Trajectory Learning for Robot Programming by Demonstration Using Hidden Markov Model and Dynamic Time Warping.

A Vakanski, I Mantegh, A Irish, F Janabi-Sharifi
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引用次数: 148

Abstract

The main objective of this paper is to develop an efficient method for learning and reproduction of complex trajectories for robot programming by demonstration. Encoding of the demonstrated trajectories is performed with hidden Markov model, and generation of a generalized trajectory is achieved by using the concept of key points. Identification of the key points is based on significant changes in position and velocity in the demonstrated trajectories. The resulting sequences of trajectory key points are temporally aligned using the multidimensional dynamic time warping algorithm, and a generalized trajectory is obtained by smoothing spline interpolation of the clustered key points. The principal advantage of our proposed approach is utilization of the trajectory key points from all demonstrations for generation of a generalized trajectory. In addition, variability of the key points' clusters across the demonstrated set is employed for assigning weighting coefficients, resulting in a generalization procedure which accounts for the relevance of reproduction of different parts of the trajectories. The approach is verified experimentally for trajectories with two different levels of complexity.
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基于隐马尔可夫模型和动态时间翘曲的轨迹学习在机器人编程中的应用。
本文的主要目的是开发一种用于机器人编程的复杂轨迹学习和复制的有效方法。利用隐马尔可夫模型对所演示的轨迹进行编码,利用关键点的概念生成广义轨迹。关键点的识别是基于演示轨迹中位置和速度的显著变化。利用多维动态时间规整算法对得到的轨迹关键点序列进行时间对齐,并对聚类关键点进行平滑样条插值得到广义轨迹。我们提出的方法的主要优点是利用了所有演示的轨迹关键点来生成广义轨迹。此外,在整个演示集中,关键点聚类的可变性被用于分配权重系数,从而产生一个泛化过程,该过程考虑了轨迹不同部分再现的相关性。该方法在两种不同复杂程度的轨迹上进行了实验验证。
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