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2aafc9df24
git-svn-id: https://tesseract-ocr.googlecode.com/svn/trunk@872 d0cd1f9f-072b-0410-8dd7-cf729c803f20
611 lines
23 KiB
C++
611 lines
23 KiB
C++
/******************************************************************
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* File: superscript.cpp
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* Description: Correction pass to fix superscripts and subscripts.
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* Author: David Eger
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* Created: Mon Mar 12 14:05:00 PDT 2012
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*
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* (C) Copyright 2012, 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 "normalis.h"
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#include "tesseractclass.h"
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static int LeadingUnicharsToChopped(WERD_RES *word, int num_unichars) {
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int num_chopped = 0;
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for (int i = 0; i < num_unichars; i++)
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num_chopped += word->best_state[i];
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return num_chopped;
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}
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static int TrailingUnicharsToChopped(WERD_RES *word, int num_unichars) {
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int num_chopped = 0;
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for (int i = 0; i < num_unichars; i++)
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num_chopped += word->best_state[word->best_state.size() - 1 - i];
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return num_chopped;
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}
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namespace tesseract {
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/**
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* Given a recognized blob, see if a contiguous collection of sub-pieces
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* (chopped blobs) starting at its left might qualify as being a subscript
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* or superscript letter based only on y position. Also do this for the
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* right side.
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*/
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void YOutlierPieces(WERD_RES *word, int rebuilt_blob_index,
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int super_y_bottom, int sub_y_top,
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ScriptPos *leading_pos, int *num_leading_outliers,
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ScriptPos *trailing_pos, int *num_trailing_outliers) {
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ScriptPos sp_unused1, sp_unused2;
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int unused1, unused2;
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if (!leading_pos) leading_pos = &sp_unused1;
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if (!num_leading_outliers) num_leading_outliers = &unused1;
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if (!trailing_pos) trailing_pos = &sp_unused2;
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if (!num_trailing_outliers) num_trailing_outliers = &unused2;
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*num_leading_outliers = *num_trailing_outliers = 0;
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*leading_pos = *trailing_pos = SP_NORMAL;
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int chopped_start = LeadingUnicharsToChopped(word, rebuilt_blob_index);
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int num_chopped_pieces = word->best_state[rebuilt_blob_index];
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ScriptPos last_pos = SP_NORMAL;
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int trailing_outliers = 0;
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for (int i = 0; i < num_chopped_pieces; i++) {
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TBOX box = word->chopped_word->blobs[chopped_start + i]->bounding_box();
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ScriptPos pos = SP_NORMAL;
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if (box.bottom() >= super_y_bottom) {
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pos = SP_SUPERSCRIPT;
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} else if (box.top() <= sub_y_top) {
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pos = SP_SUBSCRIPT;
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}
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if (pos == SP_NORMAL) {
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if (trailing_outliers == i) {
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*num_leading_outliers = trailing_outliers;
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*leading_pos = last_pos;
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}
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trailing_outliers = 0;
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} else {
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if (pos == last_pos) {
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trailing_outliers++;
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} else {
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trailing_outliers = 1;
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}
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}
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last_pos = pos;
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}
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*num_trailing_outliers = trailing_outliers;
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*trailing_pos = last_pos;
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}
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/**
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* Attempt to split off any high (or low) bits at the ends of the word with poor
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* certainty and recognize them separately. If the certainty gets much better
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* and other sanity checks pass, acccept.
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*
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* This superscript fix is meant to be called in the second pass of recognition
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* when we have tried once and already have a preliminary answer for word.
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*
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* @return Whether we modified the given word.
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*/
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bool Tesseract::SubAndSuperscriptFix(WERD_RES *word) {
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if (word->tess_failed || word->word->flag(W_REP_CHAR) ||
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!word->best_choice) {
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return false;
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}
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int num_leading, num_trailing;
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ScriptPos sp_leading, sp_trailing;
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float leading_certainty, trailing_certainty;
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float avg_certainty, unlikely_threshold;
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// Calculate the number of whole suspicious characters at the edges.
