欢迎访问《汽车安全与节能学报》,

汽车安全与节能学报 ›› 2022, Vol. 13 ›› Issue (4): 651-658.DOI: 10.3969/j.issn.1674-8484.2022.04.006

• 汽车安全 • 上一篇    下一篇

基于改进EfficientDet网络的疲劳驾驶状态检测方法

宋巍(), 张光德()   

  1. 武汉科技大学 汽车与交通工程学院,武汉 430081, 中国
  • 收稿日期:2022-05-25 修回日期:2022-07-25 出版日期:2022-12-31 发布日期:2023-01-01
  • 通讯作者: 张光德
  • 作者简介:*张光德(1964—),男(汉),教授。gd-zhang@wust.edu.cn
    宋巍(1983—),男(汉),湖北,博士。weisongwust@163.com
  • 基金资助:
    动力机械与工程教育部重点实验室开放基金(2955232)

Fatigue driving state detection method based on improved EfficientDet

SONG Wei(), ZHANG Guangde()   

  1. School of Automotive and Traffic Engineering, Wuhan University of Science and Technology, Wuhan 430081, China
  • Received:2022-05-25 Revised:2022-07-25 Online:2022-12-31 Published:2023-01-01
  • Contact: ZHANG Guangde

摘要:

为提高对司机疲劳驾驶状态视觉检测的精度和效率,降低硬件配置需求,提出了一种基于改进的EfficientDet深度学习网络的疲劳驾驶状态视觉检测方法。用深度可分离卷积和视觉注意力机制,来构建EfficientDet驾驶员面部图像特征提取网络;用双向特征金字塔网络和k-means先验框聚类方法,来构建EfficientDet驾驶员状态检测网络;采用Perclos瞌睡程度度量指数,来判定驾驶员疲劳状态;对比分析了3种不同深度、不同宽度、不同分辨率大小的改进EfficientDet模型以及YOLO V3、Faster-RCNN模型检测效果。结果表明:在这些方案中,EfficientDet-D2模型检测效果最佳,其平均精度97.92%,召回率96.75%,误检率低于2.39%,漏检率低于1.78%。

关键词: 深度学习, 图像识别, 疲劳驾驶, 状态检测, 改进的EfficientDet深度学习网络

Abstract:

A visual detection method was proposed for drivers’ fatigue driving state based on the improved EffcientDet deep learning network to improve the accuracy and efficiency of visual detection and to reduce the requirements of hardware configuration. An EfficientNet network was constructed for extracting driver facial image features by using the deep separable convolution and the visual attention mechanism. An EffcientDet driver state detection network was constructed by using the bidirectional feature pyramid network and the k-means prior frame clustering. The PERCLOS drowsy degree measurement coefficient was used to judge driver fatigue state. Three EfficientDet networks, YOLO V3, and Faster-RCNN were compared and analyzed with different depths, widths and input resolutions. The results show that the improved efficientdet-D2 algorithm has the best efficiency among these algorithms with an average accuracy of 97.92%, a recall rate of 96.75%, an error rate less than 2.39%, and a missed rate less than 1.78%.

Key words: deep learning, image recognition, fatigue driving, state detection, improved EfficientDet deep learning networks

中图分类号: