Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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 (http://hogprocessing.altervista.org/) 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

share|improve this question

1 Answer 1

up vote 26 down vote accepted

you can use hog class in opencv as follows

HOGDescriptor hog;
vector<float> ders;
vector<Point>locs;

//This function computes the hog features for you

hog.compute(grayImg,ders,Size(32,32),Size(0,0),locs);

//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

Hogfeat.create(ders.size(),1,CV_32FC1);

for(int i=0;i<ders.size();i++)
{
  Hogfeat.at<float>(i,0)=ders.at(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:

hog.blockSize=16;
hog.cellSize=4;
hog.blockStride=8;

//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(Hogfeat.at<float>(i,0) - Hogfeat.at<float>(i,0));
}
if(distance < Threshold)
cout<<"Two images are of same class"<<endl;
else
cout<<"Two images are of different class"<<endl;

Hope it is useful :)

share|improve this answer
    
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
    
@sistu: can you post any example code for matching 2 HOG on 2 images without using SVM? Thanks a lot –  dynamic Jul 28 '12 at 11:24
    
I am investing the use of HOGDescriptor.Detect(); but i can't find any information nor examples –  dynamic Jul 28 '12 at 13:30
    
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

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.