Gait tracking and recognition using person-dependent dynamic shape model

Chan-Su Lee, A. Elgammal
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引用次数: 19

Abstract

The characteristics of the 2D shape deformation in human motion contain rich information for human identification and pose estimation. In this paper, we introduce a framework for simultaneous gait tracking and recognition using person-dependent global shape deformation model. Person-dependent global shape deformations are modeled using a nonlinear generative model with kinematic manifold embedding and kernel mapping. The kinematic manifold is used as a common representation of body pose dynamics in different people in a low dimensional space. Shape style as well as geometric transformation and body pose are estimated within a Bayesian framework using the generative model of global shape deformation. Experimental results show person-dependent synthesis of global shape deformation, gait recognition from extracted silhouettes using style parameters, and simultaneous gait tracking and recognition from image edges
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基于人相关动态形状模型的步态跟踪与识别
人体运动中的二维形状变形特征为人体识别和姿态估计提供了丰富的信息。本文提出了一种基于人相关全局形状变形模型的步态同步跟踪与识别框架。基于运动学流形嵌入和核映射的非线性生成模型建立了基于人的全局形状变形模型。采用运动流形作为低维空间中不同人的身体姿态动力学的通用表示。使用全局形状变形生成模型在贝叶斯框架内估计形状样式以及几何变换和身体姿态。实验结果表明,基于人的全局形状变形合成、基于风格参数提取轮廓的步态识别以及基于图像边缘的同步步态跟踪和识别
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