Detecting motorcycle helmet use with deep learning

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SIEBERT, Felix Wilhelm, Hanhe LIN, 2020. Detecting motorcycle helmet use with deep learning. In: Accident Analysis & Prevention. Elsevier. 134, 105319. ISSN 0001-4575. eISSN 1879-2057. Available under: doi: 10.1016/j.aap.2019.105319

@article{Siebert2020-01Detec-48138, title={Detecting motorcycle helmet use with deep learning}, year={2020}, doi={10.1016/j.aap.2019.105319}, volume={134}, issn={0001-4575}, journal={Accident Analysis & Prevention}, author={Siebert, Felix Wilhelm and Lin, Hanhe}, note={Article Number: 105319} }

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