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GetSubAndSuperscriptCandidates(
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word, &num_leading, &sp_leading, &leading_certainty,
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&num_trailing, &sp_trailing, &trailing_certainty,
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&avg_certainty, &unlikely_threshold);
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const char *leading_pos = sp_leading == SP_SUBSCRIPT ? "sub" : "super";
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const char *trailing_pos = sp_trailing == SP_SUBSCRIPT ? "sub" : "super";
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int num_blobs = word->best_choice->length();
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// Calculate the remainder (partial characters) at the edges.
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// This accounts for us having classified the best version of
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// a word as [speaker?'] when it was instead [speaker.^{21}]
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// (that is we accidentally thought the 2 was attached to the period).
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int num_remainder_leading = 0, num_remainder_trailing = 0;
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if (num_leading + num_trailing < num_blobs && unlikely_threshold < 0.0) {
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int super_y_bottom =
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kBlnBaselineOffset + kBlnXHeight * superscript_min_y_bottom;
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int sub_y_top =
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kBlnBaselineOffset + kBlnXHeight * subscript_max_y_top;
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int last_word_char = num_blobs - 1 - num_trailing;
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float last_char_certainty = word->best_choice->certainty(last_word_char);
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if (word->best_choice->unichar_id(last_word_char) != 0 &&
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last_char_certainty <= unlikely_threshold) {
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ScriptPos rpos;
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YOutlierPieces(word, last_word_char, super_y_bottom, sub_y_top,
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NULL, NULL, &rpos, &num_remainder_trailing);
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if (num_trailing > 0 && rpos != sp_trailing) num_remainder_trailing = 0;
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if (num_remainder_trailing > 0 &&
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last_char_certainty < trailing_certainty) {
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trailing_certainty = last_char_certainty;
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}
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}
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bool another_blob_available = (num_remainder_trailing == 0) ||
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num_leading + num_trailing + 1 < num_blobs;
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int first_char_certainty = word->best_choice->certainty(num_leading);
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if (another_blob_available &&
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word->best_choice->unichar_id(num_leading) != 0 &&
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first_char_certainty <= unlikely_threshold) {
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ScriptPos lpos;
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YOutlierPieces(word, num_leading, super_y_bottom, sub_y_top,
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&lpos, &num_remainder_leading, NULL, NULL);
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if (num_leading > 0 && lpos != sp_leading) num_remainder_leading = 0;
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if (num_remainder_leading > 0 &&
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first_char_certainty < leading_certainty) {
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leading_certainty = first_char_certainty;
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}
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}
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}
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// If nothing to do, bail now.
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if (num_leading + num_trailing +
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num_remainder_leading + num_remainder_trailing == 0) {
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return false;
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}
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if (superscript_debug >= 1) {
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tprintf("Candidate for superscript detection: %s (",
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word->best_choice->unichar_string().string());
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if (num_leading || num_remainder_leading) {
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tprintf("%d.%d %s-leading ", num_leading, num_remainder_leading,
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leading_pos);
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}
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if (num_trailing || num_remainder_trailing) {
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tprintf("%d.%d %s-trailing ", num_trailing, num_remainder_trailing,
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trailing_pos);
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}
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tprintf(")\n");
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}
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if (superscript_debug >= 3) {
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word->best_choice->print();
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}
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if (superscript_debug >= 2) {
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tprintf(" Certainties -- Average: %.2f Unlikely thresh: %.2f ",
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avg_certainty, unlikely_threshold);
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if (num_leading)
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tprintf("Orig. leading (min): %.2f ", leading_certainty);
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if (num_trailing)
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tprintf("Orig. trailing (min): %.2f ", trailing_certainty);
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tprintf("\n");
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}
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// We've now calculated the number of rebuilt blobs we want to carve off.
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// However, split_word() works from TBLOBs in chopped_word, so we need to
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// convert to those.
