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基于改进YOLOv5s算法的轨道扣件缺陷检测 被引量:2
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作者 张兴盛 阮久宏 +2 位作者 沈本兰 李金城 华超 《山东交通学院学报》 2025年第2期10-18,共9页
针对轨道扣件缺陷复杂程度较高、严重影响列车行车安全、人工巡检效率较低等问题,提出一种基于计算机视觉的轨道扣件缺陷检测算法。考虑轨道扣件缺陷的特征以及检测时所处复杂作业环境,采用ConvNeXt V2模块代替YOLOv5s算法主干网络前端C... 针对轨道扣件缺陷复杂程度较高、严重影响列车行车安全、人工巡检效率较低等问题,提出一种基于计算机视觉的轨道扣件缺陷检测算法。考虑轨道扣件缺陷的特征以及检测时所处复杂作业环境,采用ConvNeXt V2模块代替YOLOv5s算法主干网络前端C3模块,采用Efficient Rep网络改进YOLOv5s算法主干网络末端,引入具有动态非聚焦机制的损失函数WIoU加快YOLOv5s算法模型计算收敛速度,形成改进YOLOv5s算法(CR-YOLOv5s算法),检测轨道扣件缺陷状态,开展消融试验,并与快速区域卷积神经网络(faster region-based convolutional neural networks,Faster R-CNN)算法、单阶多层检测(single shot multibox detector,SSD)算法、YOLOv3算法、YOLOv4算法检测进行对比试验。试验结果表明:CR-YOLOv5s算法的召回率为89.3%,平均检测精度均值为95.8%,平均检测时间为10.1 ms,3项指标均优于其他4种算法;与YOLOv5s算法相比,CR-YOLOv5s算法的召回率均值提高5.7%,平均检测精度均值提高4.0%,平均检测时间延长1.0 ms。综合考虑轨道扣件状态检测任务要求、召回率、平均检测精度均值、平均检测时间等因素,采用CR-YOLOv5s算法检测轨道扣件缺陷状态更具优势。 展开更多
关键词 轨道扣件 缺陷检测 YOLOv5s算法 ConvNeXt V2模块 efficient rep网络 损失函数WIoU
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Enhancing Classroom Behavior Recognition with Lightweight Multi-Scale Feature Fusion
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作者 Chuanchuan Wang Ahmad Sufril Azlan Mohamed +3 位作者 Xiao Yang Hao Zhang Xiang Li Mohd Halim Bin Mohd Noor 《Computers, Materials & Continua》 2025年第10期855-874,共20页
Classroom behavior recognition is a hot research topic,which plays a vital role in assessing and improving the quality of classroom teaching.However,existing classroom behavior recognition methods have challenges for ... Classroom behavior recognition is a hot research topic,which plays a vital role in assessing and improving the quality of classroom teaching.However,existing classroom behavior recognition methods have challenges for high recognition accuracy with datasets with problems such as scenes with blurred pictures,and inconsistent objects.To address this challenge,we proposed an effective,lightweight object detector method called the RFNet model(YOLO-FR).The YOLO-FR is a lightweight and effective model.Specifically,for efficient multi-scale feature extraction,effective feature pyramid shared convolutional(FPSC)was designed to improve the feature extract performance by leveraging convolutional layers with varying dilation rates from the input image in the backbone.Secondly,to address the problem of multi-scale variability in the scene,we design the Rep Ghost fusion Cross Stage Partial and Efficient Layer Aggregation Network(RGCSPELAN)to improve the network performance further and reduce the amount of computation and the number of parameters.In addition,by conducting experimental valuation on the SCB dataset3 and STBD-08 dataset.Experimental results indicate that,compared to the baseline model,the RFNet model has increased mean accuracy precision(mAP@50)from 69.6%to 71.0%on the SCB dataset3 and from 91.8%to 93.1%on the STBD-08 dataset.The RFNet approach has effectiveness precision at 68.6%,surpassing the baseline method(YOLOv11)at 3.3%and archieve the minimal size(4.9 M)on the SCB dataset3.Finally,comparing it with other algorithms,it accurately detects student behavior in complex classroom environments results confirmed that RFNet is well-suited for real-time and efficiently recognizing classroom behaviors. 展开更多
关键词 Classroom action recognition YOLO-FR feature pyramid shared convolutional rep ghost cross stage partial efficient layer aggregation network(RGCSPELAN)
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基于改进YOLOv8-seg的屋顶光伏图像分割方法研究
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作者 竺缘圆 《人工智能研究》 2026年第1期72-75,共4页
针对无人机采集屋顶图像在边缘端部署中受算力与存储受限、难以兼顾实时性与分割精度的问题,本文提出一种基于改进YOLOv8-seg的轻量化屋顶区域分割方法。首先在主干网络中引入基于RT-DETR的HGNetv2主干网络,以缩减模型体积与计算成本;其... 针对无人机采集屋顶图像在边缘端部署中受算力与存储受限、难以兼顾实时性与分割精度的问题,本文提出一种基于改进YOLOv8-seg的轻量化屋顶区域分割方法。首先在主干网络中引入基于RT-DETR的HGNetv2主干网络,以缩减模型体积与计算成本;其次,在颈部采用Efficient Rep结构进行轻量化重构,增强多尺度特征融合能力;结合上述设计,提升了模型对屋顶特征的提取效率。实验结果表明,改进后的模型对屋顶图像分割效果良好,参数量和计算量分别为2.12M和4.70GFLOPs,召回率和平均精度均值分别为72.79%和67.55%。与原YOLOv8-seg模型相比,模型体积减小33.9%,分割速度提升。本研究为后续屋顶光伏系统的高效管理和优化提供了技术支持。 展开更多
关键词 屋顶图像分割 YOLOv8 HGNetv2 efficient rep
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