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Learning Kinematic Models for Articulated Objects

机译:学习关节物体的运动模型

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Robots operating in home environments must be able to interact with articulated objects such as doors or drawers. Ideally, robots are able to autonomously infer articulation models by observation. In this paper, we present an approach to learn kinematic models by inferring the connectivity of rigid parts and the articulation models for the corresponding links. Our method uses a mixture of parameterized and parameter-free (Gaussian process) representations and finds low-dimensional manifolds that provide the best explanation of the given observations. Our approach has been implemented and evaluated using real data obtained in various realistic home environment settings.
机译:在家庭环境中运行的机器人必须能够与门或抽屉等铰接物体交互。理想情况下,机器人能够通过观察自动推断出铰接模型。在本文中,我们通过推断刚性部件的连接和相应的链路的铰接模型来提出一种学习运动模型的方法。我们的方法使用参数化和无参数(高斯过程)表示的混合,并找到提供给定观察的最佳解释的低维歧管。我们的方法已经使用了各种逼真的家庭环境设置中获得的实际数据来实现和评估。

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