I'm trying to get started working with sift feature extraction using (C++) OpenCv. I need to extract features using SIFT, match them between the original image (e.g. a book) and a scene, and after that calculate the camera pose.

So far I have found this algorithm using SURF. Does anyone know a base code from which I can get started, or maybe a way to convert the algorithm in the link from SURF to SIFT?

Thanks in advance.

EDIT: Ok, I worked out a solution for the sift problem. Now I'm trying to figure the camera pose. I'm trying to use: solvePnP, can anyone help me with an example?


Check out the feature2d tutorial section of the new OpenCV docs website. There tutorials with code showing:

  1. Feature detection with e.g. SURF
  2. Feature Description
  3. Feature Matching
  • Thanks, but this examples are for SURF. I need SIFT, or someway to convert a algorithm from SURF to SIFT. – Filipe Jul 7 '12 at 20:07

If you have managed to find matches between the image and the scene, then I suggest you apply cv::findHomography(). It will calculate the homography matrix using 4 matches as input.

You can convert to camera pose from the homography matrix directly.


For using SIFT instead of SURF, I changed SurfFeatureDetector to SiftFeatureDetector and SurfDescriptorExtractor to SiftDescriptorExtractor. For some images, I found that the combination SURF detector <--> SIFT descriptor yields relatively accurate results, but you should experiment with other combinations (FAST detector - FREAK descriptor or ORB detector - BRISK descriptor), depending on your requirements.

Please follow this tutorial for solving the homography part of your question: Feature Matching and Homography

Also, maybe this will help: Pose Estimation

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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