Learning to Predict Collision Risk from Simulated Video Data

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5 Citaten (Scopus)
479 Downloads (Pure)

Samenvatting

We propose an image-based collision risk prediction model and a training strategy that allows training on simulated video data and successfully generalizes to real data. By doing so, we solve the data scarcity problem of collecting and labeling real (near) collisions, which are exceptionally rare events. Domain generalization from simulated to real data is taken into account by design by decoupling the learning strategy, and using task-specific, domain-resilient intermediate representations. Specifically, we use optical flow and vehicle bounding boxes, since they are instinctively related to the task of collision risk prediction and because their simulated-to-real domain gap is significantly lower than that of camera video data, i.e., they are more domain resilient. To demonstrate our approach, we present RiskNet, a novel neural network for image-based collision risk prediction, which classifies individual frames of a video sequence of a front-facing camera as safe or unsafe. Additionally, we present two novel datasets: the simulated Prescan dataset (which we intend to make publicly available) for training and the YouTube Driving Incidents Database (YDID) for real-world testing. The performance of RiskNet, trained solely on simulated data and tested on the real-world YDID, is comparable to that of a human driver, both in accuracy (91.8% vs. 93.6%) and F1-score (0.92 vs 0.94).
Originele taal-2Engels
Titel2022 IEEE Intelligent Vehicles Symposium (IV)
UitgeverijInstitute of Electrical and Electronics Engineers
Pagina's943-951
Aantal pagina's9
ISBN van elektronische versie978-1-6654-8821-1
DOI's
StatusGepubliceerd - 19 jul. 2022
Evenement2022 IEEE Intelligent Vehicles Symposium, IV 2022 - Eurogress Aachen, Aachen, Duitsland
Duur: 4 jun. 20229 jun. 2022
Congresnummer: 33
https://iv2022.com/

Congres

Congres2022 IEEE Intelligent Vehicles Symposium, IV 2022
Verkorte titelIV 2022
Land/RegioDuitsland
StadAachen
Periode4/06/229/06/22
Internet adres

Bibliografische nota

Presented as Oral Presentation at IEEE IV 2022.
Dataset used for training the method described in this paper will become public at https://github.com/tue-mps/risknet

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