Title :
Code Consistent Hashing Based on Information-Theoretic Criterion
Author :
Shu Zhang ; Jian Liang ; Ran He ; Zhenan Sun
Author_Institution :
Center for Res. on Intell. Perception & Comput. (CRIPAC), Inst. of Autom., Beijing, China
Abstract :
Learning based hashing techniques have attracted broad research interests in the Big Media research area. They aim to learn compact binary codes which can preserve semantic similarity in the Hamming embedding. However, the discrete constraints imposed on binary codes typically make hashing optimizations very challenging. In this paper, we present a code consistent hashing (CCH) algorithm to learn discrete binary hash codes. To form a simple yet efficient hashing objective function, we introduce a new code consistency constraint to leverage discriminative information and propose to utilize the Hadamard code which favors an information-theoretic criterion as the class prototype. By keeping the discrete constraint and introducing an orthogonal constraint, our objective function can be minimized efficiently. Experimental results on three benchmark datasets demonstrate that the proposed CCH outperforms state-of-the-art hashing methods in both image retrieval and classification tasks, especially with short binary codes.
Keywords :
Hadamard codes; Hamming codes; binary codes; cryptography; embedded systems; image classification; image retrieval; information theory; learning (artificial intelligence); optimisation; CCH algorithm; Hadamard code; code consistent hashing algorithm; discrete binary hash code; hamming embedding; hashing objective function; hashing optimization; image classification; image retrieval; information-theoretic criterion; learning-based hashing technique; Binary codes; Error correction; Error correction codes; Kernel; Optimization; Prototypes; Synchronous digital hierarchy; Supervised hashing; binary codes; code consistent constraint; information-theoretic criterion;
Journal_Title :
Big Data, IEEE Transactions on
DOI :
10.1109/TBDATA.2015.2499191