart_page();
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STRING label;
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// Process all the words on this page.
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TBOX tbox; // tesseract-identified box
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TBOX bbox; // box from the box file
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bool keep_going;
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int line_number = 0;
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int examined_words = 0;
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do {
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keep_going = read_t(&page_res_it, &tbox);
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keep_going &= ReadNextBox(applybox_page, &line_number, box_file, &label,
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&bbox);
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// Align bottom left points of the TBOXes.
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while (keep_going &&
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!NearlyEqual<int>(tbox.bottom(), bbox.bottom(), kMaxBoxEdgeDiff)) {
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if (bbox.bottom() < tbox.bottom()) {
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page_res_it.forward();
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keep_going = read_t(&page_res_it, &tbox);
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} else {
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keep_going = ReadNextBox(applybox_page, &line_number, box_file, &label,
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&bbox);
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}
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}
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while (keep_going &&
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!NearlyEqual<int>(tbox.left(), bbox.left(), kMaxBoxEdgeDiff)) {
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if (bbox.left() > tbox.left()) {
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page_res_it.forward();
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keep_going = read_t(&page_res_it, &tbox);
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} else {
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keep_going = ReadNextBox(applybox_page, &line_number, box_file, &label,
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&bbox);
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}
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}
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// OCR the word if top right points of the TBOXes are similar.
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if (keep_going &&
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NearlyEqual<int>(tbox.right(), bbox.right(), kMaxBoxEdgeDiff) &&
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NearlyEqual<int>(tbox.top(), bbox.top(), kMaxBoxEdgeDiff)) {
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ambigs_classify_and_output(label.string(), &page_res_it, output_file);
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examined_words++;
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}
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page_res_it.forward();
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} while (keep_going);
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fclose(box_file);
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// Set up scripts on all of the words that did not get sent to
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// ambigs_classify_and_output. They all should have, but if all the
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// werd_res's don't get uch_sets, tesseract will crash when you try
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// to iterate over them. :-(
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int total_words = 0;
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for (page_res_it.restart_page(); page_res_it.block() != NULL;
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page_res_it.forward()) {
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if (page_res_it.word()) {
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if (page_res_it.word()->uch_set == NULL)
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page_res_it.word()->SetupFake(unicharset);
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total_words++;
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}
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}
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if (examined_words < 0.85 * total_words) {
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tprintf("TODO(antonova): clean up recog_training_segmented; "
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" It examined only a small fraction of the ambigs image.\n");
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}
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tprintf("recog_training_segmented: examined %d / %d words.\n",
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examined_words, total_words);
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}
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// Helper prints the given set of blob choices.
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static void PrintPath(int length, const BLOB_CHOICE** blob_choices,
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const UNICHARSET& unicharset,
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const char *label, FILE *output_file) {
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float rating = 0.0f;
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float certainty = 0.0f;
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for (int i = 0; i < length; ++i) {
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const BLOB_CHOICE* blob_choice = blob_choices[i];
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fprintf(output_file, "%s",
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unicharset.id_to_unichar(blob_choice->unichar_id()));
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rating += blob_choice->rating();
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if (certainty > blob_choice->certainty())
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certainty = blob_choice->certainty();
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}
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fprintf(output_file, "\t%s\t%.4f\t%.4f\n",
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label, rating, certainty);
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}
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// Helper recursively prints all paths through the ratings matrix, starting
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// at column col.
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static void PrintMatrixPaths(int col, int dim,
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const MATRIX& ratings,
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int length, const BLOB_CHOICE** blob_choices,
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const UNICHARSET& unicharset,
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const char *label, FILE *output_file) {
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for (int row = col; row < dim && row - col < ratings.bandwidth(); ++row) {
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if (ratings.get(col, row) != NOT_CLASSIFIED) {
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BLOB_CHOICE_IT bc_it(ratings.get(col, row));
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for (bc_it.mark_cycle_pt(); !bc_it.cycled_list(); bc_it.forward()) {
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blob_choices[length] = bc_it.data();
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if (row + 1 < dim) {
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PrintMatrixPaths(row + 1, dim, ratings, length + 1, blob_choices,
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unicharset, label, output_file);
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} else {
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PrintPath(length + 1, blob_choices, unicharset, label, output_file);
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}
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}
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}
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}
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}
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// Runs classify_word_pass1() on the current word. Outputs Tesseract's
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// raw choice as a result of the classification. For words labeled with a
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// single unichar also outputs all alternatives from blob_choices of the
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// best choice.
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void Tesseract::ambigs_classify_and_output(const char *label,
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PAGE_RES_IT* pr_it,
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FILE *output_file) {
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// Classify word.
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fflush(stdout);
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WordData word_data(*pr_it);
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SetupWordPassN(1, &word_data);
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classify_word_and_language(&Tesseract::classify_word_pass1,
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pr_it, &word_data);
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WERD_RES* werd_res = word_data.word;
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WERD_CHOICE *best_choice = werd_res->best_choice;
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ASSERT_HOST(best_choice != NULL);
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// Compute the number of unichars in the label.
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GenericVector<UNICHAR_ID> encoding;
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if (!unicharset.encode_string(label, true, &encoding, NULL, NULL)) {
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tprintf("Not outputting illegal unichar %s\n", label);
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return;
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}
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// Dump all paths through the ratings matrix (which is normally small).
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int dim = werd_res->ratings->dimension();
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const BLOB_CHOICE** blob_choices = new const BLOB_CHOICE*[dim];
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PrintMatrixPaths(0, dim, *werd_res->ratings, 0, blob_choices,
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unicharset, label, output_file);
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delete [] blob_choices;
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}
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} // namespace tesseract
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