Build model detection after features extraction

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Hello,
I'm trying to code a nose detection function from a IR video.
I extracted 2 frames from the video and foud the features and compared between them.
ref_img = imread('frame_1.png');
ref_img_gray=rgb2gray(ref_img);
ref_pts=detectSURFFeatures(ref_img_gray);
[ref_features,ref_validPts]=extractFeatures(ref_img_gray,ref_pts);
figure; imshow(ref_img);
hold on; plot(ref_pts.selectStrongest(50));
image=imread('frame_50.png');
I=rgb2gray(image);
I_pts=detectSURFFeatures(I);
[I_features,I_validPts]=extractFeatures(I,I_pts);
figure;imshow(image);
hold on; plot(I_pts.selectStrongest(50));
index_pairs=matchFeatures(ref_features,I_features);
ref_matched_pts=ref_validPts(index_pairs(:,1)).Location;
I_matched_pts=I_validPts(index_pairs(:,2)).Location;
close all
figure,showMatchedFeatures(image,ref_img,I_matched_pts,ref_matched_pts);
Here the figure obtained :
What I have to do as a next step ? We can see from the figure that we got the 2 nostrils as features, so how to train a model a got a function that tracks the region for all the frames ?
thank you

Accepted Answer

Manas Meena
Manas Meena on 13 May 2021
After SURF feature detection you can select the strongest points of interest (eg. nostrils) and the use the vision.PointTracker function to track these selected points in the video.

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