4.7 Article

Discrete Multimodal Hashing With Canonical Views for Robust Mobile Landmark Search

期刊

IEEE TRANSACTIONS ON MULTIMEDIA
卷 19, 期 9, 页码 2066-2079

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMM.2017.2729025

关键词

Binary embedding; canonical view-based discrete multi-modal hashing (CV-DMH); discrete optimization; intermediate representation; mobile landmark search (MLS); submodular function

资金

  1. ARC [DP150103008, FT130101530]

向作者/读者索取更多资源

Mobile landmark search (MLS) recently receives increasing attention for its great practical values. However, it still remains unsolved due to two important challenges. One is high bandwidth consumption of query transmission, and the other is the huge visual variations of query images sent from mobile devices. In this paper, we propose a novel hashing scheme, named as canonical view based discrete multimodal hashing (CVDMH), to handle these problems. First, a submodular function is designed to measure visual representativeness and redundancy of a view set. With it, canonical views, which capture key visual appearances of landmark with limited redundancy, are efficiently discovered with an iterative mining strategy. Second, multimodal sparse coding is applied to transform visual features from multiple modalities into an intermediate representation. It can robustly and adaptively characterize visual contents of varied landmark images with certain canonical views. Finally, compact binary codes are learned on intermediate representation within a tailored discrete binary embedding model which preserves visual relations of images measured with canonical views and removes the involved noises. In this part, we develop a new augmented Lagrangian multiplier (ALM) based optimization method to directly solve the discrete binary codes. We can not only explicitly deal with the discrete constraint, but also consider the bit-uncorrelated constraint and balance constraint together. The proposed solution can desirably avoid accumulated quantization errors in conventional optimization method which simply adopts two-step relaxing+rounding framework. Experiments on real world landmark datasets demonstrate the superior performance of CV-DMH over several state-of-the-art methods.

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