Graph-optimized coupled discriminant projections for cross-view gait recognition
作者:Wanjiang Xu
摘要
Graph-Embedding is a widely used learning technique in pattern recognition. However, it is difficult to construct an inter-view graph for cross-view gait samples. To remedy it, in this paper, we propose a novel cross-view gait recognition algorithm named Graph-optimized Coupled Discriminant Projections (GoCDP), which seeks coupled projections based on adaptive graph learning. Regarding the embedding graphs as variables rather than predefined constants, we integrate inter-view graph construction with projection optimization process into a unified framework. By an alternate iteration algorithm, we can ultimately obtain the optimal coupled projections. Moreover, we extend GoCDP to multi-view case called Graph-optimized Multiview Discriminant Projections (GoMDP) for multi-view subspace learning. Experimental results on two benchmark gait datasets, CASIA-B and OU-ISIR, demonstrate the effectiveness of the proposed methods.
论文关键词:Gait recognition, Unified subspace, Graph-optimized Coupled Discriminant Projections, Graph embedding
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论文官网地址:https://doi.org/10.1007/s10489-021-02322-5