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Machine learning / Shape context / Image retrieval / Transduction / Information retrieval / K-nearest neighbors algorithm / Similarity / Shape / Manifold regularization / MPEG-7 / Statistical classification
Date: 2013-06-24 00:20:34
Machine learning
Shape context
Image retrieval
Transduction
Information retrieval
K-nearest neighbors algorithm
Similarity
Shape
Manifold regularization
MPEG-7
Statistical classification

IEEE TRANSACTIONS ON IMAGE PROCESSING, VOL. 21, NO. 5, MAYCo-Transduction for Shape Retrieval Xiang Bai, Bo Wang, Cong Yao, Wenyu Liu, and Zhuowen Tu

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