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Learning Complex Trajectories by Imitation Using Orthogonal Basis Functions and Template Matching

机译:使用正交基函数和模板匹配模仿复杂轨迹

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In this paper a new method based on Orthogonal basis.Functions and Template Matching (OFTM) for learning trajectory by imitation is introduced. In this method, the robot uses primitive movements including template and orthogonal basis trajectories, which are learnt by using Gaussian Mixture Model (GMM), to construct new given trajectories. To obtain this goal, the robot calculates the dissimilarity between the new trajectory and arbitrary templates, then the similar parts will be replaced by the template, and the rest of the new trajectory will be constructed by using the orthogonal learnt trajectories. The results show that our method is more accurate and requires less computation in comparison with learning the whole trajectory by GMM.
机译:在本文中,介绍了一种基于正交的新方法。介绍了模仿学习轨迹的功能和模板匹配(OFTM)。在该方法中,机器人使用包括模板和正交基轨迹的原始运动,通过使用高斯混合模型(GMM)来学习,以构建新给定的轨迹。为了获得这一目标,机器人可以计算新的轨迹和任意模板之间的不相似性,然后类似的部分将被模板替换,并且通过使用正交学习的轨迹来构造新轨迹的其余部分。结果表明,与GMM学习整个轨迹相比,我们的方法更准确,需要较少的计算。

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