Supervised Matrix Factorization For Cross-modality Hashing | Awesome Learning to Hash Add your paper to Learning2Hash

Supervised Matrix Factorization For Cross-modality Hashing

Liu Hong, Ji Rongrong, Wu Yongjian, Hua Gang. Arxiv 2016

[Paper]    
ARXIV Cross Modal Graph Quantisation Supervised

Matrix factorization has been recently utilized for the task of multi-modal hashing for cross-modality visual search, where basis functions are learned to map data from different modalities to the same Hamming embedding. In this paper, we propose a novel cross-modality hashing algorithm termed Supervised Matrix Factorization Hashing (SMFH) which tackles the multi-modal hashing problem with a collective non-matrix factorization across the different modalities. In particular, SMFH employs a well-designed binary code learning algorithm to preserve the similarities among multi-modal original features through a graph regularization. At the same time, semantic labels, when available, are incorporated into the learning procedure. We conjecture that all these would facilitate to preserve the most relevant information during the binary quantization process, and hence improve the retrieval accuracy. We demonstrate the superior performance of SMFH on three cross-modality visual search benchmarks, i.e., the PASCAL-Sentence, Wiki, and NUS-WIDE, with quantitative comparison to various state-of-the-art methods

Similar Work