2022
DOI: 10.3390/mca27040054
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Learning Motion Primitives Automata for Autonomous Driving Applications

Abstract: Motion planning methods often rely on libraries of primitives. The selection of primitives is then crucial for assuring feasible solutions and good performance within the motion planner. In the literature, the library is usually designed by either learning from demonstration, relying entirely on data, or by model-based approaches, with the advantage of exploiting the dynamical system’s property, e.g., symmetries. In this work, we propose a method combining data with a dynamical model to optimally select primit… Show more

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Cited by 7 publications
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References 44 publications
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