文章摘要
陈启鹏,熊巧巧,黄海松,袁庆霓,李宜汀.基于YOLOV4的工件表面质量在线检测方法研究[J].包装工程,2023,44(3):148-156.
CHEN Qi-peng,XIONG Qiao-qiao,HUANG Hai-song,YUAN Qing-ni,LI Yi-ting.On-line Detection Method of Workpiece Surface Quality Based on YOLOV4[J].Packaging Engineering,2023,44(3):148-156.
基于YOLOV4的工件表面质量在线检测方法研究
On-line Detection Method of Workpiece Surface Quality Based on YOLOV4
  
DOI:10.19554/j.cnki.1001-3563.2023.03.018
中文关键词: 表面质量  YOLOV4  数据增强  聚类算法  特征提取  在线检测
英文关键词: surface quality  YOLOV4  data enhancement  clustering algorithm  feature extraction  online detection
基金项目:国家重点研发计划资助项目(2018YFB1004305);国家自然科学基金资助项目(51865004);贵州省科技重大专项计划资助项目(黔科合重大专项[2017]3004);现代制造技术教育部重点实验室开放课题基金资助项目(黔教合KY字[2022]377号);贵阳学院博士科研启动经费资助(GYU–KY–〔2023〕)。
作者单位
陈启鹏 贵阳学院 机械工程学院贵阳 550005
贵州大学 a.现代制造技术教育部重点实验室 b.机械工程学院贵阳 550025 
熊巧巧 贵州交通职业技术学院 机械电子工程系贵阳 551400
马来西亚博特拉大学 工程学院沙登 43400 
黄海松 贵州大学 a.现代制造技术教育部重点实验室 b.机械工程学院贵阳 550025 
袁庆霓 贵州大学 a.现代制造技术教育部重点实验室 b.机械工程学院贵阳 550025 
李宜汀 贵州财经大学 大数据统计学院贵阳 550025 
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中文摘要:
      目的 提升自动化产线上工件表面微小缺陷的检测精度和检测速度。方法 首先,在预处理阶段提出采用CutMix的数据增强方法,增加训练样本的多样性,提高模型的鲁棒性和泛化能力,避免训练模型产生过拟合;使用K–means++聚类算法生成边界候选框,以适应不同尺寸的缺陷,并较早地筛选出更精细的特征。其次,借助CSP Darknet53网络及SPP模块提取输入原始图像的特征,通过训练获得针对工件表面质量的在线检测模型,提升YOLOV4缺陷位置检测及识别的精度。结果 实验结果表明,文中所提出的基于YOLOV4的工件表面质量在线监测方法的预测精度达到97.5%,检测速度达到32.8 帧/s,均优于同类的深度学习算法。以贵州某航空工业产品的自动化产线作为实验平台验证了所提方法的可行性和有效性。结论 该方法具备结构简单清晰、自适应性强等优点,检测精度和速度均满足工业场景需求,可以将其用于产品表面质量的在线检测。
英文摘要:
      The work aims to improve the detection accuracy and detection speed of small defects on surface of workpieces on the automated production line. First of all, the use of CutMix data enhancement method in the preprocessing stage was proposed to increase the diversity of training samples, improve the robustness and generalization ability of the model, and avoid overfitting of the training model. K-means++ clustering algorithm was used to generate boundary candidate boxes to adapt to defects of different sizes and to screen out finer features earlier. Secondly, the CSP Darknet53 network and SPP module were used to extract the features of the input original image, and obtain an online detection model for the surface quality of the workpiece through training, so as to improve the accuracy of YOLOV4 defect location detection and recognition. The experimental results showed that the online monitoring method of workpiece surface quality based on YOLOV4 proposed in this work had a prediction accuracy of 97.5% and a detection speed of 32.8 FPS, which were superior to similar deep learning algorithms. The automated production line of an aviation industrial product in Guizhou was used as an experimental platform to verify the feasibility and effectiveness of the proposed method. Experimental results show that the method has the advantages of simple and clear structure, strong adaptability, etc. The detection accuracy and speed meet the needs of industrial scenarios, and it can be used for online detection of product surface quality.
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