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一种用于自动扶梯梯级的轻量级缺陷检测算法。

A lightweight defect detection algorithm for escalator steps.

作者信息

Yu Hui, Chen Jiayan, Yu Ping, Feng Da

机构信息

College of Energy Environment and Safety Engineering & College of Carbon Metrology, China Jiliang University, Hangzhou, 310018, China.

College of Quality and Standardization, China Jiliang University, Hangzhou, 310018, China.

出版信息

Sci Rep. 2024 Oct 11;14(1):23830. doi: 10.1038/s41598-024-74320-9.

Abstract

In this paper, we propose an efficient target detection algorithm, ASF-Sim-YOLO, to address issues encountered in escalator step defect detection, such as an excessive number of parameters in the detection network model, poor adaptability, and difficulties in real-time processing of video streams. Firstly, to address the characteristics of escalator step defects, we designed the ASF-Sim-P2 structure to improve the detection accuracy of small targets, such as step defects. Additionally, we incorporated the SimAM (Similarity-based Attention Mechanism) by combining SimAM with SPPF (Spatial Pyramid Pooling-Fast) to enhance the model's ability to capture key information by assigning importance weights to each pixel. Furthermore, to address the challenge posed by the small size of step defects, we replaced the traditional CIoU (Complete-Intersection-over-Union) loss function with NWD (Normalized Wasserstein Distance), which alleviated the problem of defect missing. Finally, to meet the deployment requirements of mobile devices, we performed channel pruning on the model. The experimental results showed that the improved ASF-Sim-YOLO model achieved an average accuracy (mAP50) of 96.8% on the test data set, which was a 22.1% improvement in accuracy compared to the baseline model. Meanwhile, the computational complexity (in GFLOPS) of the model was reduced to a quarter of that of the baseline model, while the frame rate (FPS) was improved to 575.1. Compared with YOLOv3-tiny, YOLOv5s, YOLOv8s, Faster-RCNN, TOOD, RTMDET and other deep learning-based target recognition algorithms, ASF-Sim-YOLO has better detection accuracy and real-time processing capability. These results demonstrate that ASF-Sim-YOLO effectively balances lightweight design and performance improvement, making it highly suitable for real-time detection of step defects, which can meet the demands of escalator inspection operations.

摘要

在本文中,我们提出了一种高效的目标检测算法ASF-Sim-YOLO,以解决自动扶梯梯级缺陷检测中遇到的问题,如检测网络模型参数过多、适应性差以及视频流实时处理困难等。首先,针对自动扶梯梯级缺陷的特点,我们设计了ASF-Sim-P2结构,以提高对小目标(如梯级缺陷)的检测精度。此外,我们通过将SimAM(基于相似度的注意力机制)与SPPF(空间金字塔池化-快速)相结合,引入了SimAM,通过为每个像素分配重要性权重来增强模型捕捉关键信息的能力。此外,为了解决梯级缺陷尺寸小带来的挑战,我们用NWD(归一化瓦瑟斯坦距离)取代了传统的CIoU(完全交并比)损失函数,这缓解了缺陷漏检的问题。最后,为了满足移动设备的部署要求,我们对模型进行了通道剪枝。实验结果表明,改进后的ASF-Sim-YOLO模型在测试数据集上的平均精度(mAP50)达到了96.8%,与基线模型相比,精度提高了22.1%。同时,该模型的计算复杂度(以GFLOPS为单位)降低到了基线模型的四分之一,而帧率(FPS)提高到了575.1。与YOLOv3-tiny、YOLOv5s、YOLOv8s、Faster-RCNN、TOOD、RTMDET等基于深度学习的目标识别算法相比,ASF-Sim-YOLO具有更好的检测精度和实时处理能力。这些结果表明,ASF-Sim-YOLO有效地平衡了轻量级设计和性能提升,使其非常适合梯级缺陷的实时检测,能够满足自动扶梯检查作业的需求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6728/11470098/8460cacd6ce9/41598_2024_74320_Fig1_HTML.jpg

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