Algorithm Based on Morphological Component Analysis and Scale-Invariant Feature Transform for Image Registration

In this paper, we proposed a registration method by combining the morphological component analysis(MCA) and scale-invariant feature transform(SIFT) algorithm. This method uses the perception dictionaries,and combines the Basis-Pursuit algorithm and the Total-Variation regularization scheme to extrac...

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Published inShanghai jiao tong da xue xue bao Vol. 22; no. 1; pp. 99 - 106
Main Author 王刚 李京娜 苏庆堂 张小峰 吕高焕 王洪刚
Format Journal Article
LanguageEnglish
Published Shanghai Shanghai Jiaotong University Press 01.02.2017
Springer Nature B.V
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ISSN1007-1172
1995-8188
DOI10.1007/s12204-017-1807-7

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Summary:In this paper, we proposed a registration method by combining the morphological component analysis(MCA) and scale-invariant feature transform(SIFT) algorithm. This method uses the perception dictionaries,and combines the Basis-Pursuit algorithm and the Total-Variation regularization scheme to extract the cartoon part containing basic geometrical information from the original image, and is stable and unsusceptible to noise interference. Then a smaller number of the distinctive key points will be obtained by using the SIFT algorithm based on the cartoon part of the original image. Matching the key points by the constrained Euclidean distance,we will obtain a more correct and robust matching result. The experimental results show that the geometrical transform parameters inferred by the matched key points based on MCA+SIFT registration method are more exact than the ones based on the direct SIFT algorithm.
Bibliography:31-1943/U
WANG Gang;LI Jingna;SU Qingtang;ZHANG Xiaofeng;L Gaohuan;WANG Honggang;School of Information and Electrical Engineering, Ludong University
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ISSN:1007-1172
1995-8188
DOI:10.1007/s12204-017-1807-7