ieeexplore.ieee.org/document/8006263
Preview meta tags from the ieeexplore.ieee.org website.
Linked Hostnames
2Thumbnail

Search Engine Appearance
Best-Buddies Similarity—Robust Template Matching Using Mutual Nearest Neighbors
We propose a novel method for template matching in unconstrained environments. Its essence is the Best-Buddies Similarity (BBS), a useful, robust, and parameter-free similarity measure between two sets of points. BBS is based on counting the number of Best-Buddies Pairs (BBPs)-pairs of points in source and target sets that are mutual nearest neighbours, i.e., each point is the nearest neighbour of the other. BBS has several key features that make it robust against complex geometric deformations and high levels of outliers, such as those arising from background clutter and occlusions. We study these properties, provide a statistical analysis that justifies them, and demonstrate the consistent success of BBS on a challenging real-world dataset while using different types of features.
Bing
Best-Buddies Similarity—Robust Template Matching Using Mutual Nearest Neighbors
We propose a novel method for template matching in unconstrained environments. Its essence is the Best-Buddies Similarity (BBS), a useful, robust, and parameter-free similarity measure between two sets of points. BBS is based on counting the number of Best-Buddies Pairs (BBPs)-pairs of points in source and target sets that are mutual nearest neighbours, i.e., each point is the nearest neighbour of the other. BBS has several key features that make it robust against complex geometric deformations and high levels of outliers, such as those arising from background clutter and occlusions. We study these properties, provide a statistical analysis that justifies them, and demonstrate the consistent success of BBS on a challenging real-world dataset while using different types of features.
DuckDuckGo
Best-Buddies Similarity—Robust Template Matching Using Mutual Nearest Neighbors
We propose a novel method for template matching in unconstrained environments. Its essence is the Best-Buddies Similarity (BBS), a useful, robust, and parameter-free similarity measure between two sets of points. BBS is based on counting the number of Best-Buddies Pairs (BBPs)-pairs of points in source and target sets that are mutual nearest neighbours, i.e., each point is the nearest neighbour of the other. BBS has several key features that make it robust against complex geometric deformations and high levels of outliers, such as those arising from background clutter and occlusions. We study these properties, provide a statistical analysis that justifies them, and demonstrate the consistent success of BBS on a challenging real-world dataset while using different types of features.
General Meta Tags
12- titleBest-Buddies Similarity—Robust Template Matching Using Mutual Nearest Neighbors | IEEE Journals & Magazine | IEEE Xplore
- google-site-verificationqibYCgIKpiVF_VVjPYutgStwKn-0-KBB6Gw4Fc57FZg
- DescriptionWe propose a novel method for template matching in unconstrained environments. Its essence is the Best-Buddies Similarity (BBS), a useful, robust, and parameter
- Content-Typetext/html; charset=utf-8
- viewportwidth=device-width, initial-scale=1.0
Open Graph Meta Tags
4- og:imagehttps://ieeexplore.ieee.org/ielx7/34/8401722/8006263/graphical_abstract/tpami-gagraphic-2737424.jpg
- og:image:secure_urlhttps://ieeexplore.ieee.org/ielx7/34/8401722/8006263/graphical_abstract/tpami-gagraphic-2737424.jpg
- og:titleBest-Buddies Similarity—Robust Template Matching Using Mutual Nearest Neighbors
- og:descriptionWe propose a novel method for template matching in unconstrained environments. Its essence is the Best-Buddies Similarity (BBS), a useful, robust, and parameter-free similarity measure between two sets of points. BBS is based on counting the number of Best-Buddies Pairs (BBPs)-pairs of points in source and target sets that are mutual nearest neighbours, i.e., each point is the nearest neighbour of the other. BBS has several key features that make it robust against complex geometric deformations and high levels of outliers, such as those arising from background clutter and occlusions. We study these properties, provide a statistical analysis that justifies them, and demonstrate the consistent success of BBS on a challenging real-world dataset while using different types of features.
Twitter Meta Tags
1- twitter:cardsummary_large_image
Link Tags
9- canonicalhttps://ieeexplore.ieee.org/document/8006263
- icon/assets/img/favicon.ico
- stylesheethttps://ieeexplore.ieee.org/assets/css/osano-cookie-consent-xplore.css
- stylesheet/assets/css/simplePassMeter.min.css?cv=20250701_00000
- stylesheet/assets/dist/ng-new/styles.css?cv=20250701_00000
Links
17- http://www.ieee.org/about/help/security_privacy.html
- http://www.ieee.org/web/aboutus/whatis/policies/p9-26.html
- https://ieeexplore.ieee.org/Xplorehelp
- https://ieeexplore.ieee.org/Xplorehelp/overview-of-ieee-xplore/about-ieee-xplore
- https://ieeexplore.ieee.org/Xplorehelp/overview-of-ieee-xplore/accessibility-statement