A Probabilistic Criterion to Detect Rigid Point Matches Between Two Images and Estimate the Fundamental Matrix

被引:0
作者
Lionel Moisan
Bérenger Stival
机构
[1] Ecole Normale Supérieure de Cachan,CMLA
来源
International Journal of Computer Vision | 2004年 / 57卷
关键词
stereovision; point matches; structure from motion; rigidity detection; fundamental matrix; meaningful event;
D O I
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中图分类号
学科分类号
摘要
The perspective projections of n physical points on two views (stereovision) are constrained as soon as n ≥ 8. However, to prove in practice the existence of a rigid motion between two images, more than 8 point matches are desirable in order to compensate for the limited accuracy of the matches. In this paper, we propose a computational definition of rigidity and a probabilistic criterion to rate the meaningfulness of a rigid set as a function of both the number of pairs of points (n) and the accuracy of the matches. This criterion yields an objective way to compare, say, precise matches of a few points and approximate matches of a lot of points. It gives a yes/no answer to the question: “could this rigid points correspondence have occurred by chance?”, since it guarantees that the expected number of meaningful rigid sets found by chance in a random distribution of points is as small as desired.It also yields absolute accuracy requirements for rigidity detection in the case of non-matched points, and optimal values of n, depending on the expected accuracy of the matches and on the proportion of outliers. We use it to build an optimized random sampling algorithm that is able to detect a rigid motion and estimate the fundamental matrix when the set of point matches contains up to 90% of outliers, which outperforms the best currently known methods like M-estimators, LMedS, classical RANSAC and Tensor Voting.
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页码:201 / 218
页数:17
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