Evaluation of automated driving system safety metrics with logged vehicle trajectory data
CoRR(2024)
摘要
Real-time safety metrics are important for the automated driving system (ADS)
to assess the risk of driving situations and to assist the decision-making.
Although a number of real-time safety metrics have been proposed in the
literature, systematic performance evaluation of these safety metrics has been
lacking. As different behavioral assumptions are adopted in different safety
metrics, it is difficult to compare the safety metrics and evaluate their
performance. To overcome this challenge, in this study, we propose an
evaluation framework utilizing logged vehicle trajectory data, in that vehicle
trajectories for both subject vehicle (SV) and background vehicles (BVs) are
obtained and the prediction errors caused by behavioral assumptions can be
eliminated. Specifically, we examine whether the SV is in a collision
unavoidable situation at each moment, given all near-future trajectories of
BVs. In this way, we level the ground for a fair comparison of different safety
metrics, as a good safety metric should always alarm in advance to the
collision unavoidable moment. When trajectory data from a large number of trips
are available, we can systematically evaluate and compare different metrics'
statistical performance. In the case study, three representative real-time
safety metrics, including the time-to-collision (TTC), the PEGASUS Criticality
Metric (PCM), and the Model Predictive Instantaneous Safety Metric (MPrISM),
are evaluated using a large-scale simulated trajectory dataset. The proposed
evaluation framework is important for researchers, practitioners, and
regulators to characterize different metrics, and to select appropriate metrics
for different applications. Moreover, by conducting failure analysis on moments
when a safety metric failed, we can identify its potential weaknesses which are
valuable for its potential refinements and improvements.
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关键词
Safety metric,autonomous vehicle,logged trajectory data
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