著者ちょしゃ
Zhili Zhou, Yunlong Wang, QM Jonathan Wu, Ching-Nung Yang, Xingming Sun
公開こうかい
2016/8/17
論文ろんぶん
IEEE Transactions on Information Forensics and Security
まき
12
ごう
1
ページ
48-63
出版しゅっぱんしゃ
IEEE
説明せつめい
To detect illegal copies of copyrighted images, recent copy detection methods mostly rely on the bag-of-visual-words (BOW) model, in which local features are quantized into visual words for image matching. However, both the limited discriminability of local features and the BOW quantization errors will lead to many false local matches, which make it hard to distinguish similar images from copies. Geometric consistency verification is a popular technology for reducing the false matches, but it neglects global context information of local features and thus cannot solve this problem well. To address this problem, this paper proposes a global context verification scheme to filter false matches for copy detection. More specifically, after obtaining initial scale invariant feature transform (SIFT) matches between images based on the BOW quantization, the overlapping region-based global context descriptor (OR-GCD) is …
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