PRISMA: A Novel Approach for Deriving Probabilistic Surrogate Safety Measures for Risk Evaluation
Erwin de Gelder, Kingsley Adjenughwure, Jeroen Manders, Ron Snijders,, Jan-Pieter Paardekooper, Olaf Op den Camp, Arturo Tejada, Bart De Schutter

TL;DR
PRISMA introduces a data-driven, probabilistic approach to derive surrogate safety measures that enable real-time risk estimation in traffic scenarios without relying on specific trajectory assumptions.
Contribution
The paper presents PRISMA, a novel method for deriving multiple, assumption-free surrogate safety measures using data-driven trajectory prediction and probabilistic risk modeling.
Findings
Successfully derived an SSM for longitudinal traffic interactions.
The SSM matches expected risk trends in benchmarking.
PRISMA reduces reliance on trajectory assumptions for risk estimation.
Abstract
Surrogate Safety Measures (SSMs) are used to express road safety in terms of the safety risk in traffic conflicts. Typically, SSMs rely on assumptions regarding the future evolution of traffic participant trajectories to generate a measure of risk, restricting their applicability to scenarios where these assumptions are valid. In response to this limitation, we present the novel Probabilistic RISk Measure derivAtion (PRISMA) method. The objective of the PRISMA method is to derive SSMs that can be used to calculate in real time the probability of a specific event (e.g., a crash). The PRISMA method adopts a data-driven approach to predict the possible future traffic participant trajectories, thereby reducing the reliance on specific assumptions regarding these trajectories. Since the PRISMA is not bound to specific assumptions, the PRISMA method offers the ability to derive multiple SSMs…
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Taxonomy
TopicsTraffic and Road Safety · Autonomous Vehicle Technology and Safety · Traffic control and management
