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A Simulation-based End-to-End Learning Framework for Evidential Occupancy Grid Mapping

2021-02-25 07:40:00
Raphael van Kempen, Bastian Lampe, Timo Woopen, Lutz Eckstein

Abstract

Evidential occupancy grid maps (OGMs) are a popular representation of the environment of automated vehicles. Inverse sensor models (ISMs) are used to compute OGMs from sensor data such as lidar point clouds. Geometric ISMs show a limited performance when estimating states in unobserved but inferable areas and have difficulties dealing with ambiguous input. Deep learning-based ISMs face the challenge of limited training data and they often cannot handle uncertainty quantification yet. We propose a deep learning-based framework for learning an OGM algorithm which is both capable of quantifying uncertainty and which does not rely on manually labeled data. Results on synthetic and on real-world data show superiority over other approaches.

Abstract (translated)

URL

https://arxiv.org/abs/2102.12718

PDF

https://arxiv.org/pdf/2102.12718.pdf


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