mirror of https://github.com/davisking/dlib.git
242 lines
9.9 KiB
C++
242 lines
9.9 KiB
C++
// The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt
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/*
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This example shows how to use dlib to learn to do sequence segmentation. In a sequence
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segmentation task we are given a sequence of objects (e.g. words in a sentence) and we
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are supposed to detect certain subsequences (e.g. the names of people). Therefore, in
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the code below we create some very simple training sequences and use them to learn a
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sequence segmentation model. In particular, our sequences will be sentences
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represented as arrays of words and our task will be to learn to identify person names.
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Once we have our segmentation model we can use it to find names in new sentences, as we
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will show.
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*/
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#include <iostream>
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#include <cctype>
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#include <dlib/svm_threaded.h>
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#include <dlib/string.h>
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using namespace std;
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using namespace dlib;
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// ----------------------------------------------------------------------------------------
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class feature_extractor
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{
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/*
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The sequence segmentation models we work with in this example are chain structured
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conditional random field style models. Therefore, central to a sequence
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segmentation model is a feature extractor object. This object defines all the
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properties of the model such as how many features it will use, and more importantly,
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how they are calculated.
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*/
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public:
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// This should be the type used to represent an input sequence. It can be
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// anything so long as it has a .size() which returns the length of the sequence.
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typedef std::vector<std::string> sequence_type;
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// The next four lines define high-level properties of the feature extraction model.
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// See the documentation for the sequence_labeler object for an extended discussion of
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// how they are used (note that the main body of the documentation is at the top of the
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// file documenting the sequence_labeler).
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const static bool use_BIO_model = true;
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const static bool use_high_order_features = true;
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const static bool allow_negative_weights = true;
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unsigned long window_size() const { return 3; }
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// This function defines the dimensionality of the vectors output by the get_features()
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// function defined below.
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unsigned long num_features() const { return 1; }
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template <typename feature_setter>
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void get_features (
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feature_setter& set_feature,
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const sequence_type& sentence,
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unsigned long position
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) const
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/*!
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requires
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- position < sentence.size()
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- set_feature is a function object which allows expressions of the form:
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- set_features((unsigned long)feature_index, (double)feature_value);
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- set_features((unsigned long)feature_index);
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ensures
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- This function computes a feature vector which should capture the properties
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of sentence[position] that are informative relative to the sequence
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segmentation task you are trying to perform.
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- The output feature vector is returned as a sparse vector by invoking set_feature().
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For example, to set the feature with an index of 55 to the value of 1
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this method would call:
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set_feature(55);
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Or equivalently:
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set_feature(55,1);
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Therefore, the first argument to set_feature is the index of the feature
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to be set while the second argument is the value the feature should take.
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Additionally, note that calling set_feature() multiple times with the
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same feature index does NOT overwrite the old value, it adds to the
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previous value. For example, if you call set_feature(55) 3 times then it
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will result in feature 55 having a value of 3.
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- This function only calls set_feature() with feature_index values < num_features()
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!*/
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{
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// The model in this example program is very simple. Our features only look at the
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// capitalization pattern of the words. So we have a single feature which checks
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// if the first letter is capitalized or not.
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if (isupper(sentence[position][0]))
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set_feature(0);
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}
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};
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// We need to define serialize() and deserialize() for our feature extractor if we want
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// to be able to serialize and deserialize our learned models. In this case the
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// implementation is empty since our feature_extractor doesn't have any state. But you
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// might define more complex feature extractors which have state that needs to be saved.
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void serialize(const feature_extractor&, std::ostream&) {}
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void deserialize(feature_extractor&, std::istream&) {}
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// ----------------------------------------------------------------------------------------
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void make_training_examples (
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std::vector<std::vector<std::string> >& samples,
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std::vector<std::vector<std::pair<unsigned long, unsigned long> > >& segments
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)
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/*!
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ensures
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- This function fills samples with example sentences and segments with the
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locations of person names that should be segmented out.
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- #samples.size() == #segments.size()
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!*/
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{
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std::vector<std::pair<unsigned long, unsigned long> > names;
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// Here we make our first training example. split() turns the string into an array of
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// 10 words and then we store that into samples.
