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Towards Scalable View-Invariant Gait Recognition: Multilinear Analysis for Gait

机译:迈向可缩放的视图不变步态识别:步态的多线性分析

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摘要

In this paper we introduce a novel approach for learning view-invariant gait representation that does not require synthesizing particular views or any camera calibration. Given walking sequences captured from multiple views for multiple people, we fit a multilinear generative model using higher-order singular value decomposition which decomposes view factors, body configuration factors, and gait-style factors. Gait-style is a view-invariant, time-invariant, and speed-invariant gait signature that can then be used in recognition. In the recognition phase, a new walking cycle of unknown person in unknown view is automatically aligned to the learned model and then iterative procedure is used to solve for both the gait-style parameter and the view. The proposed framework allows for scalability to add a new person to already learned model even if a single cycle of a single view is available.
机译:在本文中,我们介绍了一种学习视图不变步态表示的新颖方法,该方法不需要合成特定视图或任何相机校准。给定从多个人的多视角捕获的步行序列,我们使用高阶奇异值分解拟合多线性生成模型,该分解分解了视角因素,身体构造因素和步态样式因素。步态样式是一种视图不变,时间不变和速度不变的步态签名,可用于识别。在识别阶段,未知视图中未知人物的新步行周期会自动与学习的模型对齐,然后使用迭代过程来求解步态样式参数和视图。所提出的框架允许可伸缩性,即使单个视图的单个周期可用,也可以向已经学习的模型添加新人员。

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