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Fast image matching algorithm based on affine invariants

Fast image matching algorithm based on affine invariants
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摘要 Feature-based image matching algorithms play an indispensable role in automatic target recognition (ATR). In this work, a fast image matching algorithm (FIMA) is proposed which utilizes the geometry feature of extended centroid (EC) to build affine invariants. Based on at-fine invariants of the length ratio of two parallel line segments, FIMA overcomes the invalidation problem of the state-of-the-art algorithms based on affine geometry features, and increases the feature diversity of different targets, thus reducing misjudgment rate during recognizing targets. However, it is found that FIMA suffers from the parallelogram contour problem and the coincidence invalidation. An advanced FIMA is designed to cope with these problems. Experiments prove that the proposed algorithms have better robustness for Gaussian noise, gray-scale change, contrast change, illumination and small three-dimensional rotation. Compared with the latest fast image matching algorithms based on geometry features, FIMA reaches the speedup of approximate 1.75 times. Thus, FIMA would be more suitable for actual ATR applications. Feature-based image matching algorithms play an indispensable role in automatic target recognition(ATR).In this work,a fast image matching algorithm(FIMA)is proposed which utilizes the geometry feature of extended centroid(EC)to build affine invariants.Based on affine invariants of the length ratio of two parallel line segments,FIMA overcomes the invalidation problem of the state-of-the-art algorithms based on affine geometry features,and increases the feature diversity of different targets,thus reducing misjudgment rate during recognizing targets.However,it is found that FIMA suffers from the parallelogram contour problem and the coincidence invalidation.An advanced FIMA is designed to cope with these problems.Experiments prove that the proposed algorithms have better robustness for Gaussian noise,gray-scale change,contrast change,illumination and small three-dimensional rotation.Compared with the latest fast image matching algorithms based on geometry features,FIMA reaches the speedup of approximate 1.75 times.Thus,FIMA would be more suitable for actual ATR applications.
出处 《Journal of Central South University》 SCIE EI CAS 2014年第5期1907-1918,共12页 中南大学学报(英文版)
基金 Projects(2012AA010901,2012AA01A301)supported by National High Technology Research and Development Program of China Projects(61272142,61103082,61003075,61170261,61103193)supported by the National Natural Science Foundation of China Projects(B120601,CX2012A002)supported by Fund Sponsor Project of Excellent Postgraduate Student of NUDT,China
关键词 affine invariants image matching extended centroid ROBUSTNESS PERFORMANCE 图像匹配算法 仿射不变量 自动目标识别 几何特征 失效问题 功能多样性 平行四边形 基于特征
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