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git-svn-id: https://tesseract-ocr.googlecode.com/svn/trunk@1015 d0cd1f9f-072b-0410-8dd7-cf729c803f20
228 lines
10 KiB
C++
228 lines
10 KiB
C++
// Copyright 2011 Google Inc. All Rights Reserved.
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// Author: rays@google.com (Ray Smith)
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//
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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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#ifndef THIRD_PARTY_TESSERACT_CLASSIFY_ERRORCOUNTER_H_
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#define THIRD_PARTY_TESSERACT_CLASSIFY_ERRORCOUNTER_H_
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#include "genericvector.h"
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#include "matrix.h"
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#include "statistc.h"
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struct Pix;
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template <typename T> class UnicityTable;
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namespace tesseract {
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struct FontInfo;
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class FontInfoTable;
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class SampleIterator;
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class ShapeClassifier;
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class TrainingSample;
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struct UnicharRating;
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// Enumeration of the different types of error count.
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// Error counts work as follows:
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//
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// Ground truth is a valid unichar-id / font-id pair:
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// Number of classifier answers?
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// 0 >0
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// CT_REJECT unichar-id matches top shape?
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// __________ yes! no
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// CT_UNICHAR_TOP_OK CT_UNICHAR_TOP1_ERR
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// Top shape-id has multiple unichars? 2nd shape unichar id matches?
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// yes! no yes! no
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// CT_OK_MULTI_UNICHAR | _____ CT_UNICHAR_TOP2_ERR
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// Font attributes match? Any unichar-id matches?
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// yes! no yes! no
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// CT_FONT_ATTR_OK CT_FONT_ATTR_ERR ______ CT_UNICHAR_TOPN_ERR
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// | __________________ _________________
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// Top shape-id has multiple font attrs?
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// yes! no
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// CT_OK_MULTI_FONT
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// _____________________________
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//
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// Note that multiple counts may be activated for a single sample!
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//
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// Ground truth is for a fragment/n-gram that is NOT in the unicharset.
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// This is called junk and is expected to be rejected:
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// Number of classifier answers?
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// 0 >0
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// CT_REJECTED_JUNK CT_ACCEPTED_JUNK
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//
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// Also, CT_NUM_RESULTS stores the mean number of results, and CT_RANK stores
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// the mean rank of the correct result, counting from 0, and with an error
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// receiving the number of answers as the correct rank.
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//
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// Keep in sync with the ReportString function.
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enum CountTypes {
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CT_UNICHAR_TOP_OK, // Top shape contains correct unichar id.
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// The rank of the results in TOP1, TOP2, TOPN is determined by a gap of
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// kRatingEpsilon from the first result in each group. The real top choice
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// is measured using TOPTOP.
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CT_UNICHAR_TOP1_ERR, // Top shape does not contain correct unichar id.
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CT_UNICHAR_TOP2_ERR, // Top 2 shapes don't contain correct unichar id.
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CT_UNICHAR_TOPN_ERR, // No output shape contains correct unichar id.
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CT_UNICHAR_TOPTOP_ERR, // Very top choice not correct.
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CT_OK_MULTI_UNICHAR, // Top shape id has correct unichar id, and others.
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CT_OK_JOINED, // Top shape id is correct but marked joined.
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CT_OK_BROKEN, // Top shape id is correct but marked broken.
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CT_REJECT, // Classifier hates this.
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CT_FONT_ATTR_ERR, // Top unichar OK, but font attributes incorrect.
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CT_OK_MULTI_FONT, // CT_FONT_ATTR_OK but there are multiple font attrs.
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CT_NUM_RESULTS, // Number of answers produced.
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CT_RANK, // Rank of correct answer.
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CT_REJECTED_JUNK, // Junk that was correctly rejected.
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CT_ACCEPTED_JUNK, // Junk that was incorrectly classified otherwise.
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CT_SIZE // Number of types for array sizing.
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};
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// Class to encapsulate all the functionality and sub-structures required
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// to count errors for an isolated character classifier (ShapeClassifier).
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class ErrorCounter {
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public:
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// Computes and returns the unweighted boosting_mode error rate of the given
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// classifier. Can be used for testing, or inside an iterative training
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// system, including one that uses boosting.
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// report_levels:
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// 0 = no output.
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// 1 = bottom-line error rate.
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// 2 = bottom-line error rate + time.
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// 3 = font-level error rate + time.
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// 4 = list of all errors + short classifier debug output on 16 errors.
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// 5 = list of all errors + short classifier debug output on 25 errors.
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// * The boosting_mode determines which error type is used for computing the
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// scaled_error output, and setting the is_error flag in the samples.
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// * The fontinfo_table is used to get string font names for the debug
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// output, and also to count font attributes errors.
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// * The page_images vector may contain a Pix* (which may be NULL) for each
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// page index assigned to the samples.
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// * The it provides encapsulated iteration over some sample set.
