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Learning Kinematic Machine Models from Videos

机译:学习视频的运动机模型

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摘要

VR/AR applications, such as virtual training or coaching, often require a digital twin of a machine. Such a virtual twin must also include a kinematic model that defines its motion behavior. This behavior is usually expressed by constraints in a physics engine. In this paper, we present a system that automatically derives the kinematic model of a machine from RGB video with an optional depth channel. Our system records a live session while a user performs all typical machine movements. It then searches for trajectories and converts them into linear, circular and helical constraints. Our system can also detect kinematic chains and coupled constraints, for example, when a crank moves a toothed rod.
机译:VR / AR应用,如虚拟培训或辅导,通常需要一台机器的数字双胞胎。这种虚拟双胞胎还必须包括定义其运动行为的运动模型。这种行为通常由物理引擎中的约束表示。在本文中,我们提出了一个系统,该系统可以使用可选的深度通道从RGB视频自动派生机器的运动模型。我们的系统在用户执行所有典型机移动时记录实时会话。然后,它搜索轨迹并将它们转换为线性,圆形和螺旋约束。我们的系统还可以检测运动链和耦合约束,例如,当曲柄移动齿杆时。

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