Uncooperative gait recognition: Re-ranking based on sparse coding and multi-view hypergraph learning
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摘要
Gait is an important biometric which can operate from a distance without subject cooperation. However, it is easily affected by changes in covariate conditions (carrying, clothing, view angle, walking speed, random noise etc.). It is hard for training set to cover all conditions. Bipartite ranking model has achieved success in gait recognition without assumption of subject cooperation. We propose a multi-view hypergraph learning re-ranking (MHLRR) method by integrating multi-view hypergraph learning (MHL) with hypergraph-based re-ranking framework. Sparse coding re-ranking (SCRR) and MHLRR are integrated under the graph-based framework to get a model. We define it as the sparse coding multi-view hypergraph learning re-ranking (SCMHLRR) method, which makes our approach achieve higher recognition accuracy under a genuine uncooperative setting. Extensive experiments demonstrate that our approach drastically outperforms existing ranking based methods, achieving good increase in recognition rate under the most difficult uncooperative settings.
论文关键词:Uncooperative gait recognition,Sparse Coding,Hypergraph learning,Re-ranking
论文评审过程:Received 12 May 2015, Revised 24 September 2015, Accepted 16 November 2015, Available online 2 December 2015, Version of Record 8 February 2016.
论文官网地址:https://doi.org/10.1016/j.patcog.2015.11.016