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Received:September 17, 2021 Revised:October 14, 2021
Received:September 17, 2021 Revised:October 14, 2021
中文摘要: 单边侧入式大尺寸导光板存在网点分布不均、缺陷大小与形态不一、背景纹理复杂等特点, 而人工选取特征的传统机器视觉方法泛化能力不强. 基于此, 本文提出一种基于改进YOLOv3的大尺寸导光板缺陷检测方法. 首先, 在网络浅层特征层引入改进多分支RFB模块, 增大网络感受野, 丰富目标语义信息, 加强特征提取能力; 其次, 利用深度可分离卷积替换标准卷积, 缩减模型大小和计算量; 进而, 改进K-means算法, 对聚类出的锚框进行线性缩放, 使之更加贴近真实框; 最后, 利用在生产现场采集的大尺寸导光板缺陷图片进行了大量的实验研究. 实验结果表明, 本文提出的检测算法平均精度达到98.92%. 与YOLOv3相比, 平均准确率、F1值分别提升了8.55%、10.76%, 检测速度达到71.6 fps, 可满足工业生产检测要求.
Abstract:Large-size light guide plates (LGPs) with single edge lighting have the characteristics of uneven dot distribution, different defect sizes and shapes, complex background texture and so on. The traditional machine vision method of manually selecting features has insufficient generalization ability. In response, this study proposes a defect detection method based on improved YOLOv3 for large-size LGPs. Firstly, the improved multi-branch RFB module is introduced into the shallow feature layer of the network to increase the network receptive field, enrich the target semantic information and strengthen the ability of feature extraction. Secondly, the depth separable convolution is used to replace the standard convolution to reduce the size and calculation of the model. Furthermore, the K-means algorithm is improved to linearly scale the clustered anchor box so that it can be closer to the real box. Finally, a large number of experimental studies are carried out by using the defect pictures of large-size LGPs collected in a production site. The experimental results show that the average accuracy of the proposed detection algorithm is 98.92%. Compared with YOLOv3, this method has the average accuracy and F1 increased value by 8.55% and 10.76% respectively with a detection speed reaching 71.6 fps, which can meet the detection accuracy requirements of industrial production.
keywords: defect detection deep learning improved YOLOv3 depth separable convolution improved K-means algorithm object detection
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基金项目:浙江省公益性技术应用研究计划(LGG18F030001, GG19F030034)
引用文本:
胡金良,李俊峰.基于改进YOLOv3的大尺寸导光板缺陷检测.计算机系统应用,2022,31(6):279-286
HU Jin-Liang,LI Jun-Feng.Defect Detection of Large-size Light Guide Plate Based on Improved YOLOv3.COMPUTER SYSTEMS APPLICATIONS,2022,31(6):279-286
胡金良,李俊峰.基于改进YOLOv3的大尺寸导光板缺陷检测.计算机系统应用,2022,31(6):279-286
HU Jin-Liang,LI Jun-Feng.Defect Detection of Large-size Light Guide Plate Based on Improved YOLOv3.COMPUTER SYSTEMS APPLICATIONS,2022,31(6):279-286