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Robot Motion Planning Method Based on Incremental High-Dimensional Mixture Probabilistic Model

机译:基于增量高维混合概率模型的机器人运动规划方法

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The sampling-based motion planner is the mainstream method to solve the motion planning problem in high-dimensional space. In the process of exploring robot configuration space, this type of algorithm needs to perform collision query on a large number of samples, which greatly limits their planning efficiency. Therefore, this paper uses machine learning methods to establish a probabilistic model of the obstacle region in configuration space by learning a large number of labeled samples. Based on this, the high-dimensional samples’ rapid collision query is realized. The influence of number of Gaussian components on the fitting accuracy is analyzed in detail, and a self-adaptive model training method based on Greedy expectation-maximization (EM) algorithm is proposed. At the same time, this method has the capability of online updating and can eliminate model fitting errors due to environmental changes. Finally, the model is combined with a variety of sampling-based motion planners and is validated in multiple sets of simulations and real world experiments. The results show that, compared with traditional methods, the proposed method has significantly improved the planning efficiency.
机译:基于采样的运动计划器是解决高维空间运动计划问题的主流方法。在探索机器人配置空间的过程中,这种算法需要对大量样本进行碰撞查询,这极大地限制了其规划效率。因此,本文采用机器学习方法,通过学习大量标记样本,在配置空间中建立障碍区域的概率模型。基于此,实现了高维样本的快速碰撞查询。详细分析了高斯分量的数目对拟合精度的影响,提出了一种基于贪婪期望最大化算法的自适应模型训练方法。同时,该方法具有在线更新的能力,并且可以消除由于环境变化而引起的模型拟合误差。最后,该模型与各种基于采样的运动计划器结合在一起,并在多组模拟和现实世界实验中得到了验证。结果表明,与传统方法相比,该方法大大提高了规划效率。

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