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A Deep Learning Based Model for Driving Risk Assessment
2019
Proceedings of the 52nd Hawaii International Conference on System Sciences
unpublished
In this paper a novel multilayer model is proposed for assessing driving risk. Studying aggressive behavior via massive driving data is essential for protecting road traffic safety and reducing losses of human life and property in smart city context. In particular, identifying aggressive behavior and driving risk are multi-factors combined evaluation process, which must be processed with time and environment. For instance, improper time and environment may facilitate abnormal driving behavior.
doi:10.24251/hicss.2019.158
fatcat:5bieyb5nojd6jl57fm42wctkou