7

Since version 3.0, DenseFeatureDetector is no longer available. Could anybody please show me how to compute Dense SIFT features in OpenCV 3.0? I couldn't find it in the documentation.

Thank you very much in advance!

  • You mean something like DAISY features? It's in opencv 3.0 but in external contrib package. You have to compile it yourself – DawidPi Oct 14 '15 at 9:03
  • @DawidPi: I have opencv_contrib installed and included xfeature2d into the project, but still couldn't find anything like DenseFeatureDetector. Dense SIFT is simply SIFT features computed on a grid at different scale. – Khue Oct 14 '15 at 9:09
  • Implementation of DenseFeatureDetector detectImpl was like this. I guess you can do this on your own, but I guess I cannot help you more as I am no mathematician nor CV expert. github.com/Itseez/opencv/blob/2.4/modules/features2d/src/… – DawidPi Oct 14 '15 at 9:15
  • Thanks @DawidPi. I did a search for "Dense" in the opencv_contrib as well as in /features2d but looks like the function has been dropped. Looks like I have to implement it myself as you suggest. – Khue Oct 14 '15 at 9:40
  • DenseFeatureDetector was remved in OpenCV 3.0 answers.opencv.org/question/61225/dense-features-in-opencv-3 – Miki Oct 14 '15 at 12:59
5

Here's how I used dense SIFT in OpenCV 3 C++:

SiftDescriptorExtractor sift;

vector<KeyPoint> keypoints; // keypoint storage
Mat descriptors; // descriptor storage

// manual keypoint grid

int step = 10; // 10 pixels spacing between kp's

for (int y=step; y<img.rows-step; y+=step){
    for (int x=step; x<img.cols-step; x+=step){

        // x,y,radius
        keypoints.push_back(KeyPoint(float(x), float(y), float(step)));
    }
}

// compute descriptors

sift.compute(img, keypoints, descriptors);

copied from: http://answers.opencv.org/question/73165/compute-dense-sift-features-in-opencv-30/?answer=73178#post-id-73178

seems to work well

| improve this answer | |
  • If I want to extract features from several images... Should I resize all images to a common size first? – RHV UFC Oct 27 '16 at 18:04
  • Thanks a lot. (And sorry for the delay) – Khue Oct 10 '17 at 8:49
12

You can pass a list of cv2.KeyPoints to sift.compute. This example is in Python, but it shows the principle. I create a list of cv2.KeyPoints by scanning through the pixel locations of the image:

import skimage.data as skid
import cv2
import pylab as plt

img = skid.lena()
gray= cv2.cvtColor(img ,cv2.COLOR_BGR2GRAY)

sift = cv2.xfeatures2d.SIFT_create()

step_size = 5
kp = [cv2.KeyPoint(x, y, step_size) for y in range(0, gray.shape[0], step_size) 
                                    for x in range(0, gray.shape[1], step_size)]

img=cv2.drawKeypoints(gray,kp, img)

plt.figure(figsize=(20,10))
plt.imshow(img)
plt.show()

dense_feat = sift.compute(gray, kp)
| improve this answer | |
  • Hi, do you know how to apply contrast threshold in this case? I tried to add contrastThreshold parameter in SIFT_create() but it was ignored. – pomxipum Feb 13 '17 at 9:19
  • I am not 100% sure, but it looks like as you would have to implement it yourself. The answer is complicated enough to post it as a separate question. However, the contrast seems to be calculated here github.com/opencv/opencv_contrib/blob/… – P.R. Feb 13 '17 at 17:39

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