使用 YOLOv-5s-FRN 的基于深度学习的特征可区分性增强型并发金属表面缺陷检测系统

Reshma P. Vengaloor, Roopa Muralidhar
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摘要

计算机视觉和深度学习技术是当今时代最新兴的技术。在进行工业质量检查时,这两种技术都能大大提高金属表面缺陷的识别率。由于金属表面容易受到光照和光反射等环境因素的影响,因此金属表面缺陷的识别是一项重大挑战。针对传统人工检测系统检测效果不佳的问题,本文提出了名为 YOLOv-5s-FRN 的新型金属表面缺陷检测网络。为了从提供的图像中提取全局特征信息,FRN 能够评估通道之间的相互依赖关系。这就提高了缺陷检测系统的特征辨别能力和预测精度。FRN 结构的加入使 YOLOv-5s 架构能够选择性地增强必要的特征,而舍弃不需要的特征。因此,所提出的新方法将有效地检测和分类金属表面缺陷,如裂纹、斑块、夹杂物、划痕、凹坑表面和轧制。东北大学表面缺陷数据库(NEU-DET)被用来训练和测试所提出的建筑模型。根据精确度、召回率和平均精确度 (mAP) 等性能矩阵,将建议的系统与其他模型进行了比较。结果表明,与最先进的方法相比,建议的 YOLOv-5s-FRN 架构能显著提高性能。通过改善 mAP 和耗时,拟议系统取得了令人满意的结果。拟议模型的 mAP_0.5 值为 98.05%,mAP_0.5:0.95 值为 89.03%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Based Feature Discriminability Boosted Concurrent Metal Surface Defect Detection System Using YOLOv-5s-FRN
Computer vision and deep learning techniques are the most emerging technologies in this era. Both of these can greatly raise the rate at which defects on metal surfaces are identified while performing industrial quality checks. The identification of faults over metal surfaces can be viewed as a significant challenge since they are easily impacted by ambient factors including illumination and light reflections. This paper proposes novel metal surface defect detection network called as YOLOv-5s-FRN in response to the problems of ineffective detection brought by the conventional manual inspection system. The proposed system is developed through the integration of a novel architectural module called as Feature Recalibration Network (FRN) to the You Only Look Once-version-5 small network )YOLOv-5s(. In order to extract the global feature information from the provided image, FRN is able to evaluate the interdependencies between the channels. This improves the feature discrimination capability and prediction accuracy of the defect detection system. The incorporation of FRN structure makes YOLOv-5s architecture to selectively enhance the necessary features and discard the unwanted ones. Therefore, the proposed novel method will efficiently detect and classify the metal surface defects such as crazing, patches, inclusions, scratches, pitted surfaces and rolled in scale. North Eastern University Surface Defect Database (NEU-DET) has been used to train and test the proposed architectural model. The suggested system has been compared with alternative models based on several performance matrices such as precision, recall and Mean Average Precision (mAP). It is observed that the proposed YOLOv-5s-FRN architecture provides significant performance improvement than state-of-the-art methods. The proposed system has been provided satisfactory results by means of improvement in mAP and time consumption. The proposed model has delivered value of mAP_0.5 as 98.05% and that of mAP_0.5:0.95 as 89.03%.
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