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Use the Force, Luke! Learning to Predict Physical Forces by Simulating Effects

机译:用力吧,卢克!学习通过模拟效果预测身体力量

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When we humans look at a video of human-object interaction, we can not only infer what is happening but we can even extract actionable information and imitate those interactions. On the other hand, current recognition or geometric approaches lack the physicality of action representation. In this paper, we take a step towards more physical understanding of actions. We address the problem of inferring contact points and the physical forces from videos of humans interacting with objects. One of the main challenges in tackling this problem is obtaining ground-truth labels for forces. We sidestep this problem by instead using a physics simulator for supervision. Specifically, we use a simulator to predict effects, and enforce that estimated forces must lead to same effect as depicted in the video. Our quantitative and qualitative results show that (a) we can predict meaningful forces from videos whose effects lead to accurate imitation of the motions observed, (b) by jointly optimizing for contact point and force prediction, we can improve the performance on both tasks in comparison to independent training, and (c) we can learn a representation from this model that generalizes to novel objects using few shot examples.
机译:当我们人类看一个人对象互动的视频时,我们不仅可以推断正在发生的事情,但我们甚至可以提取可操作的信息并模仿这些互动。另一方面,当前识别或几何方法缺乏行动表示的物质。在本文中,我们对对行动的更具身体的理解进行了一步。我们解决了与对象交互的人类视频推断接触点和物理力量的问题。解决这个问题的主要挑战之一是获得力量的地面真理标签。我们通过改为使用物理模拟器来监督,我们回避这个问题。具体而言,我们使用模拟器来预测效果,并强制执行估计力必须导致与视频中所描绘的相同的效果。我们的定量和定性结果表明,(a)我们可以从视频中预测有意义的力量,其效果导致对观察到的动作的准确模仿,(b)通过联合优化接触点和力预测,我们可以提高两个任务的性能与独立培训的比较,(c)我们可以从这个模型中学习一个概括到使用几个拍摄示例的新型对象的表示。

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