Constrained motion planning is a challenging field of research, aiming for computationally efficient methods that can find a collision-free path on the constraint manifolds between a given start and goal configuration. These planning problems come up surprisingly frequently, such as in robot manipulation for performing daily life assistive tasks. However, few solutions to constrained motion planning are available, and those that exist struggle with high computational time complexity in finding a path solution on the manifolds. To address this challenge, we present Constrained Motion Planning Networks X (CoMPNetX). It is a neural planning approach, comprising a conditional deep neural generator and discriminator with neural gradients-based fast projection operator. We also introduce neural task and scene representations conditioned on which the CoMPNetX generates implicit manifold configurations to turbo-charge any underlying classical planner such as Sampling-based Motion Planning methods for quickly solving complex constrained planning tasks. We show that our method finds path solutions with high success rates and lower computation times than state-of-the-art traditional path-finding tools on various challenging scenarios.
翻译:受限制的动作规划是一个具有挑战性的研究领域,目的是在特定起始点和目标配置之间的制约点上找到一种无碰撞路径。这些规划问题出乎意料地经常出现,例如机器人操纵执行日常生活辅助任务。然而,没有多少限制动作规划的解决方案,而那些在寻找多块块的路径解决方案方面在计算上非常复杂的时间上挣扎的解决方案。为了应对这一挑战,我们介绍了控制动作规划网络X(COMPNetX) 。这是一种神经规划方法,包括一个有条件的深神经力发电机和基于神经梯度的快速投影操作器歧视器。我们还引入了神经任务和场景展示,而COMPNetX生成了隐含的多重配置,用以向任何基本的典型规划师,如取样基础的机动规划方法,以快速解决复杂的受限制的规划任务。我们展示的方法在各种富有挑战的情景上找到路径解决方案,其成功率高,计算时间比最先进的传统路径调查工具要低。