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http://dx.doi.org/10.5573/ieie.2015.52.1.102

Adaptive Matching Method of Rigid and Deformable Object Image using Statistical Analysis of Matching-pairs  

Won, In-Su (Dept. of Electronic Engineering, Inha University)
Yang, Hun-Jun (Dept. of Electronic Engineering, Inha University)
Jang, Hyeok (Dept. of Electronic Engineering, Inha University)
Jeong, Dong-Seok (Dept. of Electronic Engineering, Inha University)
Publication Information
Journal of the Institute of Electronics and Information Engineers / v.52, no.1, 2015 , pp. 102-110 More about this Journal
Abstract
In this paper, adaptive matching method using the same features for rigid and deformable object images is proposed. Firstly, we determine whether the two images are matched or not using the geometric verification and generate the matching information. Decision boundary which separates deformable matching-pair from non-matching pair is obtained through statistical analysis of matching information. The experimental result shows that the proposed method lowers the computational complexity and increases the matching accuracy compared to the existing method.
Keywords
Rigid image matching; Deformable image matching; Statistic approach;
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