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int num_chopped_leading =
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LeadingUnicharsToChopped(word, num_leading) + num_remainder_leading;
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int num_chopped_trailing =
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TrailingUnicharsToChopped(word, num_trailing) + num_remainder_trailing;
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int retry_leading = 0;
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int retry_trailing = 0;
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bool is_good = false;
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WERD_RES *revised = TrySuperscriptSplits(
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num_chopped_leading, leading_certainty, sp_leading,
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num_chopped_trailing, trailing_certainty, sp_trailing,
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word, &is_good, &retry_leading, &retry_trailing);
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if (is_good) {
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word->ConsumeWordResults(revised);
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} else if (retry_leading || retry_trailing) {
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int retry_chopped_leading =
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LeadingUnicharsToChopped(revised, retry_leading);
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int retry_chopped_trailing =
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TrailingUnicharsToChopped(revised, retry_trailing);
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WERD_RES *revised2 = TrySuperscriptSplits(
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retry_chopped_leading, leading_certainty, sp_leading,
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retry_chopped_trailing, trailing_certainty, sp_trailing,
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revised, &is_good, &retry_leading, &retry_trailing);
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if (is_good) {
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word->ConsumeWordResults(revised2);
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}
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delete revised2;
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}
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delete revised;
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return is_good;
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}
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/**
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* Determine how many characters (rebuilt blobs) on each end of a given word
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* might plausibly be superscripts so SubAndSuperscriptFix can try to
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* re-recognize them. Even if we find no whole blobs at either end,
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* we will set *unlikely_threshold to a certainty that might be used to
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* select "bad enough" outlier characters. If *unlikely_threshold is set to 0,
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* though, there's really no hope.
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*
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* @param[in] word The word to examine.
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* @param[out] num_rebuilt_leading the number of rebuilt blobs at the start
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* of the word which are all up or down and
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* seem badly classified.
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* @param[out] leading_pos "super" or "sub" (for debugging)
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* @param[out] leading_certainty the worst certainty in the leading blobs.
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* @param[out] num_rebuilt_trailing the number of rebuilt blobs at the end
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* of the word which are all up or down and
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* seem badly classified.
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* @param[out] trailing_pos "super" or "sub" (for debugging)
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* @param[out] trailing_certainty the worst certainty in the trailing blobs.
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* @param[out] avg_certainty the average certainty of "normal" blobs in
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* the word.
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* @param[out] unlikely_threshold the threshold (on certainty) we used to
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* select "bad enough" outlier characters.
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*/
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void Tesseract::GetSubAndSuperscriptCandidates(const WERD_RES *word,
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int *num_rebuilt_leading,
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ScriptPos *leading_pos,
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float *leading_certainty,
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int *num_rebuilt_trailing,
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ScriptPos *trailing_pos,
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float *trailing_certainty,
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float *avg_certainty,
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float *unlikely_threshold) {
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*avg_certainty = *unlikely_threshold = 0.0f;
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*num_rebuilt_leading = *num_rebuilt_trailing = 0;
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*leading_certainty = *trailing_certainty = 0.0f;
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int super_y_bottom =
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kBlnBaselineOffset + kBlnXHeight * superscript_min_y_bottom;
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int sub_y_top =
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kBlnBaselineOffset + kBlnXHeight * subscript_max_y_top;
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// Step one: Get an average certainty for "normally placed" characters.
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// Counts here are of blobs in the rebuild_word / unichars in best_choice.
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*leading_pos = *trailing_pos = SP_NORMAL;
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int leading_outliers = 0;
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int trailing_outliers = 0;
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int num_normal = 0;
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float normal_certainty_total = 0.0f;
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float worst_normal_certainty = 0.0f;
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ScriptPos last_pos = SP_NORMAL;
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int num_blobs = word->rebuild_word->NumBlobs();
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for (int b = 0; b < num_blobs; ++b) {
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TBOX box = word->rebuild_word->blobs[b]->bounding_box();
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ScriptPos pos = SP_NORMAL;
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if (box.bottom() >= super_y_bottom) {
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pos = SP_SUPERSCRIPT;
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} else if (box.top() <= sub_y_top) {
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pos = SP_SUBSCRIPT;
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}
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if (pos == SP_NORMAL) {
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if (word->best_choice->unichar_id(b) != 0) {
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float char_certainty = word->best_choice->certainty(b);
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if (char_certainty < worst_normal_certainty) {
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worst_normal_certainty = char_certainty;
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}
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num_normal++;
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normal_certainty_total += char_certainty;
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}
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if (trailing_outliers == b) {
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leading_outliers = trailing_outliers;
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*leading_pos = last_pos;
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}
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trailing_outliers = 0;
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} else {
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if (last_pos == pos) {
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trailing_outliers++;
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} else {
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trailing_outliers = 1;
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}
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}
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last_pos = pos;
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}
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*trailing_pos = last_pos;
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if (num_normal >= 3) { // throw out the worst as an outlier.
