运动规划
计算机科学
机器人
正多边形
仿人机器人
配置空间
碰撞
弹道
数学优化
算法
数学
人工智能
物理
几何学
量子力学
计算机安全
天文
作者
John Schulman,Yan Duan,Jonathan Ho,Alex Pui‐Wai Lee,Ibrahim Awwal,Henry Bradlow,Jia Pan,Sachin Patil,Ken Goldberg,Pieter Abbeel
标识
DOI:10.1177/0278364914528132
摘要
We present a new optimization-based approach for robotic motion planning among obstacles. Like CHOMP (Covariant Hamiltonian Optimization for Motion Planning), our algorithm can be used to find collision-free trajectories from naïve, straight-line initializations that might be in collision. At the core of our approach are (a) a sequential convex optimization procedure, which penalizes collisions with a hinge loss and increases the penalty coefficients in an outer loop as necessary, and (b) an efficient formulation of the no-collisions constraint that directly considers continuous-time safety Our algorithm is implemented in a software package called TrajOpt. We report results from a series of experiments comparing TrajOpt with CHOMP and randomized planners from OMPL, with regard to planning time and path quality. We consider motion planning for 7 DOF robot arms, 18 DOF full-body robots, statically stable walking motion for the 34 DOF Atlas humanoid robot, and physical experiments with the 18 DOF PR2. We also apply TrajOpt to plan curvature-constrained steerable needle trajectories in the SE(3) configuration space and multiple non-intersecting curved channels within 3D-printed implants for intracavitary brachytherapy. Details, videos, and source code are freely available at: http://rll.berkeley.edu/trajopt/ijrr .
科研通智能强力驱动
Strongly Powered by AbleSci AI