Constrained Motion Planning Networks X
Ahmed H. Qureshi, Jiangeng Dong, Asfiya Baig, Michael C. Yip

TL;DR
CoMPNetX is a neural network-based approach that accelerates constrained motion planning by generating implicit manifold configurations, significantly reducing computation time and increasing success rates compared to traditional methods.
Contribution
It introduces a neural planning framework with a generator and discriminator, combined with neural gradients, to efficiently solve complex constrained motion planning problems.
Findings
High success rates in finding paths
Lower computation times than traditional methods
Effective on challenging scenarios
Abstract
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…
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