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Driver Behavior Extraction from Videos in Naturalistic Driving Datasets with 3D ConvNets

2020-11-30 15:53:15
Hanwen Miao, Shengan Zhang, Carol Flannagan

Abstract

Naturalistic driving data (NDD) is an important source of information to understand crash causation and human factors and to further develop crash avoidance countermeasures. Videos recorded while driving are often included in such datasets. While there is often a large amount of video data in NDD, only a small portion of them can be annotated by human coders and used for research, which underuses all video data. In this paper, we explored a computer vision method to automatically extract the information we need from videos. More specifically, we developed a 3D ConvNet algorithm to automatically extract cell-phone-related behaviors from videos. The experiments show that our method can extract chunks from videos, most of which (~79%) contain the automatically labeled cell phone behaviors. In conjunction with human review of the extracted chunks, this approach can find cell-phone-related driver behaviors much more efficiently than simply viewing video.

Abstract (translated)

URL

https://arxiv.org/abs/2011.14922

PDF

https://arxiv.org/pdf/2011.14922.pdf


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