Machine-learning based system for path and/or motion planning and method of training the same

A system and method for path and/or motion planning and for training such a system are described. In one aspect, the method comprises generating a sequence of predicted occupancy grid maps (OGMs) for T−T1 time steps based on a sequence of OGMs for 0−T1 time steps, a reference map of an environment i...

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Bibliographic Details
Main Authors Ku, Jason Philip, Amirloo Abolfathi, Elmira, Luo, Jun, Rohani, Mohsen
Format Patent
LanguageEnglish
Published 28.11.2023
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Summary:A system and method for path and/or motion planning and for training such a system are described. In one aspect, the method comprises generating a sequence of predicted occupancy grid maps (OGMs) for T−T1 time steps based on a sequence of OGMs for 0−T1 time steps, a reference map of an environment in which an autonomous vehicle is operating, and a trajectory. A cost volume is generated for the sequence of predicted OGMs. The cost volume comprises a plurality of cost maps for T−T1 time steps. Each cost map corresponds to a predicted OGM in the sequence of predicted OGMs and has the same dimensions as the corresponding predicted OGM. Each cost map comprises a plurality of cells. Each cell in the cost map represents a cost of the cell in corresponding predicted OGM being occupied in accordance with a policy defined by a policy function.
Bibliography:Application Number: US202016810552