change HOG cell size in trainCascadeObjectDetector
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I am using trainCascadeObjectDetector to train a detector for small objects so the default HOG features with 8x8 cell size is too big, is there any way to use 4x4 or 2x2 cell size for underlying HOG feature? thanks,
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Dima Lisin
le 29 Juin 2014
Modifié(e) : Dima Lisin
le 29 Juin 2014
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Unfortunately, there is currently no way to do this. Is there any possibility for you to get higher resolution images? Or will there be enough detail if you up-sample the images?
Another possible alternative is to use the extractHOGFeatures function to compute the HOG features yourself. Then you could train a classifier (e. g. SVM) using the Statistics Toolbox. Take a look at this example of digit classification using HOG and SVM.
Another thought: a 2x2 cell seems really small for computing a 9-bin histogram. Training a HOG-SVM classifier for your objects might tell you whether it is feasible to detect them at all.
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Alan
le 30 Juin 2014
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