Walking on Thin Air: Environment-Free Physics-Based Markerless Motion Capture

M. Livne, L. Sigal, Marcus A. Brubaker, David J. Fleet
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引用次数: 5

Abstract

We propose a generative approach to physics-based motion capture. Unlike prior attempts to incorporate physics into tracking that assume the subject and scene geometry are calibrated and known a priori, our approach is automatic and online. This distinction is important since calibration of the environment is often difficult, especially for motions with props, uneven surfaces, or outdoor scenes. The use of physics in this context provides a natural framework to reason about contact and the plausibility of recovered motions. We propose a fast data-driven parametric body model, based on linear-blend skinning, which decouples deformations due to pose, anthropometrics and body shape. Pose (and shape) parameters are estimated using robust ICP optimization with physics-based dynamic priors that incorporate contact. Contact is estimated from torque trajectories and predictions of which contact points were active. To our knowledge, this is the first approach to take physics into account without explicit a priori knowledge of the environment or body dimensions. We demonstrate effective tracking from a noisy single depth camera, improving on state-of-the-art results quantitatively and producing better qualitative results, reducing visual artifacts like foot-skate and jitter.
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在稀薄的空气中行走:基于无环境物理的无标记动作捕捉
我们提出了一种基于物理的生成方法。不像之前的尝试将物理纳入跟踪,假设主题和场景几何是校准和先验已知的,我们的方法是自动和在线的。这种区别很重要,因为校准环境通常很困难,特别是对于带有道具的运动,不平整的表面或户外场景。在这种情况下,物理学的使用提供了一个自然的框架来推理接触和恢复运动的合理性。我们提出了一种基于线性混合蒙皮的快速数据驱动的参数化身体模型,该模型可以解耦由于姿势,人体测量和身体形状引起的变形。姿态(和形状)参数估计使用鲁棒ICP优化与物理为基础的动态先验,包括接触。接触是从扭矩轨迹估计的,并预测哪些接触点是活跃的。据我们所知,这是第一个在没有明确的环境或身体尺寸的先验知识的情况下考虑物理的方法。我们演示了从嘈杂的单深度相机进行有效跟踪,在定量上改进了最先进的结果,并产生了更好的定性结果,减少了像脚滑和抖动这样的视觉伪影。
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