无标记运动捕捉使用多个摄像头

A. Sundaresan, R. Chellappa
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引用次数: 75

摘要

动作捕捉在生物力学、计算机动画和人机交互等不同领域都有重要的应用。目前的动作捕捉方法使用被动标记,附着在受试者的不同身体部位,因此本质上是侵入性的。在病理人体运动分析等应用中,这些标记可能会在运动中引入未知的伪影,并且通常很麻烦。我们提出了基于计算机视觉的方法来执行无标记的人体动作捕捉。我们将人体建模为一组连接在一个铰接结构中的超二次曲面,并提出了从视频序列中估计模型参数的算法。我们从图像中计算体数据(体素)表示,并根据我们的模型知识将自下而上的方法与自上而下的方法结合起来。我们提出了一种利用该模型跟踪人体姿态的跟踪算法。跟踪器使用类似于迭代扩展卡尔曼滤波器的迭代框架,以一种新颖的方式结合空间和时间信息,使用多个线索来估计铰接的人体运动。我们使用8-16台相机收集的数据提供初步结果。我们工作的重点是能够根据精度要求进行缩放的模型和算法。我们的最终目标是构建一个端到端系统,可以将上述组件集成到一个完全自动化的无标记动作捕捉系统中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Markerless Motion Capture using Multiple Cameras
Motion capture has important applications in different areas such as biomechanics, computer animation, and human-computer interaction. Current motion capture methods use passive markers that are attached to different body parts of the subject and are therefore intrusive in nature. In applications such as pathological human movement analysis, these markers may introduce an unknown artifact in the motion, and are, in general, cumbersome. We present computer vision based methods for performing markerless human motion capture. We model the human body as a set of super-quadrics connected in an articulated structure and propose algorithms to estimate the parameters of the model from video sequences. We compute a volume data (voxel) representation from the images and combine bottom-up approach with top down approach guided by our knowledge of the model. We propose a tracking algorithm that uses this model to track human pose. The tracker uses an iterative framework akin to an Iterated Extended Kalman Filter to estimate articulated human motion using multiple cues that combine both spatial and temporal information in a novel manner. We provide preliminary results using data collected from 8-16 cameras. The emphasis of our work is on models and algorithms that are able to scale with respect to the requirement for accuracy. Our ultimate objective is to build an end-to-end system that can integrate the above mentioned components into a completely automated markerless motion capture system.
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