DocumentCode
3848167
Title
Efficient Sequential Correspondence Selection by Cosegmentation
Author
Jan Cech;Jiri Matas;Michal Perdoch
Author_Institution
Czech Technical University, Prague
Volume
32
Issue
9
fYear
2010
Firstpage
1568
Lastpage
1581
Abstract
In many retrieval, object recognition, and wide-baseline stereo methods, correspondences of interest points (distinguished regions) are commonly established by matching compact descriptors such as SIFTs. We show that a subsequent cosegmentation process coupled with a quasi-optimal sequential decision process leads to a correspondence verification procedure that 1) has high precision (is highly discriminative), 2) has good recall, and 3) is fast. The sequential decision on the correctness of a correspondence is based on simple statistics of a modified dense stereo matching algorithm. The statistics are projected on a prominent discriminative direction by SVM. Wald´s sequential probability ratio test is performed on the SVM projection computed on progressively larger cosegmented regions. We show experimentally that the proposed sequential correspondence verification (SCV) algorithm significantly outperforms the standard correspondence selection method based on SIFT distance ratios on challenging matching problems.
Keywords
"Shape measurement","Image databases","Visual databases","Object recognition","Statistics","Support vector machines","Performance evaluation","Image retrieval","Testing","Size measurement"
Journal_Title
IEEE Transactions on Pattern Analysis and Machine Intelligence
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2009.176
Filename
5530075
Link To Document