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https://github.com/tesseract-ocr/tesseract.git
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4d514d5a60
git-svn-id: https://tesseract-ocr.googlecode.com/svn/trunk@878 d0cd1f9f-072b-0410-8dd7-cf729c803f20
160 lines
5.6 KiB
C++
160 lines
5.6 KiB
C++
/* -*-C-*-
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********************************************************************************
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*
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* File: matrix.c (Formerly matrix.c)
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* Description: Ratings matrix code. (Used by associator)
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* Author: Mark Seaman, OCR Technology
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* Created: Wed May 16 13:18:47 1990
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* Modified: Wed Mar 20 09:44:47 1991 (Mark Seaman) marks@hpgrlt
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* Language: C
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* Package: N/A
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* Status: Experimental (Do Not Distribute)
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*
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* (c) Copyright 1990, Hewlett-Packard Company.
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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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/*----------------------------------------------------------------------
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I n c l u d e s
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----------------------------------------------------------------------*/
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#include "matrix.h"
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#include "callcpp.h"
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#include "ratngs.h"
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#include "tprintf.h"
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#include "unicharset.h"
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// Returns true if there are any real classification results.
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bool MATRIX::Classified(int col, int row, int wildcard_id) const {
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if (get(col, row) == NOT_CLASSIFIED) return false;
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BLOB_CHOICE_IT b_it(get(col, row));
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for (b_it.mark_cycle_pt(); !b_it.cycled_list(); b_it.forward()) {
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BLOB_CHOICE* choice = b_it.data();
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if (choice->IsClassified())
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return true;
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}
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return false;
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}
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// Expands the existing matrix in-place to make the band wider, without
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// losing any existing data.
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void MATRIX::IncreaseBandSize(int bandwidth) {
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ResizeWithCopy(dimension(), bandwidth);
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}
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// Returns a bigger MATRIX with a new column and row in the matrix in order
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// to split the blob at the given (ind,ind) diagonal location.
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// Entries are relocated to the new MATRIX using the transformation defined
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// by MATRIX_COORD::MapForSplit.
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// Transfers the pointer data to the new MATRIX and deletes *this.
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MATRIX* MATRIX::ConsumeAndMakeBigger(int ind) {
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int dim = dimension();
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int band_width = bandwidth();
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// Check to see if bandwidth needs expanding.
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for (int col = ind; col >= 0 && col > ind - band_width; --col) {
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if (array_[col * band_width + band_width - 1] != empty_) {
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++band_width;
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break;
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}
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}
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MATRIX* result = new MATRIX(dim + 1, band_width);
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for (int col = 0; col < dim; ++col) {
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for (int row = col; row < dim && row < col + bandwidth(); ++row) {
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MATRIX_COORD coord(col, row);
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coord.MapForSplit(ind);
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BLOB_CHOICE_LIST* choices = get(col, row);
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if (choices != NULL) {
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// Correct matrix location on each choice.
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BLOB_CHOICE_IT bc_it(choices);
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for (bc_it.mark_cycle_pt(); !bc_it.cycled_list(); bc_it.forward()) {
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BLOB_CHOICE* choice = bc_it.data();
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choice->set_matrix_cell(coord.col, coord.row);
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}
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ASSERT_HOST(coord.Valid(*result));
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result->put(coord.col, coord.row, choices);
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}
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}
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}
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delete this;
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return result;
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}
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// Makes and returns a deep copy of *this, including all the BLOB_CHOICEs
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// on the lists, but not any LanguageModelState that may be attached to the
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// BLOB_CHOICEs.
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MATRIX* MATRIX::DeepCopy() const {
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int dim = dimension();
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int band_width = bandwidth();
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MATRIX* result = new MATRIX(dim, band_width);
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for (int col = 0; col < dim; ++col) {
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for (int row = col; row < col + band_width; ++row) {
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BLOB_CHOICE_LIST* choices = get(col, row);
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if (choices != NULL) {
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BLOB_CHOICE_LIST* copy_choices = new BLOB_CHOICE_LIST;
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choices->deep_copy(copy_choices, &BLOB_CHOICE::deep_copy);
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result->put(col, row, copy_choices);
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}
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}
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}
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return result;
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}
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// Print the best guesses out of the match rating matrix.
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void MATRIX::print(const UNICHARSET &unicharset) const {
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tprintf("Ratings Matrix (top 3 choices)\n");
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int dim = dimension();
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int band_width = bandwidth();
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int row, col;
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for (col = 0; col < dim; ++col) {
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for (row = col; row < dim && row < col + band_width; ++row) {
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BLOB_CHOICE_LIST *rating = this->get(col, row);
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if (rating == NOT_CLASSIFIED) continue;
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BLOB_CHOICE_IT b_it(rating);
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tprintf("col=%d row=%d ", col, row);
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for (b_it.mark_cycle_pt(); !b_it.cycled_list(); b_it.forward()) {
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tprintf("%s rat=%g cert=%g " ,
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unicharset.id_to_unichar(b_it.data()->unichar_id()),
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b_it.data()->rating(), b_it.data()->certainty());
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}
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tprintf("\n");
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}
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tprintf("\n");
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}
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tprintf("\n");
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for (col = 0; col < dim; ++col) tprintf("\t%d", col);
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tprintf("\n");
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for (row = 0; row < dim; ++row) {
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for (col = 0; col <= row; ++col) {
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if (col == 0) tprintf("%d\t", row);
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if (row >= col + band_width) {
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tprintf(" \t");
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continue;
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}
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BLOB_CHOICE_LIST *rating = this->get(col, row);
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if (rating != NOT_CLASSIFIED) {
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BLOB_CHOICE_IT b_it(rating);
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int counter = 0;
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for (b_it.mark_cycle_pt(); !b_it.cycled_list(); b_it.forward()) {
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tprintf("%s ",
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unicharset.id_to_unichar(b_it.data()->unichar_id()));
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++counter;
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if (counter == 3) break;
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}
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tprintf("\t");
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} else {
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tprintf(" \t");
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}
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}
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tprintf("\n");
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}
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}
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