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Safe and Efficient Path Planning under Uncertainty via Deep Collision Probability Fields

Authors :
Herrmann, Felix
Zach, Sebastian
Banfi, Jacopo
Peters, Jan
Chalvatzaki, Georgia
Tateo, Davide
Publication Year :
2024

Abstract

Estimating collision probabilities between robots and environmental obstacles or other moving agents is crucial to ensure safety during path planning. This is an important building block of modern planning algorithms in many application scenarios such as autonomous driving, where noisy sensors perceive obstacles. While many approaches exist, they either provide too conservative estimates of the collision probabilities or are computationally intensive due to their sampling-based nature. To deal with these issues, we introduce Deep Collision Probability Fields, a neural-based approach for computing collision probabilities of arbitrary objects with arbitrary unimodal uncertainty distributions. Our approach relegates the computationally intensive estimation of collision probabilities via sampling at the training step, allowing for fast neural network inference of the constraints during planning. In extensive experiments, we show that Deep Collision Probability Fields can produce reasonably accurate collision probabilities (up to 10^{-3}) for planning and that our approach can be easily plugged into standard path planning approaches to plan safe paths on 2-D maps containing uncertain static and dynamic obstacles. Additional material, code, and videos are available at https://sites.google.com/view/ral-dcpf.<br />Comment: Preprint version of a paper accepted to the IEEE Robotics and Automation Letters

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.04306
Document Type :
Working Paper