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arxiv 2007.00161 v1 pith:SOGVIA6B submitted 2020-07-01 cs.RO cs.AIstat.AP

Directional Primitives for Uncertainty-Aware Motion Estimation in Urban Environments

classification cs.RO cs.AIstat.AP
keywords primitivesdistributionsinformationmotiondirectionaldrivingestimationuncertainty-aware
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We can use driving data collected over a long period of time to extract rich information about how vehicles behave in different areas of the roads. In this paper, we introduce the concept of directional primitives, which is a representation of prior information of road networks. Specifically, we represent the uncertainty of directions using a mixture of von Mises distributions and associated speeds using gamma distributions. These location-dependent primitives can be combined with motion information of surrounding vehicles to predict their future behavior in the form of probability distributions. Experiments conducted on highways, intersections, and roundabouts in the Carla simulator, as well as real-world urban driving datasets, indicate that primitives lead to better uncertainty-aware motion estimation.

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