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num_normal--;
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normal_certainty_total -= worst_normal_certainty;
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}
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if (num_normal > 0) {
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*avg_certainty = normal_certainty_total / num_normal;
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*unlikely_threshold = superscript_worse_certainty * (*avg_certainty);
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}
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if (num_normal == 0 ||
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(leading_outliers == 0 && trailing_outliers == 0)) {
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return;
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}
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// Step two: Try to split off bits of the word that are both outliers
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// and have much lower certainty than average
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// Calculate num_leading and leading_certainty.
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for (*leading_certainty = 0.0f, *num_rebuilt_leading = 0;
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*num_rebuilt_leading < leading_outliers;
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(*num_rebuilt_leading)++) {
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float char_certainty = word->best_choice->certainty(*num_rebuilt_leading);
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if (char_certainty > *unlikely_threshold) {
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break;
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}
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if (char_certainty < *leading_certainty) {
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*leading_certainty = char_certainty;
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}
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}
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// Calculate num_trailing and trailing_certainty.
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for (*trailing_certainty = 0.0f, *num_rebuilt_trailing = 0;
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*num_rebuilt_trailing < trailing_outliers;
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(*num_rebuilt_trailing)++) {
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int blob_idx = num_blobs - 1 - *num_rebuilt_trailing;
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float char_certainty = word->best_choice->certainty(blob_idx);
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if (char_certainty > *unlikely_threshold) {
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break;
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}
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if (char_certainty < *trailing_certainty) {
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*trailing_certainty = char_certainty;
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}
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}
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}
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/**
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* Try splitting off the given number of (chopped) blobs from the front and
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* back of the given word and recognizing the pieces.
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*
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* @param[in] num_chopped_leading how many chopped blobs from the left
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* end of the word to chop off and try recognizing as a
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* superscript (or subscript)
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* @param[in] leading_certainty the (minimum) certainty had by the
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* characters in the original leading section.
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* @param[in] leading_pos "super" or "sub" (for debugging)
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* @param[in] num_chopped_trailing how many chopped blobs from the right
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* end of the word to chop off and try recognizing as a
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* superscript (or subscript)
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* @param[in] trailing_certainty the (minimum) certainty had by the
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* characters in the original trailing section.
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* @param[in] trailing_pos "super" or "sub" (for debugging)
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* @param[in] word the word to try to chop up.
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* @param[out] is_good do we believe our result?
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* @param[out] retry_rebuild_leading, retry_rebuild_trailing
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* If non-zero, and !is_good, then the caller may have luck trying
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* to split the returned word with this number of (rebuilt) leading
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* and trailing blobs / unichars.
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* @return A word which is the result of re-recognizing as asked.
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*/
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WERD_RES *Tesseract::TrySuperscriptSplits(
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int num_chopped_leading, float leading_certainty, ScriptPos leading_pos,
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int num_chopped_trailing, float trailing_certainty,
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ScriptPos trailing_pos,
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WERD_RES *word,
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bool *is_good,
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int *retry_rebuild_leading, int *retry_rebuild_trailing) {
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int num_chopped = word->chopped_word->NumBlobs();
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*retry_rebuild_leading = *retry_rebuild_trailing = 0;
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// Chop apart the word into up to three pieces.
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BlamerBundle *bb0 = NULL;
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BlamerBundle *bb1 = NULL;
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WERD_RES *prefix = NULL;
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WERD_RES *core = NULL;
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WERD_RES *suffix = NULL;
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if (num_chopped_leading > 0) {
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prefix = new WERD_RES(*word);
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split_word(prefix, num_chopped_leading, &core, &bb0);
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} else {
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core = new WERD_RES(*word);
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}
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if (num_chopped_trailing > 0) {
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int split_pt = num_chopped - num_chopped_trailing - num_chopped_leading;
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split_word(core, split_pt, &suffix, &bb1);
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}
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// Recognize the pieces in turn.
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int saved_cp_multiplier = classify_class_pruner_multiplier;
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int saved_im_multiplier = classify_integer_matcher_multiplier;
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if (prefix) {
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// Turn off Tesseract's y-position penalties for the leading superscript.
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classify_class_pruner_multiplier.set_value(0);
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classify_integer_matcher_multiplier.set_value(0);
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// Adjust our expectations about the baseline for this prefix.
