mirror of https://github.com/davisking/dlib.git
Added some comments and cleaned up code slightly.
--HG-- extra : convert_revision : svn%3Afdd8eb12-d10e-0410-9acb-85c331704f74/trunk%403420
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@ -94,8 +94,9 @@ int main()
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m(0) = -1.5; m(1) = sinc(m(0))+0.9; cout << " " << test(m) << " is " << rs.scale(test(m)) << " standard deviations from sinc." << endl;
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m(0) = -0.5; m(1) = sinc(m(0))+1; cout << " " << test(m) << " is " << rs.scale(test(m)) << " standard deviations from sinc." << endl;
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// And finally print out the mean and standard deviation of points that are actually from sinc().
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cout << "\nmean: " << rs.mean() << endl;
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cout << "standard deviation: " << sqrt(rs.variance()) << endl;
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cout << "standard deviation: " << rs.stddev() << endl;
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// The output is as follows:
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/*
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@ -100,7 +100,9 @@ int main()
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// The radial_basis_kernel has a parameter called gamma that we need to set. Generally,
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// you should try the same gamma that you are using for training. But if you don't
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// have a particular gamma in mind then you can use the following function to
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// find a reasonable default gamma for your data.
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// find a reasonable default gamma for your data. Another reasonable way to pick a gamma
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// is often to use 1.0/compute_mean_squared_distance(samples). This second way has the
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// bonus of being quite fast.
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const double gamma = verbose_find_gamma_with_big_centroid_gap(samples, labels);
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// Next we declare an instance of the kcentroid object. It is used by rank_features()
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