Driving Behavior Recognition Based on Sensors in Mobile Phone

The more traditional approach for driving behavior recognition is based on video signal processing techniques, with the disadvantages of undesirable modifications to the vehicle (e.g. mounting a video camera oriented toward drivers) and a large amount of data processing. In this paper, a new approach is proposed using mobile phone sensors as a detection devices to identify the behaviors and status of drivers. Our proposed method can detect several basic driving behaviors: starting or stopping, braking or acceleration, and turning right or left. The experimental results have justified the feasibility of the method.

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