Fault detection of train mechanical parts using multi-mode aggregation feature enhanced convolution neural network

被引:0
|
作者
Ye Tao
Zhang Jun
Zhang Zhi-hao
Zhang Yi
Zhou Fu-qiang
Gao Xiao-zhi
机构
[1] China University of Mining and Technology,The Key Laboratory of Intelligent Mining and Robotics
[2] Bejing,School of Instrumentation Science and Opto
[3] School of Mechanical and Information Engineering,Electronics Engineering
[4] The State Key Laboratory of Coal Mining and Clean Utilization,Department of Electrical Engineering and Automation
[5] Ministry of Emergency Management,undefined
[6] Unmanned System Department of the 9th Academy of China Aerospace Science and Technology Corporation Limited,undefined
[7] China Academy of Aerospace Electronics Technology,undefined
[8] Beihang University,undefined
[9] University of Eastern Finland,undefined
关键词
Attention-guided detail feature enhancement module; CIoU Loss; Receptive field enhancement module; Two-step adjustment structure;
D O I
暂无
中图分类号
学科分类号
摘要
Faults in train mechanical parts pose a significant safety hazard to railway transportation. Although some image detection methods have replaced manual fault detection of train mechanical parts, the detection effect on small mechanical parts under low illumination conditions is not ideal. To improve the accuracy and efficiency of the detection of train faults under different environments, we propose a multi-mode aggregation feature enhanced network (MAFENet) based on a single-stage detector (SSD). This network uses the idea of a two-step adjustment structure from coarse to fine and uses the K-means algorithm to design anchors. The receptive field enhancement module (RFEM) is designed to obtain the fusion features of different receptive fields. The attention-guided detail feature enhancement module (ADEM) is designed to complement the detailed features of deep-level feature maps. Meanwhile, the complete intersection over union (CIoU) loss is used to obtain more accurate bounding boxes. The experimental results on the train mechanical parts fault (TMPF) dataset showed that the detection performance of MAFENet is better than those of other SSD models. MAFENet with an input size of 320 × 320 pixels can achieve a mean average precision (mAP) of 0.9787 and a detection speed of 33 frames per second (FPS), which indicates that it can realize real-time detection, has good robustness to images under different environmental conditions, and can be used to improve the efficiency of the detection of faulty train parts.
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收藏
页码:1781 / 1794
页数:13
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