Accurate speed estimation of road vehicles is important for several reasons. One is speed limit enforcement, which represents a crucial tool in decreasing traffic accidents and fatalities. Compared with other research areas and domains, the number of available datasets for vehicle speed estimation is still very limited. We present a dataset of on-road audio-video recordings of single vehicles passing by a camera at known speeds, maintained stable by the on-board cruise control. The dataset contains thirteen vehicles, selected to be as diverse as possible in terms of manufacturer, production year, engine type, power and transmission, resulting in a total of 400 annotated audio-video recordings. The dataset is fully available and intended as a public benchmark to facilitate research in audio-video vehicle speed estimation. In addition to the dataset, we propose a cross-validation strategy which can be used in a machine learning model for vehicle speed estimation. Two approaches to training-validation split of the dataset are proposed.
@article{arxiv.2212.01651,
title = {A dataset for audio-video based vehicle speed estimation},
author = {Slobodan Djukanović and Nikola Bulatović and Ivana Čavor},
journal= {arXiv preprint arXiv:2212.01651},
year = {2022}
}
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30th Telecommunications Forum TELFOR 2022, Belgrade, Serbia, November 15-16, 2022. 5 pages, 2 figures, 1 table