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Trajectory generation in joint space using modified hidden Markov model

机译:使用改进的隐马尔可夫模型在关节空间中生成轨迹

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Human guide robots need to generate a trajectory from human training. The popular work space methods have to calculate the inverse kinematics. While the joint space methods need the dynamic time warping. These destroy the accuracy of the trajectory model. In this paper, we use Lloyd's algorithm to hidden Markov model (HMM). The advantages of the method over the other HMM are the time difference does not affects the HMM training, and the training data can be generated in joint space. We also modify the traditional HMM such that the model in the joint space works similar as the task space. Simulation and experimental results show that the modified HMM with Lloyd's algorithm in joint space is effective to generate the desired trajectory.
机译:人工导引机器人需要通过人工训练生成轨迹。流行的工作空间方法必须计算逆运动学。而联合空间方法需要动态时间扭曲。这些破坏了轨迹模型的准确性。在本文中,我们使用劳埃德算法来隐藏马尔可夫模型(HMM)。该方法相对于其他HMM的优点是时间差不影响HMM训练,并且可以在关节空间中生成训练数据。我们还修改了传统的HMM,以使联合空间中的模型与任务空间相似。仿真和实验结果表明,在关节空间中采用劳埃德算法进行改进的HMM可以有效地产生所需的轨迹。

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