动态流形翘曲的视图不变动作识别

Dian Gong, G. Medioni
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引用次数: 91

摘要

我们解决了从动作捕捉数据中学习人体运动的视图不变3D模型的问题,以便从任意视点的单目视频序列中识别人类动作。提出了一种时空流形(STM)模型,用于分析具有潜在空间结构的非线性多变量时间序列,并将其应用于联合轨迹空间中的动作识别。基于STM,提出了一种新的二维和三维人体动作序列对齐算法动态流形扭曲(Dynamic Manifold Warping, DMW)和鲁棒运动相似度度量。DMW通过结合流形学习扩展了以前在时空对齐方面的工作。我们评估并比较了最先进的运动捕捉数据和现实视频的方法。实验结果证明了该方法的有效性,产生了视觉上吸引人的对齐结果,产生了更高的动作识别精度,并且可以识别来自部分遮挡的任意视图的动作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Manifold Warping for view invariant action recognition
We address the problem of learning view-invariant 3D models of human motion from motion capture data, in order to recognize human actions from a monocular video sequence with arbitrary viewpoint. We propose a Spatio-Temporal Manifold (STM) model to analyze non-linear multivariate time series with latent spatial structure and apply it to recognize actions in the joint-trajectories space. Based on STM, a novel alignment algorithm Dynamic Manifold Warping (DMW) and a robust motion similarity metric are proposed for human action sequences, both in 2D and 3D. DMW extends previous works on spatio-temporal alignment by incorporating manifold learning. We evaluate and compare the approach to state-of-the-art methods on motion capture data and realistic videos. Experimental results demonstrate the effectiveness of our approach, which yields visually appealing alignment results, produces higher action recognition accuracy, and can recognize actions from arbitrary views with partial occlusion.
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