Bai Tangbo, Gao Jialin, Yang Jianwei, Yao Dechen
School of Mechanical-Electronic and Vehicle Engineering, Beijing University of Civil Engineering and Architecture, Beijing 100044, China.
Beijing Key Laboratory of Performance Guarantee on Urban Rail Transit Vehicles, Beijing University of Civil Engineering and Architecture, Beijing 100044, China.
Entropy (Basel). 2021 Oct 30;23(11):1437. doi: 10.3390/e23111437.
The detection of rail surface defects is an important tool to ensure the safe operation of rail transit. Due to the complex diversity of track surface defect features and the small size of the defect area, it is difficult to obtain satisfying detection results by traditional machine vision methods. The existing deep learning-based methods have the problems of large model sizes, excessive parameters, low accuracy and slow speed. Therefore, this paper proposes a new method based on an improved YOLOv4 (You Only Look Once, YOLO) for railway surface defect detection. In this method, MobileNetv3 is used as the backbone network of YOLOv4 to extract image features, and at the same time, deep separable convolution is applied on the PANet layer in YOLOv4, which realizes the lightweight network and real-time detection of the railway surface. The test results show that, compared with YOLOv4, the study can reduce the amount of the parameters by 78.04%, speed up the detection by 10.36 frames per second and decrease the model volume by 78%. Compared with other methods, the proposed method can achieve a higher detection accuracy, making it suitable for the fast and accurate detection of railway surface defects.
铁轨表面缺陷检测是确保轨道交通安全运行的一项重要手段。由于轨道表面缺陷特征复杂多样且缺陷区域尺寸较小,传统机器视觉方法难以获得令人满意的检测结果。现有的基于深度学习的方法存在模型尺寸大、参数过多、准确率低和速度慢等问题。因此,本文提出一种基于改进的YOLOv4(You Only Look Once,即你只看一次)的新方法用于铁轨表面缺陷检测。在该方法中,将MobileNetv3用作YOLOv4的骨干网络来提取图像特征,同时在YOLOv4的PANet层应用深度可分离卷积,实现了铁路表面的轻量级网络和实时检测。测试结果表明,与YOLOv4相比,该研究可将参数数量减少78.04%,检测速度提高每秒10.36帧,模型体积减小78%。与其他方法相比,所提方法能够实现更高的检测准确率,使其适用于铁轨表面缺陷的快速、准确检测。