Fast Coding of Feature Vectors Using Neighbor-to-Neighbor Search

Searching for matches to high-dimensional vectors using hard/soft vector quantization is the most computationally expensive part of various computer vision algorithms including the bag of visual word (BoW). This paper proposes a fast computation method, Neighbor-to-Neighbor (NTN) search [1], which s...

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Veröffentlicht in:IEEE transactions on pattern analysis and machine intelligence 2016-06, Vol.38 (6), p.1170-1184
Hauptverfasser: Inoue, Nakamasa, Shinoda, Koichi
Format: Artikel
Sprache:eng
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Zusammenfassung:Searching for matches to high-dimensional vectors using hard/soft vector quantization is the most computationally expensive part of various computer vision algorithms including the bag of visual word (BoW). This paper proposes a fast computation method, Neighbor-to-Neighbor (NTN) search [1], which skips some calculations based on the similarity of input vectors. For example, in image classification using dense SIFT descriptors, the NTN search seeks similar descriptors from a point on a grid to an adjacent point. Applications of the NTN search to vector quantization, a Gaussian mixture model, sparse coding, and a kernel codebook for extracting image or video representation are presented in this paper. We evaluated the proposed method on image and video benchmarks: the PASCAL VOC 2007 Classification Challenge and the TRECVID 2010 Semantic Indexing Task. NTN-VQ reduced the coding cost by 77.4 percent, and NTN-GMM reduced it by 89.3 percent, without any significant degradation in classification performance.
ISSN:0162-8828
1939-3539
2160-9292
DOI:10.1109/TPAMI.2015.2481390