基于骨骼步态能量图像的鲁棒cnn步态验证与识别

Lingxiang Yao, Worapan Kusakunniran, Qiang Wu, Jian Zhang, Zhenmin Tang
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引用次数: 27

摘要

步态作为一种行为生物特征,已广泛应用于人体验证和身份识别。步态识别方法可以分为两类:无模型方法和基于模型的方法。无模型方法对外观变化很敏感。对于基于模型的方法,很难从步态序列中提取可靠的身体模型。基于两分支多阶段CNN网络生成的鲁棒骨架点,提出了一种新的基于模型的特征——骨架步态能量图像(SGEI)。相关实验结果表明,SGEI对布料变化具有较强的鲁棒性。另一个贡献是分别提出了两种不同的基于cnn的步态验证和步态识别架构。这两种架构都在数据集上进行了评估。结果表明,该方法具有较好的鲁棒性,可以在无约束的视觉和布料方差环境下进行步态识别。
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Robust CNN-based Gait Verification and Identification using Skeleton Gait Energy Image
As a kind of behavioral biometrie feature, gait has been widely applied for human verification and identification. Approaches to gait recognition can be classified into two categories: model-free approaches and model-based approaches. Model-free approaches are sensitive to appearance changes. For model-based approaches, it is difficult to extract the reliable body models from gait sequences. In this paper, based on the robust skeleton points produced from a two-branch multi-stage CNN network, a novel model-based feature, Skeleton Gait Energy Image (SGEI), has been proposed. Relevant experimental performances indicate that SGEI is more robust to the cloth changes. Another contribution is that two different CNN-based architectures have been separately proposed for gait verification and gait identification. Both these two architectures have been evaluated on the datasets. They have presented satisfying performances and increased the robustness for gait recognition in the unconstrained environments with view variances and cloth variances.
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