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Sensor Visibility Estimation: Metrics and Methods for Systematic Performance Evaluation and Improvement

Joachim Boerger,Marc Patrick Zapf, Marat Kopytjuk, Xinrun Li,Claudius Glaeser

2022 IEEE 25TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC)(2022)

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摘要
Sensor visibility is crucial for safety-critical applications in automotive, robotics, smart infrastructure and others: In addition to object detection and occupancy mapping, visibility describes where a sensor can potentially measure or is blind. This knowledge can enhance functional safety and perception algorithms or optimize sensor topologies. Despite its significance, to the best of our knowledge, neither a common definition of visibility nor performance metrics exist yet. We close this gap and provide a definition of visibility, derived from a use case review. We introduce metrics and a framework to assess the performance of visibility estimators. Our metrics are verified with labeled real-world and simulation data from infrastructure radars and cameras: The framework easily identifies false visible or false invisible estimations which are safety-critical. Applying our metrics, we enhance the radar and camera visibility estimators by modeling the 3D elevation of sensor and objects. This refinement outperforms the conventional planar 2D approach in trustfulness and thus safety.
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关键词
common definition,performance metrics,infrastructure radars,cameras,false visible estimations,false invisible estimations,radar,camera visibility estimators,sensor visibility estimation,systematic performance evaluation,safety-critical applications,smart infrastructure,occupancy mapping,functional safety,sensor topologies
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