2022
DOI: 10.3390/rs14143256
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A Novel and Effective Cooperative RANSAC Image Matching Method Using Geometry Histogram-Based Constructed Reduced Correspondence Set

Abstract: The success of many computer vision and pattern recognition applications depends on matching local features on two or more images. Because the initial correspondence set—i.e., the set of the initial feature pairs—is often contaminated by mismatches, removing mismatches is a necessary task prior to image matching. In this paper, we first propose a fast geometry histogram-based (GH-based) mismatch removal strategy to construct a reduced correspondence set Creduced,GH from the initial correspondence set Cini. Nex… Show more

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Cited by 5 publications
(1 citation statement)
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“…Finally a special feature-similarity evaluator was designed to match features in two images. Chung et al proposed a new cooperative RANSAC (COOSAC) [32] method using a geometry histogram-based (GH-based) constructed to reduce the correspondence set for remote sensing matching [33].…”
Section: Image Matchingmentioning
confidence: 99%
“…Finally a special feature-similarity evaluator was designed to match features in two images. Chung et al proposed a new cooperative RANSAC (COOSAC) [32] method using a geometry histogram-based (GH-based) constructed to reduce the correspondence set for remote sensing matching [33].…”
Section: Image Matchingmentioning
confidence: 99%