期刊文献+

Modeling&Evaluating the Performance of Convolutional Neural Networks for Classifying Steel Surface Defects

下载PDF
导出
摘要 Recently,outstanding identification rates in image classification tasks were achieved by convolutional neural networks(CNNs).to use such skills,selective CNNs trained on a dataset of well-known images of metal surface defects captured with an RGB camera.Defects must be detected early to take timely corrective action due to production concerns.For image classification up till now,a model-based method has been utilized,which indicated the predicted reflection characteristics of surface defects in comparison to flaw-free surfaces.The problem of detecting steel surface defects has grown in importance as a result of the vast range of steel applications in end-product sectors such as automobiles,households,construction,etc.Themanual processes for detections are time-consuming,labor-intensive,and expensive.Different strategies have been used to automate manual processes,but CNN models have proven to be the most effective rather than image processing andmachine learning techniques.By using differentCNNmodels with fine-tuning,easily compare their performance and select the best-performing model for the same kinds of tasks.However,it is important that using different CNN models either from fine tuning can be computationally expensive and time-consuming.Therefore,our study helps the upcoming researchers to choose the CNN without considering the issues of model complexity,performance,and computational resources.In this article,the performance of various CNN models like Visual Geometry Group,VGG16,VGG19,ResNet152,ResNet152V2,Xception,InceptionV3,InceptionResNetV2,NASNetLarge,MobileNetV2,and DenseNet201 with transfer learning techniques are evaluated.These models were chosen based on their popularity and impact in the field of computer vision research,as well as their performance on benchmark datasets.According to the outcomes,DenseNet201 outperformed the other CNN models and had the greatest detection rate on the NEU dataset,falling in at 98.37 percent.
出处 《Journal on Artificial Intelligence》 2022年第4期245-259,共15页 人工智能杂志(英文)
  • 相关文献

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部