An Application-Driven Conceptualization of Corner Cases for Perception in Highly Automated Driving

2021 IEEE Intelligent Vehicles Symposium (IV)(2021)

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摘要
Systems and functions that rely on machine learning (ML) are the basis of highly automated driving. An essential task of such ML models is to reliably detect and interpret unusual, new, and potentially dangerous situations. The detection of those situations, which we refer to as corner cases, is highly relevant for successfully developing, applying, and validating automotive perception functions i...
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关键词
Uncertainty,Laser radar,Intelligent vehicles,Radar detection,Machine learning,Detectors,Distance measurement
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