Sampling-based motion planning is a popular approach in robotics for finding paths in continuous configuration spaces. Checking collision with obstacles is the major computational bottleneck in this process. We propose new learning-based methods for reducing collision checking to accelerate motion planning by training graph neural networks (GNNs) that perform path exploration and path smoothing. Given random geometric graphs (RGGs) generated from batch sampling, the path exploration component iteratively predicts collision-free edges to prioritize their exploration. The path smoothing component then optimizes paths obtained from the exploration stage. The methods benefit from the ability of GNNs of capturing geometric patterns from RGGs through batch sampling and generalize better to unseen environments. Experimental results show that the learned components can significantly reduce collision checking and improve overall planning efficiency in challenging high-dimensional motion planning tasks.
翻译:取样式运动规划是机器人在连续配置空间寻找路径的流行方法。检查与障碍的碰撞是这一进程中主要的计算瓶颈。我们提出新的基于学习的减少碰撞检查方法,以便通过培训进行路径探索和道路平滑的图形神经网络加快动作规划。考虑到批量取样产生的随机几何图,路径勘探部分迭接地预测了无碰撞边缘,以优先进行勘探。途径平滑部分随后优化了从探索阶段获得的路径。方法得益于全球网络通过批量取样从RGGS获取几何模式的能力,并更好地向看不见的环境推广。实验结果显示,在挑战高维运动规划任务时,学到的部件可以大大减少碰撞检查并提高总体规划效率。