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    A multi-label least-squares hashing for scalable image search

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    Recently, hashing methods have attracted more and more attentions for their effectiveness in large scale data search, e.g., images and videos data. etc. For different s-cenarios, unsupervised, supervised and semi-supervised hashing methods have been proposed. Especially, when semantic information is available, supervised hashing methods show better performance than unsupervised ones. In many practical applications, one sample usually has more than one label, which has been considered by multi-label learning. However, few supervised hashing methods consider such scenario. In this paper, we propose a Multi-label Least-Squares Hashing (MLSH) method for multi-label data hashing. It can directly work well on multi-label data; moreover, unlike other hashing methods which directly learn hashing function-s on original data, MLSH first utilizes the equivalen-t form of CCA and Least-Squares to project original multi-label data into lower-dimensional space; then, in the lower-dimensional space, it learns the project matrix and gets final binary codes of data. MLSH is tested on NUS-WIDE and CIFAR-100 which are widely used for searching task. The results show that MLSH outperforms several state-of-the-art hashing methods including supervised and unsupervised methods
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