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Updated example program to work best with the new code
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@ -173,9 +173,14 @@ int main()
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// The hashed_feature_image in the scanner needs to be supplied with a hash function capable
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// of hashing the outputs of the hog_image. Calling this function will set it up for us. The
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// 10 here indicates that it will hash hog vectors into the range [0, pow(2,10)). Therefore,
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// 10 here indicates that it will hash HOG vectors into the range [0, pow(2,10)). Therefore,
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// the feature vectors output by the hashed_feature_image will have dimension pow(2,10).
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setup_hashed_features(scanner, images, 10);
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// We should also tell the scanner to use the uniform feature weighting scheme
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// since it works best on the data in this example. If you don't call this
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// function then it will use a slightly different weighting scheme which can give
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// improved results on many normal image types.
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use_uniform_feature_weights(scanner);
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// We also need to setup the detection templates the scanner will use. It is important that
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// we add detection templates which are capable of matching all the output boxes we want to learn.
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