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if (superscript_debug >= 3) {
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tprintf(" recognizing first %d chopped blobs\n", num_chopped_leading);
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}
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recog_word_recursive(prefix);
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if (superscript_debug >= 2) {
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tprintf(" The leading bits look like %s %s\n",
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ScriptPosToString(leading_pos),
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prefix->best_choice->unichar_string().string());
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}
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// Restore the normal y-position penalties.
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classify_class_pruner_multiplier.set_value(saved_cp_multiplier);
|
|
classify_integer_matcher_multiplier.set_value(saved_im_multiplier);
|
|
}
|
|
|
|
if (superscript_debug >= 3) {
|
|
tprintf(" recognizing middle %d chopped blobs\n",
|
|
num_chopped - num_chopped_leading - num_chopped_trailing);
|
|
}
|
|
|
|
if (suffix) {
|
|
// Turn off Tesseract's y-position penalties for the trailing superscript.
|
|
classify_class_pruner_multiplier.set_value(0);
|
|
classify_integer_matcher_multiplier.set_value(0);
|
|
|
|
if (superscript_debug >= 3) {
|
|
tprintf(" recognizing last %d chopped blobs\n", num_chopped_trailing);
|
|
}
|
|
recog_word_recursive(suffix);
|
|
if (superscript_debug >= 2) {
|
|
tprintf(" The trailing bits look like %s %s\n",
|
|
ScriptPosToString(trailing_pos),
|
|
suffix->best_choice->unichar_string().string());
|
|
}
|
|
|
|
// Restore the normal y-position penalties.
|
|
classify_class_pruner_multiplier.set_value(saved_cp_multiplier);
|
|
classify_integer_matcher_multiplier.set_value(saved_im_multiplier);
|
|
}
|
|
|
|
// Evaluate whether we think the results are believably better
|
|
// than what we already had.
|
|
bool good_prefix = !prefix || BelievableSuperscript(
|
|
superscript_debug >= 1, *prefix,
|
|
superscript_bettered_certainty * leading_certainty,
|
|
retry_rebuild_leading, NULL);
|
|
bool good_suffix = !suffix || BelievableSuperscript(
|
|
superscript_debug >= 1, *suffix,
|
|
superscript_bettered_certainty * trailing_certainty,
|
|
NULL, retry_rebuild_trailing);
|
|
|
|
*is_good = good_prefix && good_suffix;
|
|
if (!*is_good && !*retry_rebuild_leading && !*retry_rebuild_trailing) {
|
|
// None of it is any good. Quit now.
|
|
delete core;
|
|
delete prefix;
|
|
delete suffix;
|
|
return NULL;
|
|
}
|
|
recog_word_recursive(core);
|
|
|
|
// Now paste the results together into core.
|
|
if (suffix) {
|
|
suffix->SetAllScriptPositions(trailing_pos);
|
|
join_words(core, suffix, bb1);
|
|
}
|
|
if (prefix) {
|
|
prefix->SetAllScriptPositions(leading_pos);
|
|
join_words(prefix, core, bb0);
|
|
core = prefix;
|
|
prefix = NULL;
|
|
}
|
|
|
|
if (superscript_debug >= 1) {
|
|
tprintf("%s superscript fix: %s\n", *is_good ? "ACCEPT" : "REJECT",
|
|
core->best_choice->unichar_string().string());
|
|
}
|
|
return core;
|
|
}
|
|
|
|
|
|
/**
|
|
* Return whether this is believable superscript or subscript text.
|
|
*
|
|
* We insist that:
|
|
* + there are no punctuation marks.
|
|
* + there are no italics.
|
|
* + no normal-sized character is smaller than superscript_scaledown_ratio
|
|
* of what it ought to be, and
|
|
* + each character is at least as certain as certainty_threshold.
|
|
*
|
|
* @param[in] debug If true, spew debug output
|
|
* @param[in] word The word whose best_choice we're evaluating
|
|
* @param[in] certainty_threshold If any of the characters have less
|
|
* certainty than this, reject.
|
|
* @param[out] left_ok How many left-side characters were ok?
|
|
* @param[out] right_ok How many right-side characters were ok?
|
|
* @return Whether the complete best choice is believable as a superscript.
