Revision of Using Eigenvalues of Covariance Matrices in Boundary-Based Corner Detection
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概要
- 論文の詳細を見る
In this paper, we present a revision of using eigenvalues of covariance matrices proposed by Tsai et al. as a measure of significance (i.e., curvature) for boundary-based corner detection. We first show the pitfall of Tsai et al.s approach. We then further investigate the properties of eigenvalues of covariance matrices of three different types of curves and point out a mistake made by Tsai et al.s method. Finally, we propose a modification of using eigenvalues as a measure of significance for corner detection to remedy their defect. The experiment results show that under the same conditions of the test patterns, in addition to correctly detecting all true corners, the spurious corners detected by Tsai et al.s method disappear in our modified measure of significance.
- (社)電子情報通信学会の論文
- 2009-09-01
著者
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Chen Chun‐wen
Department Of Computer Science And Information Engineering Tamkang University
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Chen Chun-wen
Department Of Computer Science And Information Engineering Tamkang University
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HORNG Wen-Bing
Department of Computer Science and Information Engineering, Tamkang University
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Horng Wen‐bing
Department Of Computer Science And Information Engineering Tamkang University
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Horng Wen-bing
Department Of Computer Science And Information Engineering Tamkang University
関連論文
- Optimizing Region of Support for Boundary-Based Corner Detection : A Statistic Approach
- Revision of Using Eigenvalues of Covariance Matrices in Boundary-Based Corner Detection