GMM-IKRS: Gaussian Mixture Models for Interpretable Keypoint Refinement and Scoring
The extraction of keypoints in images is at the basis of many computer vision applications, from localization to 3D reconstruction. Keypoints come with a score permitting to rank them according to their quality. While learned keypoints often exhibit better properties than handcrafted ones, their sco...
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Zusammenfassung: | The extraction of keypoints in images is at the basis of many computer vision
applications, from localization to 3D reconstruction. Keypoints come with a
score permitting to rank them according to their quality. While learned
keypoints often exhibit better properties than handcrafted ones, their scores
are not easily interpretable, making it virtually impossible to compare the
quality of individual keypoints across methods. We propose a framework that can
refine, and at the same time characterize with an interpretable score, the
keypoints extracted by any method. Our approach leverages a modified robust
Gaussian Mixture Model fit designed to both reject non-robust keypoints and
refine the remaining ones. Our score comprises two components: one relates to
the probability of extracting the same keypoint in an image captured from
another viewpoint, the other relates to the localization accuracy of the
keypoint. These two interpretable components permit a comparison of individual
keypoints extracted across different methods. Through extensive experiments we
demonstrate that, when applied to popular keypoint detectors, our framework
consistently improves the repeatability of keypoints as well as their
performance in homography and two/multiple-view pose recovery tasks. |
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DOI: | 10.48550/arxiv.2408.17149 |