|
|
*/
|
|
bool Tesseract::BelievableSuperscript(bool debug,
|
|
const WERD_RES &word,
|
|
float certainty_threshold,
|
|
int *left_ok,
|
|
int *right_ok) const {
|
|
int initial_ok_run_count = 0;
|
|
int ok_run_count = 0;
|
|
float worst_certainty = 0.0f;
|
|
const WERD_CHOICE &wc = *word.best_choice;
|
|
|
|
const UnicityTable<FontInfo>& fontinfo_table = get_fontinfo_table();
|
|
for (int i = 0; i < wc.length(); i++) {
|
|
TBLOB *blob = word.rebuild_word->blobs[i];
|
|
UNICHAR_ID unichar_id = wc.unichar_id(i);
|
|
float char_certainty = wc.certainty(i);
|
|
bool bad_certainty = char_certainty < certainty_threshold;
|
|
bool is_punc = wc.unicharset()->get_ispunctuation(unichar_id);
|
|
bool is_italic = word.fontinfo && word.fontinfo->is_italic();
|
|
BLOB_CHOICE *choice = word.GetBlobChoice(i);
|
|
if (choice && fontinfo_table.size() > 0) {
|
|
// Get better information from the specific choice, if available.
|
|
int font_id1 = choice->fontinfo_id();
|
|
bool font1_is_italic = font_id1 >= 0
|
|
? fontinfo_table.get(font_id1).is_italic() : false;
|
|
int font_id2 = choice->fontinfo_id2();
|
|
is_italic = font1_is_italic &&
|
|
(font_id2 < 0 || fontinfo_table.get(font_id2).is_italic());
|
|
}
|
|
|
|
float height_fraction = 1.0f;
|
|
float char_height = blob->bounding_box().height();
|
|
float normal_height = char_height;
|
|
if (wc.unicharset()->top_bottom_useful()) {
|
|
int min_bot, max_bot, min_top, max_top;
|
|
wc.unicharset()->get_top_bottom(unichar_id,
|
|
&min_bot, &max_bot,
|
|
&min_top, &max_top);
|
|
float hi_height = max_top - max_bot;
|
|
float lo_height = min_top - min_bot;
|
|
normal_height = (hi_height + lo_height) / 2;
|
|
if (normal_height >= kBlnXHeight) {
|
|
// Only ding characters that we have decent information for because
|
|
// they're supposed to be normal sized, not tiny specks or dashes.
|
|
height_fraction = char_height / normal_height;
|
|
}
|
|
}
|
|
bool bad_height = height_fraction < superscript_scaledown_ratio;
|
|
|
|
if (debug) {
|
|
if (is_italic) {
|
|
tprintf(" Rejecting: superscript is italic.\n");
|
|
}
|
|
if (is_punc) {
|
|
tprintf(" Rejecting: punctuation present.\n");
|
|
}
|
|
const char *char_str = wc.unicharset()->id_to_unichar(unichar_id);
|
|
if (bad_certainty) {
|
|
tprintf(" Rejecting: don't believe character %s with certainty %.2f "
|
|
"which is less than threshold %.2f\n", char_str,
|
|
char_certainty, certainty_threshold);
|
|
}
|
|
if (bad_height) {
|
|
tprintf(" Rejecting: character %s seems too small @ %.2f versus "
|
|
"expected %.2f\n", char_str, char_height, normal_height);
|
|
}
|
|
}
|
|
if (bad_certainty || bad_height || is_punc || is_italic) {
|
|
if (ok_run_count == i) {
|
|
initial_ok_run_count = ok_run_count;
|
|
}
|
|
ok_run_count = 0;
|
|
} else {
|
|
ok_run_count++;
|
|
}
|
|
if (char_certainty < worst_certainty) {
|
|
worst_certainty = char_certainty;
|
|
}
|
|
}
|
|
bool all_ok = ok_run_count == wc.length();
|
|
if (all_ok && debug) {
|
|
tprintf(" Accept: worst revised certainty is %.2f\n", worst_certainty);
|
|
}
|
|
if (!all_ok) {
|
|
if (left_ok) *left_ok = initial_ok_run_count;
|
|
if (right_ok) *right_ok = ok_run_count;
|
|
}
|
|
return all_ok;
|
|
}
|
|
|
|
|
|
} // namespace tesseract
|