单目视频的联合3D人体动作捕捉和物理分析

Petrissa Zell, Bastian Wandt, B. Rosenhahn
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引用次数: 21

摘要

运动分析通常仅限于具有多个摄像机和力传感器的实验室设置,这需要昂贵的设备和知识渊博的操作人员。因此,它缺乏简单性和灵活性。我们提出了一种将单目3D姿态估计与基于物理的建模相结合的算法,为从2D视频数据中快速和鲁棒的3D运动分析引入了一个统计框架。我们使用分解方法来学习三维运动系数,并将它们与描述质量-弹簧模型动力学的物理参数相结合。我们的方法既不需要额外的力测量也不需要扭矩优化,只使用单个摄像机,同时允许估计人体中不可观察的扭矩。我们证明了我们的算法通过强制合理的人体运动和解决相机和物体运动的模糊性来改善单目3D重建。,,,,,,性能在不同的运动和多个测试数据集以及具有挑战性的户外序列上进行评估。
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Joint 3D Human Motion Capture and Physical Analysis from Monocular Videos
Motion analysis is often restricted to a laboratory setup with multiple cameras and force sensors which requires expensive equipment and knowledgeable operators. Therefore it lacks in simplicity and flexibility. We propose an algorithm combining monocular 3D pose estimation with physics-based modeling to introduce a statistical framework for fast and robust 3D motion analysis from 2D video-data. We use a factorization approach to learn 3D motion coefficients and join them with physical parameters, that describe the dynamic of a mass-spring-model. Our approach does neither require additional force measurement nor torque optimization and only uses a single camera while allowing to estimate unobservable torques in the human body. We show that our algorithm improves the monocular 3D reconstruction by enforcing plausible human motion and resolving the ambiguity of camera and object motion.,,,,,,The performance is evaluated on different motions and multiple test data sets as well as on challenging outdoor sequences.
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