mirror of https://github.com/davisking/dlib.git
129 lines
5.2 KiB
C++
129 lines
5.2 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 is an example illustrating the use of the deep learning tools from the
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dlib C++ Library. In it, we will show how to use the loss_metric layer to do
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metric learning.
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The main reason you might want to use this kind of algorithm is because you
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would like to use a k-nearest neighbor classifier or similar algorithm, but
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you don't know a good way to calculate the distance between two things. A
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popular example would be face recognition. There are a whole lot of papers
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that train some kind of deep metric learning algorithm that embeds face
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images in some vector space where images of the same person are close to each
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other and images of different people are far apart. Then in that vector
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space it's very easy to do face recognition with some kind of k-nearest
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neighbor classifier.
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To keep this example as simple as possible we won't do face recognition.
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Instead, we will create a very simple network and use it to learn a mapping
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from 8D vectors to 2D vectors such that vectors with the same class labels
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are near each other. If you want to see a more complex example that learns
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the kind of network you would use for something like face recognition read
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the dnn_metric_learning_on_images_ex.cpp example.
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You should also have read the examples that introduce the dlib DNN API before
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continuing. These are dnn_introduction_ex.cpp and dnn_introduction2_ex.cpp.
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*/
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#include <dlib/dnn.h>
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#include <iostream>
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using namespace std;
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using namespace dlib;
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int main() try
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{
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// The API for doing metric learning is very similar to the API for
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// multi-class classification. In fact, the inputs are the same, a bunch of
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// labeled objects. So here we create our dataset. We make up some simple
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// vectors and label them with the integers 1,2,3,4. The specific values of
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// the integer labels don't matter.
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std::vector<matrix<double,0,1>> samples;
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std::vector<unsigned long> labels;
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// class 1 training vectors
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samples.push_back({1,0,0,0,0,0,0,0}); labels.push_back(1);
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samples.push_back({0,1,0,0,0,0,0,0}); labels.push_back(1);
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// class 2 training vectors
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samples.push_back({0,0,1,0,0,0,0,0}); labels.push_back(2);
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samples.push_back({0,0,0,1,0,0,0,0}); labels.push_back(2);
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// class 3 training vectors
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samples.push_back({0,0,0,0,1,0,0,0}); labels.push_back(3);
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samples.push_back({0,0,0,0,0,1,0,0}); labels.push_back(3);
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// class 4 training vectors
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samples.push_back({0,0,0,0,0,0,1,0}); labels.push_back(4);
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samples.push_back({0,0,0,0,0,0,0,1}); labels.push_back(4);
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// Make a network that simply learns a linear mapping from 8D vectors to 2D
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// vectors.
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using net_type = loss_metric<fc<2,input<matrix<double,0,1>>>>;
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net_type net;
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dnn_trainer<net_type> trainer(net);
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trainer.set_learning_rate(0.1);
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// It should be emphasized out that it's really important that each mini-batch contain
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// multiple instances of each class of object. This is because the metric learning
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// algorithm needs to consider pairs of objects that should be close as well as pairs
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// of objects that should be far apart during each training step. Here we just keep
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// training on the same small batch so this constraint is trivially satisfied.
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while(trainer.get_learning_rate() >= 1e-4)
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trainer.train_one_step(samples, labels);
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// Wait for training threads to stop
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trainer.get_net();
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cout << "done training" << endl;
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// Run all the samples through the network to get their 2D vector embeddings.
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std::vector<matrix<float,0,1>> embedded = net(samples);
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// Print the embedding for each sample to the screen. If you look at the
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// outputs carefully you should notice that they are grouped together in 2D
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// space according to their label.
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for (size_t i = 0; i < embedded.size(); ++i)
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cout << "label: " << labels[i] << "\t" << trans(embedded[i]);
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// Now, check if the embedding puts things with the same labels near each other and
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// things with different labels far apart.
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int num_right = 0;
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int num_wrong = 0;
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for (size_t i = 0; i < embedded.size(); ++i)
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{
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for (size_t j = i+1; j < embedded.size(); ++j)
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{
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if (labels[i] == labels[j])
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{
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// The loss_metric layer will cause things with the same label to be less
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// than net.loss_details().get_distance_threshold() distance from each
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// other. So we can use that distance value as our testing threshold for
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// "being near to each other".
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if (length(embedded[i]-embedded[j]) < net.loss_details().get_distance_threshold())
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++num_right;
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else
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++num_wrong;
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}
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else
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{
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if (length(embedded[i]-embedded[j]) >= net.loss_details().get_distance_threshold())
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++num_right;
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else
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++num_wrong;
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}
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}
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}
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cout << "num_right: "<< num_right << endl;
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cout << "num_wrong: "<< num_wrong << endl;
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}
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catch(std::exception& e)
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{
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cout << e.what() << endl;
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}
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