Fusion of static and dynamic body biometrics for gait recognition

Liang Wang, Huazhong Ning, T. Tan, Weiming Hu
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引用次数: 226

Abstract

Human identification at a distance has recently gained growing interest from computer vision researchers. This paper aims to propose a visual recognition algorithm based upon fusion of static and dynamic body biometrics. For each sequence involving a walking figure, pose changes of the segmented moving silhouettes are represented as an associated sequence of complex vector configurations, and are then analyzed using the Procrustes shape analysis method to obtain a compact appearance representation, called static information of body. Also, a model-based approach is presented under a condensation framework to track the walker and to recover joint-angle trajectories of lower limbs, called dynamic information of gait. Both static and dynamic cues are respectively used for recognition using the nearest exemplar classifier. They are also effectively fused on decision level using different combination rules to improve the performance of both identification and verification. Experimental results on a dataset including 20 subjects demonstrate the validity of the proposed algorithm.
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静态与动态人体生物特征融合的步态识别
最近,计算机视觉研究人员对远距离人类识别越来越感兴趣。本文旨在提出一种基于静态和动态人体生物特征融合的视觉识别算法。对于每一个涉及行走图形的序列,将分割后的运动轮廓的位姿变化表示为复杂矢量构型的关联序列,然后使用Procrustes形状分析方法进行分析,得到紧凑的外观表示,称为身体的静态信息。在此基础上,提出了一种基于模型的步态动态信息跟踪和下肢关节角轨迹恢复方法。静态和动态线索分别用于使用最近的样本分类器进行识别。在决策层面上,采用不同的组合规则对二者进行有效融合,提高了识别和验证的性能。在20个被试数据集上的实验结果验证了该算法的有效性。
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