From Local Features to Global Shape Constraints: Heterogeneous Matching Scheme for Recognizing Objects under Serious Background Clutter
نویسندگان
چکیده
single score results combined score results SIFT WGC SP SC RP (1) (2) (3) Ginkaku-ji 24.72 29.87 28.87 22.60 31.20 31.68 41.92 37.67 Kinkaku-ji 45.36 44.02 43.83 33.91 23.41 50.71 52.05 49.73 Kiyomizu-dera 15.87 26.47 18.25 23.41 21.37 22.97 31.92 25.94 ・Flexiable model by going steowise from local features to global descriptors ・ Dynamic shape calculation during recognition --> convenient for user Overview
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