Fast Stochastic Functional Path Planning in Occupancy MapsDownload PDFOpen Website

2019 (modified: 14 Jun 2022)ICRA 2019Readers: Everyone
Abstract: Path planners are generally categorised as either trajectory optimisers or sampling-based planners. The latter is the predominant planning paradigm for occupancy maps. Most trajectory optimisers require a fully defined artificial potential field for planning and cannot incorporate updates from a partially observed model such as an occupancy map. A stochastic trajectory optimiser capable of planning over occupancy map was presented in [1]. However, its scalability is limited by the cubic complexity of the Gaussian process path representation. In this work, we introduce a novel highly expressive path representation based on kernel approximation to perform trajectory optimisation over occupancy maps. This approach reduces the computational complexity to a fixed cost that only depends on the number of features. We show that stochastic sampling is crucial for planning in occupancy maps and present comparisons to other state-of-the-art planning methods, using simulated and real occupancy data. These experiments demonstrate the significant reduction in runtime, resulting in performance comparable to or better than sampling-based methods.
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