Discrete Multi-graph Hashing for Large-Scale Visual Search

被引:0
作者
Lingyun Xiang
Xiaobo Shen
Jiaohua Qin
Wei Hao
机构
[1] Changsha University of Science and Technology,Hunan Provincial Key Laboratory of Intelligent Processing of Big Data on Transportation
[2] Changsha University of Science and Technology,School of Computer and Communication Engineering
[3] Changsha University of Science and Technology,Hunan Provincial Key Laboratory of Smart Roadway and Cooperative Vehicle
[4] Nanjing University of Science and Technology,Infrastructure Systems
[5] Central South University of Forestry and Technology,School of Computer Science and Engineering
[6] Changsha University of Science and Technology,College of Computer Science and Information Technology
来源
Neural Processing Letters | 2019年 / 49卷
关键词
Hashing; Multi-graph; Multi-view data; Retrieval;
D O I
暂无
中图分类号
学科分类号
摘要
Hashing has become a promising technique to be applied to the large-scale visual retrieval tasks. Multi-view data has multiple views, providing more comprehensive information. The challenges of using hashing to handle multi-view data lie in two aspects: (1) How to integrate multiple views effectively? (2) How to reduce the distortion error in the quantization stage? In this paper, we propose a novel hashing method, called discrete multi-graph hashing (DMGH), to address the above challenges. DMGH uses a multi-graph learning technique to fuse multiple views, and adaptively learns the weights of each view. In addition, DMGH explicitly minimizes the distortion errors by carefully designing a quantization regularization term. An alternative algorithm is developed to solve the proposed optimization problem. The optimization algorithm is very efficient due to the low-rank property of the anchor graph. The experiments on three large-scale datasets demonstrate the proposed method outperforms the existing multi-view hashing methods.
引用
收藏
页码:1055 / 1069
页数:14
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