Dynamic and Systematic Survey of Deep Learning Approaches for Driving
Behavior Analysis
- URL: http://arxiv.org/abs/2109.08996v1
- Date: Sat, 18 Sep 2021 19:47:03 GMT
- Title: Dynamic and Systematic Survey of Deep Learning Approaches for Driving
Behavior Analysis
- Authors: Farid Talebloo, Emad A. Mohammed, Behrouz H. Far
- Abstract summary: Analyzing driving behaviour could lead to optimize and avoid mentioned issues.
By identifying the type of driving and mapping them to the consequences of that type of driving, we can get a model to prevent them.
- Score: 2.879036956042183
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Improper driving results in fatalities, damages, increased energy
consumptions, and depreciation of the vehicles. Analyzing driving behaviour
could lead to optimize and avoid mentioned issues. By identifying the type of
driving and mapping them to the consequences of that type of driving, we can
get a model to prevent them. In this regard, we try to create a dynamic survey
paper to review and present driving behaviour survey data for future
researchers in our research. By analyzing 58 articles, we attempt to classify
standard methods and provide a framework for future articles to be examined and
studied in different dashboards and updated about trends.
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