Object Detection with Freak (Hamming)
Hi, I am using FAST and FREAK to get the descriptors of a couple of images and then I apply knnMatch with a cv::BFMatcher matcher(cv::NORM_HAMMING); and next I am using a loop to separate the good matches:
float nndrRatio = 0.7f;
std::vector<KeyPoint> keypointsA, keypointsB;
Mat descriptorsA, descriptorsB;
std::vector< vector< DMatch > > matches;
int threshold=9;
// detect keypoints:
FAST(objectMat,keypointsA,threshold,true);
FAST(sceneMat,keypointsB,threshold,true);
FREAK extractor;
// extract descriptors:
extractor.compute( objectMat, keypointsA, descriptorsA );
extractor.compute( sceneMat, keypointsB, descriptorsB );
cv::BFMatcher matcher(cv::NORM_HAMMING);
// match
matcher.knnMatch(descriptorsA, descriptorsB, matches, 2);
// good matches search:
vector< DMatch > good_matches;
for (size_t i = 0; i < matches.size(); ++i)
{
if (matches[i].size() < 2)
continue;
const DMatch &m1 = matches[i][0];
const DMatch &m2 = matches[i][1];
if(m1.distance <= nndrRatio * m2.distance)
good_matches.push_back(m1);
}
//If there are at least 7 good matches, then object has been found
if ( (good_matches.size() >=7))
{
cout << "OBJECT FOUND!" << endl;
}
I think the problem could be the good matches search method, because using it with the FlannBasedMatcher works fine but with the BruteForceMatcher very weirdly. I'm suspecting that I may be doing a nonsense with these method because Hamming distance uses binary descriptors, but I can't think of a way to adapt it!
Any links, snippets, ideas,... please?
you didn't say which is exactly the problem, we can't help
My problem is, basically, that I don't know how to use the matches that returns the knnMatch to detect when the object of the image1 is inside the image2 and when isn't.