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Physical Primitive Decomposition

机译:物理原始分解

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Objects are made of parts, each with distinct geometry, physics, functionality, and affordances. Developing such a distributed, physical, interpretable representation of objects will facilitate intelligent agents to better explore and interact with the world. In this paper, we study physical primitive decomposition-understanding an object through its components, each with physical and geometric attributes. As annotated data for object parts and physics are rare, we propose a novel formulation that learns physical primitives by explaining both an object's appearance and its behaviors in physical events. Our model performs well on block towers and tools in both synthetic and real scenarios; we also demonstrate that visual and physical observations often provide complementary signals. We further present ablation and behavioral studies to better understand our model and contrast it with human performance.
机译:对象由零件组成,每个零件具有不同的几何形状,物理特性,功能和功能。开发这样一种分布式的,物理的,可解释的对象表示形式将有助于智能代理更好地探索世界并与之互动。在本文中,我们研究了物理原始分解,即通过对象的各个成分来理解对象,每个成分都具有物理和几何属性。由于用于对象零件和物理的带注释的数据很少,我们提出了一种新颖的公式,通过解释对象的外观及其在物理事件中的行为来学习物理图元。我们的模型在综合场景和实际场景中在区块塔和工具上均表现出色;我们还证明了视觉和物理观察通常可以提供互补信号。我们进一步提出了消融和行为研究,以更好地了解我们的模型并将其与人类表现进行对比。

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