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Estimating Motion Codes from Demonstration Videos

机译:估算示范视频的运动代码

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A motion taxonomy can encode manipulations as a binary-encoded representation, which we refer to as motion codes. These motion codes innately represent a manipulation action in an embedded space that describes the motion’s mechanical features, including contact and trajectory type. The key advantage of using motion codes for embedding is that motions can be more appropriately defined with robotic-relevant features, and their distances can be more reasonably measured using these motion features. In this paper, we develop a deep learning pipeline to extract motion codes from demonstration videos in an unsupervised manner so that knowledge from these videos can be properly represented and used for robots. Our evaluations show that motion codes can be extracted from demonstrations of action in the EPIC-KITCHENS dataset.
机译:运动分类学可以将操纵编码为二进制编码表示,我们将其称为运动代码。这些动作代码在嵌入式空间中全体代表了一种描述运动的机械特征的操作动作,包括接触和轨迹类型。使用用于嵌入的运动码的关键优点是可以用机器人相关的特征更适当地定义运动,并且可以使用这些运动特征更合理地测量它们的距离。在本文中,我们开发了一个深入的学习管道,以不经过监督的方式从演示视频中提取动作码,以便可以正确地表示来自这些视频的知识并用于机器人。我们的评估表明,可以从史诗厨房数据集中的动作演示中提取运动代码。

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