基于缺陷检测的任务对齐模型的应用

Ming-Hung Hung, Chao-Hsun Ku, Kai-Ying Chen
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引用次数: 0

摘要

近年来,随着自动化浪潮的兴起,减少人工判断,特别是在工厂的缺陷检测中,变得至关重要。图像识别的自动化已成为一个重大挑战。然而,如何有效地提高缺陷检测的分类和平均精度(mAP)的准确性问题是一个不断改进的过程,从最初的视觉缺陷检测发展到现在的深度学习检测系统。本文提出了深度学习的一种应用,首先将任务对齐方法应用于金属缺陷,通过相互校正不断优化对象和类别的锚点和边界盒。首先对任务对齐的一阶段目标检测(ood)模型进行改进和优化,然后利用可变形卷积网络v2 (DCNv2)对可变形卷积进行调整,最后利用软有效非最大抑制(soft - nms)对交汇联合(IoU)进行优化和调整IoU阈值等多项实验。在用于表面缺陷检测的东北大学表面缺陷检测数据集(NEU-DET)中,mAP从75.4%提高到77.9%,mAP提高了2.5%,与现有的先进模型相比,mAP也得到了改进,具有未来使用的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Task-Aligned Model Based on Defect Detection
In recent years, with the rise of the automation wave, reducing manual judgment, especially in defect detection in factories, has become crucial. The automation of image recognition has emerged as a significant challenge. However, the problem of how to effectively improve the classification of defect detection and the accuracy of the mean average precision (mAP) is a continuous process of improvement and has evolved from the original visual inspection of defects to the present deep learning detection system. This paper presents an application of deep learning, and the task-aligned approach is firstly used on metal defects, and the anchor and bounding box of objects and categories are continuously optimized by mutual correction. We used the task-aligned one-stage object detection (TOOD) model, then improved and optimized it, followed by deformable ConvNets v2 (DCNv2) to adjust the deformable convolution, and finally used soft efficient non-maximum suppression (Soft-NMS) to optimize intersection over union (IoU) and adjust the IoU threshold and many other experiments. In the Northeastern University surface defect detection dataset (NEU-DET) for surface defect detection, mAP increased from 75.4% to 77.9%, a 2.5% increase in mAP, and mAP was also improved compared to existing advanced models, which has potential for future use.
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