Data underlying the publication: Learning collision risk proactively from naturalistic driving data at scale
DOI: 10.4121/9caa1e6c-9abd-4e36-ae28-c9ea4542d940
Datacite citation style
Dataset
This dataset includes the resulting data of the research: Learning collision risk proactively from naturalistic driving data at scale. It is organised into two zipped files: one from the PreparedData folder and another from the ResultData folder. The PreparedData archive contains the processed and segmented training samples from highD, ArgoverseHV, and SHRP2 NDS, along with the checkpoints and loss logs generated during GSSM posterior inference. The ResultData archive gathers the outcomes of the full experimental pipeline, including test set preparation, first-stage safety evaluations, and second-stage conflict and risk analyses. Overall, this dataset supports the research aimed at learning collision risk from naturalistic driving interactions, where a context-aware, scalable, and generalisable method is proposed. The scripts that produced these data are open-sourced at https://github.com/Yiru-Jiao/GSSM
History
- 2025-06-13 first online, published, posted
Publisher
4TU.ResearchDataFormat
HDF5, CSV, PTHAssociated peer-reviewed publication
Learning Collision Risk from Naturalistic Driving with Generalised Surrogate Safety MeasuresDerived from
Funding
- TU Delft AI Labs programme [more info...] Delft University of Technology
Organizations
TU Delft, Faculty of Civil Engineering and Geosciences, Department of Transport and Planning, Traffic Systems EngineeringDATA
Files (3)
- 4,606 bytesMD5:
2d73accf005e1ff6dc51bf612e1d8300
readme.md - 767,582,680 bytesMD5:
c4d1248a6ace258a5a5015a324d88448
PreparedData.zip - 2,866,683,631 bytesMD5:
8ec622b6cea3e82c690d49a88cd0171a
ResultData.zip -
download all files (zip)
3,634,270,917 bytes unzipped