2023
DOI: 10.3390/math11051154
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Local Property of Depth Information in 3D Images and Its Application in Feature Matching

Abstract: In image registration or image matching, the feature extracted by using the traditional methods does not include the depth information which may lead to a mismatch of keypoints. In this paper, we prove that when the camera moves, the ratio of the depth difference of a keypoint and its neighbor pixel before and after the camera movement approximates a constant. That means the depth difference of a keypoint and its neighbor pixel after normalization is invariant to the camera movement. Based on this property, al… Show more

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Cited by 2 publications
(1 citation statement)
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“…These methods improved the accuracy of the data and produced data that were more representative of the real dermal porosity and pore diameter. The SIFT algorithm, recognized as an excellent feature alignment operator, can be harnessed to address these challenges ( Li et al, 2015 ; Erbing et al, 2023 ; Meng et al, 2023 ). Key parameters for evaluating image alignment efficacy include mean square error, mutual information, and structural similarity score.…”
Section: Discussionmentioning
confidence: 99%
“…These methods improved the accuracy of the data and produced data that were more representative of the real dermal porosity and pore diameter. The SIFT algorithm, recognized as an excellent feature alignment operator, can be harnessed to address these challenges ( Li et al, 2015 ; Erbing et al, 2023 ; Meng et al, 2023 ). Key parameters for evaluating image alignment efficacy include mean square error, mutual information, and structural similarity score.…”
Section: Discussionmentioning
confidence: 99%