Learning task error models for manipulation

ICRA(2013)

引用 38|浏览113
暂无评分
摘要
Precise kinematic forward models are important for robots to successfully perform dexterous grasping and manipulation tasks, especially when visual servoing is rendered infeasible due to occlusions. A lot of research has been conducted to estimate geometric and non-geometric parameters of kinematic chains to minimize reconstruction errors. However, kinematic chains can include non-linearities, e.g. due to cable stretch and motor-side encoders, that result in significantly different errors for different parts of the state space. Previous work either does not consider such non-linearities or proposes to estimate non-geometric parameters of carefully engineered models that are robot specific. We propose a data-driven approach that learns task error models that account for such unmodeled non-linearities. We argue that in the context of grasping and manipulation, it is sufficient to achieve high accuracy in the task relevant state space. We identify this relevant state space using previously executed joint configurations and learn error corrections for those. Therefore, our system is developed to generate subsequent executions that are similar to previous ones. The experiments show that our method successfully captures the non-linearities in the head kinematic chain (due to a counterbalancing spring) and the arm kinematic chains (due to cable stretch) of the considered experimental platform, see Fig. 1. The feasibility of the presented error learning approach has also been evaluated in independent DARPA ARM-S testing contributing to successfully complete 67 out of 72 grasping and manipulation tasks.
更多
查看译文
关键词
head kinematic chain,robot kinematics,nongeometric parameters,robots,precise kinematic forward models,unmodeled nonlinearities,parameter estimation,learning (artificial intelligence),learning task error models,visual servoing,minimize reconstruction errors,counterbalancing spring,occlusions,dexterous manipulators,joint configurations,data-driven approach,learn error corrections,arm kinematic chains,task relevant state space,manipulation tasks,cable stretch,dexterous grasping,motor-side encoders,error learning approach,darpa arm-s testing,grasping tasks,nongeometric parameter estimation,learning artificial intelligence,computational modeling,kinematics
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要