Abstract

In recent years, discrete supervised hashing methods have attracted increasing attention because of their high retrieval efficiency and precision. However, in these methods, some effective semantic information is typically neglected, which means that all the information is not sufficiently utilized. Moreover, these methods often only decompose the first-order features of the original data, ignoring the more fine-grained higher-order features. To address these problems, we propose a supervised hashing learning method called discrete hashing with triple supervision learning (DHTSL). Specifically, we integrate three aspects of semantic information into this method: (1) the bidirectional mapping of semantic labels; (2) pairwise similarity relations; (3) second-order features from the original data. We also design a discrete optimization method to solve the proposed objective function. Moreover, an out-of-sample extension strategy that can better maintain the independence and balance of hash codes is employed to improve retrieval performance. Extensive experiments on three widely used datasets demonstrate its superior performance.

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