IEEE Access (Jan 2022)

CEAM-YOLOv7: Improved YOLOv7 Based on Channel Expansion and Attention Mechanism for Driver Distraction Behavior Detection

  • Shugang Liu,
  • Yujie Wang,
  • Qiangguo Yu,
  • Hongli Liu,
  • Zhan Peng

DOI
https://doi.org/10.1109/ACCESS.2022.3228331
Journal volume & issue
Vol. 10
pp. 129116 – 129124

Abstract

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Driver distraction behavior is prone to induce traffic accidents. Therefore, it is necessary to detect it to caution drivers in time for traffic safety. In driver behavior recognition, the diversity of behaviors and driving environment can have a certain effect on detection accuracy, and most of the existing methods have serious information loss. These make it challenging to improve the real-time accuracy of driver distraction behavior. In this paper, we propose an improved YOLOv7 based on the channel expansion and attention mechanism for driver distraction behavior detection, named CEAM-YOLOv7. The global attention mechanism (GAM) module focuses on key information to improve accuracy. By inserting GAM into the Backbone and Head of YOLOv7, the global dimensional interaction features are scaled up, enabling the network to extract key features. Furthermore, In the CEAM-YOLOv7 architecture, the convolution computation has been significantly simplified, which is conducive to increasing the detection speed. Combined with the Inversion and contrast limited adaptive histogram equalization (CLAHE) image enhancement algorithm, a channel expansion (CE) algorithm for data augmentation is presented to further optimize the detection effect of infrared (IR) images. On the driver distraction IR dataset of Hunan University of Science and Technology (HNUST) and Hunan University (HNU), the verification results show that CEAM-YOLOv7 achieves a 20.26% higher mAP compared to the original YOLOv7 model and the FPS reaches 156, which illustrate that CEAM-YOLOv7 outperforms state-of-the-art methods in both accuracy and speed.

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