Classification for Safety-Critical Car-Cyclist Scenarios Using Machine Learning

conference paper
The number of fatal car-cyclist accidents is increasing. Advanced Driver Assistance Systems (ADAS) can improve the safety of cyclists, but they need to be tested with realistic safety-critical car-cyclist scenarios. In order to store only relevant scenarios, an online classification algorithm is needed. We demonstrate that machine learning techniques can be used to detect and classify those scenarios based on their trajectory data. A dataset consisting of 99 realistic car-cyclist scenarios is gathered using an instrumented vehicle. We achieved a classification accuracy of the gathered data of 87.9%. The execution time of only 45.8 us shows that the algorithm is suitable for online purposes. cop. 2015 IEEE.
TNO Identifier
530897
ISBN
9781467365956
Publisher
Institute of Electrical and Electronics Engineers Inc.
Article nr.
7313415
Source title
IEEE Conference on Intelligent Transportation Systems, Proceedings, ITSC
Pages
1995-2000
Files
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