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I am trying to extract features using OpenCV's HoG API, however I can't seem to find the API that allow me to do that.

What I am trying to do is to extract features using HoG from all my dataset (a set number of positive and negative images), then train my own SVM.

I peeked into HoG.cpp under OpenCV, and it didn't help. All the codes are buried within complexities and the need to cater for different hardwares (e.g. Intel's IPP)

My question is:

  1. Is there any API from OpenCV that I can use to extract all those features / descriptors to be fed into a SVM ? If there's how can I use it to train my own SVM ?
  2. If there isn't, are there any existing libraries out there, which could accomplish the same thing ?

So far, I am actually porting an existing library ( from Processing (Java) to C++, but it's still very slow, with detection taking around at least 16 seconds

Has anyone else successfully to extract HoG features, how did you go around it ? And do you have any open source codes which I could use ?

Thanks in advance

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I think this page could help you: – SomethingSomething Jan 7 at 22:16
up vote 38 down vote accepted

you can use hog class in opencv as follows

HOGDescriptor hog;
vector<float> ders;

//This function computes the hog features for you


//The HOG features computed for grayImg are stored in ders vector to make it into a matrix which can be used for training later use the following for loop


for(int i=0;i<ders.size();i++)


//Now your HOG features are stored in Hogfeat matrix

you can also set the window size, cell size and block size by using object hog as follows:


//This is for comparing the HOG features of two images without using any SVM 
//(It is not an efficient way but useful when you want to compare only few or two images)
//Simple distance
//Consider you have two hog feature vectors for two images Hogfeat1 and Hogfeat2 and those are same size.
double distance=0;
for(int i=0;i<Hogfeat.rows;i++)
   distance+ = abs(<float>(i,0) -<float>(i,0));
if(distance < Threshold)
cout<<"Two images are of same class"<<endl;
cout<<"Two images are of different class"<<endl;

Hope it is useful :)

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currently I can't test it out, because XCode 4.4 somehow crippled most of the installed libraries. I'll inform you later when I managed to solve that issue – sub_o Jul 26 '12 at 8:54
U can use simple Euclidean distance as a matcher....I edited the answer see the same answer above :) – G453 Aug 1 '12 at 6:49
@Sistu Thanks, I can finally extract the features, but I'd still need to feed into my own SVM. – sub_o Aug 7 '12 at 5:35
I am using OpenCV 2.3.1, but I don't have HOGDescriptor::compute() in this version. Which OpenCV version did you use in this answer? – Yamaneko Jan 6 '13 at 20:02
Sorry, just found out that it also works in OpenCV 2.3.1. I was using cv::gpu::HOGDescriptor instead of cv::HOGDescriptor. Thanks! – Yamaneko Jan 6 '13 at 20:06

I also wrote the program of 2 hog feature comparing with the help of the above article. And I apply this method to check ROI region changing or not. Please refer to the page here. source code and simple introduction

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Only the link can't be accepted as answer, describe the needed part of the link in your answer. – Thirumalai murugan Feb 27 '15 at 4:42

Here is GPU version as well.

cv::Mat temp;
gpu::GpuMat gpu_img, descriptors;

cv::gpu::HOGDescriptor gpu_hog(win_size, Size(16, 16), Size(8, 8), Size(8, 8), 9,
                               cv::gpu::HOGDescriptor::DEFAULT_WIN_SIGMA, 0.2, gamma_corr,
gpu_hog.getDescriptors(gpu_img, win_stride, descriptors, cv::gpu::HOGDescriptor::DESCR_FORMAT_ROW_BY_ROW);
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