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// * The outputs unichar_error, scaled_error and totals_report are all
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// optional.
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// * If not NULL, unichar error gets the top1 unichar error rate.
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// * Scaled_error gets the error chosen by boosting_mode weighted by the
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// weights on the samples.
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// * Fonts_report gets a string summarizing the error rates for each font in
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// both human-readable form and as a tab-separated list of error counts.
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// The human-readable form is all before the first tab.
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// * The return value is the un-weighted version of the scaled_error.
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static double ComputeErrorRate(ShapeClassifier* classifier,
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int report_level, CountTypes boosting_mode,
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const FontInfoTable& fontinfo_table,
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const GenericVector<Pix*>& page_images,
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SampleIterator* it,
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double* unichar_error,
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double* scaled_error,
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STRING* fonts_report);
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// Tests a pair of classifiers, debugging errors of the new against the old.
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// See errorcounter.h for description of arguments.
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// Iterates over the samples, calling the classifiers in normal/silent mode.
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// If the new_classifier makes a boosting_mode error that the old_classifier
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// does not, and the appropriate, it will then call the new_classifier again
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// with a debug flag and a keep_this argument to find out what is going on.
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static void DebugNewErrors(ShapeClassifier* new_classifier,
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ShapeClassifier* old_classifier,
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CountTypes boosting_mode,
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const FontInfoTable& fontinfo_table,
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const GenericVector<Pix*>& page_images,
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SampleIterator* it);
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private:
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// Simple struct to hold an array of counts.
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struct Counts {
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Counts();
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// Adds other into this for computing totals.
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void operator+=(const Counts& other);
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int n[CT_SIZE];
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};
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// Constructor is private. Only anticipated use of ErrorCounter is via
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// the static ComputeErrorRate.
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ErrorCounter(const UNICHARSET& unicharset, int fontsize);
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~ErrorCounter();
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// Accumulates the errors from the classifier results on a single sample.
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// Returns true if debug is true and a CT_UNICHAR_TOPN_ERR error occurred.
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// boosting_mode selects the type of error to be used for boosting and the
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// is_error_ member of sample is set according to whether the required type
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// of error occurred. The font_table provides access to font properties
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// for error counting and shape_table is used to understand the relationship
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// between unichar_ids and shape_ids in the results
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bool AccumulateErrors(bool debug, CountTypes boosting_mode,
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const FontInfoTable& font_table,
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const GenericVector<UnicharRating>& results,
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TrainingSample* sample);
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// Accumulates counts for junk. Counts only whether the junk was correctly
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// rejected or not.
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bool AccumulateJunk(bool debug, const GenericVector<UnicharRating>& results,
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TrainingSample* sample);
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// Creates a report of the error rate. The report_level controls the detail
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// that is reported to stderr via tprintf:
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// 0 -> no output.
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// >=1 -> bottom-line error rate.
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// >=3 -> font-level error rate.
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// boosting_mode determines the return value. It selects which (un-weighted)
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// error rate to return.
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// The fontinfo_table from MasterTrainer provides the names of fonts.
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// The it determines the current subset of the training samples.
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// If not NULL, the top-choice unichar error rate is saved in unichar_error.
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// If not NULL, the report string is saved in fonts_report.
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// (Ignoring report_level).
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double ReportErrors(int report_level, CountTypes boosting_mode,
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const FontInfoTable& fontinfo_table,
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const SampleIterator& it,
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double* unichar_error,
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STRING* fonts_report);
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// Sets the report string to a combined human and machine-readable report
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// string of the error rates.
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// Returns false if there is no data, leaving report unchanged, unless
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// even_if_empty is true.
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static bool ReportString(bool even_if_empty, const Counts& counts,
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STRING* report);
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// Computes the error rates and returns in rates which is an array of size
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// CT_SIZE. Returns false if there is no data, leaving rates unchanged.
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static bool ComputeRates(const Counts& counts, double rates[CT_SIZE]);
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// Total scaled error used by boosting algorithms.
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double scaled_error_;
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// Difference in result rating to be thought of as an "equal" choice.
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double rating_epsilon_;
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// Vector indexed by font_id from the samples of error accumulators.
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GenericVector<Counts> font_counts_;
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// Counts of the results that map each unichar_id (from samples) to an
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// incorrect shape_id.
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GENERIC_2D_ARRAY<int> unichar_counts_;
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// Count of the number of times each shape_id occurs, is correct, and multi-
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// unichar.
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GenericVector<int> multi_unichar_counts_;
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// Histogram of scores (as percent) for correct answers.
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STATS ok_score_hist_;
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// Histogram of scores (as percent) for incorrect answers.
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STATS bad_score_hist_;
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// Unicharset for printing character ids in results.
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const UNICHARSET& unicharset_;
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};
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} // namespace tesseract.
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#endif /* THIRD_PARTY_TESSERACT_CLASSIFY_ERRORCOUNTER_H_ */
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