Abstract
AbstractDangerous driving behavior is a major contributing factor to road traffic accidents. Identifying and intervening in drivers’ unsafe driving behaviors is thus crucial for preventing accidents and ensuring road safety. However, many of the existing methods for monitoring drivers’ behaviors rely on computer vision technology, which has the potential to invade privacy. This paper proposes a radar-based deep learning method to analyze driver behavior. The method utilizes FMCW radar along with TOF radar to identify five types of driving behavior: normal driving, head up, head twisting, picking up the phone, and dancing to music. The proposed model, called RFDANet, includes two parallel forward propagation channels that are relatively independent of each other. The range-Doppler information from the FMCW radar and the position information from the TOF radar are used as inputs. After feature extraction by CNN, an attention mechanism is introduced into the deep architecture of the branch layer to adjust the weight of different branches. To further recognize driving behavior, LSTM is used. The effectiveness of the proposed method is verified by actual driving data. The results indicate that the average accuracy of each of the five types of driving behavior is 94.5%, which shows the advantage of using the proposed deep learning method. Overall, the experimental results confirm that the proposed method is highly effective for detecting drivers’ behavior.
Funder
Key Research and Development Projects of Zhejiang Province
Publisher
Springer Science and Business Media LLC
Subject
Computational Mathematics,Engineering (miscellaneous),Information Systems,Artificial Intelligence
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