Administrator by China Associction for Science and Technology
Sponsored by China Society of Automotive Engineers
Published by AUTO FAN Magazine Co. Ltd.

Automotive Engineering ›› 2021, Vol. 43 ›› Issue (8): 1203-1209.doi: 10.19562/j.chinasae.qcgc.2021.08.011

Previous Articles     Next Articles

Study on Driving Behavior Detection Method Based on Improved Long and Short⁃term Memory Network

Dongmei Shi1(),Feng Xiao2   

  1. 1.Department of Computer Science and Technology,Suzhou College of Information Technology,Suzhou 215200
    2.School of Computer Science and Engineering,Xi’an Technological University,Xi’an 710021
  • Received:2021-03-02 Revised:2021-05-30 Online:2021-08-25 Published:2021-08-20
  • Contact: Dongmei Shi E-mail:sdm1976@126.com

Abstract:

Fatigue driving and unsafe driving behavior are the main causes of traffic accidents. With the progress of intelligent transportation technology, using deep learning algorithm to detect driving behavior has become one of the hotspots of research. On the basis of convolution neural network (CNN) and long?term memory neural network, a hybrid dual stream convolution neural network algorithm is proposed by combining attention mechanism to improve network structure. In spatial flow channel, CNN is used to extract the spatial feature values of video image and the traditional mean pooling is replaced by spatial pyramid pooling is used to replace mean pooling, with the transformation of feature map unified. In time stream channel, single shot detection algorithm is adopted to calculate two adjacent frames of optical flow images of video sequence for detecting small facial targets such as human eyes. Then the fusion and classification of image features are carried out. Finally, experiments are performed on LFW dataset and self?built dataset. The results show that with the method adopted the accuracy of face recognition and fatigue driving detection is 1.36 and 2.5 percentage points higher than other methods respectively.

Key words: safe driving, CNN, LSTM, SSD, face recognition, fatigue driving detection