Prediction of Bottleneck Points for Manipulation Planning in Cluttered Environment using a 3D Convolutional Neural Network

Patil, Indraneel, Rout, B. K., Kalaichelvi, V.

arXiv.org Artificial Intelligence 

Latest research in industrial robotics is aimed at making human robot collaboration possible seamlessly. For this purpose, industrial robots are expected to work on the fly in unstructured and cluttered environments and hence the subject of perception driven motion planning plays a vital role. Sampling bas ed motion planners are proven to be the most effective for such high dimensional planning problems with real time constraints . Unluckily r andom stochastic samplers suffer from the phenomenon of'narrow passages' or bottleneck regions which need targeted sa mpling to improve their convergence rate . Also identifying these bottleneck regions in a diverse set of planning problems is a challenge. In this paper an attempt has been made to address these two problems by designing an intelligent'bottleneck guided' h euristic for a Rapidly Exploring Random Tree Star (RRT*) planner which is based on relevant context extracted from the planning scenario using a 3D Convolutional Neural Network and it is also proven that the proposed technique generalizes to unseen problem instances. This paper benchmarks the technique (bottleneck guided RRT*) against a 10% Goal biased RRT* planner, show s significant improvement in planning time and memory requirement and uses ABB 1410 industrial manipulator as a platform for implantation a nd validation of the results.

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