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samples.push_back(split("The other day I saw a man named Jim Smith"));
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// We want to detect person names. So we note that the name is located within the
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// range [8, 10). Note that we use half open ranges to identify segments. So in this
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// case, the segment identifies the string "Jim Smith".
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names.push_back(make_pair(8, 10));
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segments.push_back(names); names.clear();
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// Now we add a few more example sentences
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samples.push_back(split("Davis King is the main author of the dlib Library"));
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names.push_back(make_pair(0, 2));
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segments.push_back(names); names.clear();
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samples.push_back(split("Bob Jones is a name and so is George Clinton"));
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names.push_back(make_pair(0, 2));
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names.push_back(make_pair(8, 10));
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segments.push_back(names); names.clear();
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samples.push_back(split("My dog is named Bob Barker"));
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names.push_back(make_pair(4, 6));
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segments.push_back(names); names.clear();
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samples.push_back(split("ABC is an acronym but John James Smith is a name"));
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names.push_back(make_pair(5, 8));
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segments.push_back(names); names.clear();
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samples.push_back(split("No names in this sentence at all"));
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segments.push_back(names); names.clear();
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}
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// ----------------------------------------------------------------------------------------
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void print_segment (
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const std::vector<std::string>& sentence,
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const std::pair<unsigned long,unsigned long>& segment
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)
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{
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// Recall that a segment is a half open range starting with .first and ending just
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// before .second.
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for (unsigned long i = segment.first; i < segment.second; ++i)
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cout << sentence[i] << " ";
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cout << endl;
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}
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// ----------------------------------------------------------------------------------------
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int main()
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{
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// Finally we make it into the main program body. So the first thing we do is get our
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// training data.
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std::vector<std::vector<std::string> > samples;
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std::vector<std::vector<std::pair<unsigned long, unsigned long> > > segments;
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make_training_examples(samples, segments);
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// Next we use the structural_sequence_segmentation_trainer to learn our segmentation
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// model based on just the samples and segments. But first we setup some of its
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// parameters.
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structural_sequence_segmentation_trainer<feature_extractor> trainer;
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// This is the common SVM C parameter. Larger values encourage the trainer to attempt
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// to fit the data exactly but might overfit. In general, you determine this parameter
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// by cross-validation.
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trainer.set_c(10);
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// This trainer can use multiple CPU cores to speed up the training. So set this to
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// the number of available CPU cores.
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trainer.set_num_threads(4);
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// Learn to do sequence segmentation from the dataset
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sequence_segmenter<feature_extractor> segmenter = trainer.train(samples, segments);
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// Lets print out all the segments our segmenter detects.
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for (unsigned long i = 0; i < samples.size(); ++i)
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{
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// get all the detected segments in samples[i]
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std::vector<std::pair<unsigned long,unsigned long> > seg = segmenter(samples[i]);
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// Print each of them
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for (unsigned long j = 0; j < seg.size(); ++j)
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{
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print_segment(samples[i], seg[j]);
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}
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}
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// Now lets test it on a new sentence and see what it detects.
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std::vector<std::string> sentence(split("There once was a man from Nantucket whose name rhymed with Bob Bucket"));
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std::vector<std::pair<unsigned long,unsigned long> > seg = segmenter(sentence);
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for (unsigned long j = 0; j < seg.size(); ++j)
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{
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print_segment(sentence, seg[j]);
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}
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// We can also test the accuracy of the segmenter on a dataset. This statement simply
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// tests on the training data. In this case we will see that it predicts everything
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// correctly.
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cout << "\nprecision, recall, f1-score: " << test_sequence_segmenter(segmenter, samples, segments);
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// Similarly, we can do 5-fold cross-validation and print the results. Just as before,
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// we see everything is predicted correctly.
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cout << "precision, recall, f1-score: " << cross_validate_sequence_segmenter(trainer, samples, segments, 5);
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// Finally, the segmenter can be serialized to disk just like most dlib objects.
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ofstream fout("segmenter.dat", ios::binary);
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serialize(segmenter, fout);
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fout.close();
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// recall from disk
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ifstream fin("segmenter.dat", ios::binary);
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deserialize(segmenter, fin);
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}
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// ----------------------------------------------------------------------------------------
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