Assessing Test Scenarios for Autonomous Driving Using Probabilistic Model Checking
This program is tentative and subject to change.
Testing autonomous vehicles is a challenging task, usually carried out using test scenarios, which are often derived manually from accident statistics and real traffic datasets, relying on expert knowledge and intuition to select the most relevant ones, a cumbersome task given the large size of these datasets. In this paper, we suggest a model-based approach to compare scenarios using quantitative measures computed by probabilistic model checking of user-defined temporal logic properties characterizing interesting event sequences. This approach facilitates the selection of the scenarios having the best tradeoff between coverage and overall testing cost (both for simulation and field testing). We illustrate the approach by comparing variations of scenarios, derived from frequent situations in accident statistics, using measures such as collision probability, arrival probability, and duration.
This program is tentative and subject to change.
Thu 18 SepDisplayed time zone: Athens change
14:00 - 15:30 | Testing in Complex and Safety-Critical SystemsGeneral Track at Atrium C Chair(s): Franz Wotawa Graz University of Technology | ||
14:00 30mTalk | Assessing Test Scenarios for Autonomous Driving Using Probabilistic Model Checking General Track Jean-Baptiste Horel INRIA, Philippe Ledent AEDVICES Consulting, Radu Mateescu INRIA, Wendelin Serwe INRIA, Aline Uwimbabazi INRIA | ||
14:30 30mTalk | Passive Testing of Vehicular Embedded Systems: An Industrial Case Study with T-EARS and Napkin Studio General Track Aleksandra Nicaj Malardalen University, Daniel Flemström RISE, Eduard P. Enoiu Malardalen University, Wasif Afzal Mälardalen University | ||
15:00 30mTalk | False Positive Detection in Instrumentation and Control System Testing General Track |