Motion Planning in Compressed Representation Spaces

arXiv:2606.30940v1 Announce Type: new Abstract: Deep learning methods have vastly expanded the capabilities of motion planning in robotics applications, as learning priors from large-scale data has been shown to be essential in capturing the highly complex behavior required for solving tasks such as manipulation or navigation for autonomous vehicles. At the same time, model-based planning algorithms based on search or optimization remain an essential tool due to their flexibility, efficiency, an...

arXiv cs.RO ·Lukas Lao Beyer, Sertac Karaman ·
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