基于ResNet50算法的钢材缺陷感知

Lakshmi S Hanne, S. V, Nandan K N, L. S, Kiran Rai Suresh Malali
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引用次数: 0

摘要

钢材表面故障的自动识别是钢铁行业保证产品质量的关键。然而,由于其精度差,工作速度慢,旧技术不能有效地应用于生产线。现有的广受欢迎的基于深度学习的算法也存在精度不足的问题,仍然有很大的发展机会。本文提出了一种将升级后更快的区域卷积神经网络(更快的R-CNN)与改进后的ResNet50相结合,在减少平均运行时间的同时提高准确率的方法。更新后的ResNet50模型从一张图片开始,然后添加了可变形的旋转网络和更好的截止,以确定样品是否有缺陷。如果缺陷的可能性小于0.3,算法输出一个没有缺陷的样本。否则,将数据添加到改进的更快的R-CNN中,其中包括矩阵NMS,增强的特征金字塔网络和空间金字塔池。样品缺陷的位置和分类,如果存在,是输出的最终结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Perception of Flaws in Steel using ResNet50 Algorithm
Automatic identification of steel surface faults is critical in the steel industry for ensuring product quality. The old technique, however, cannot be employed efficiently in a manufacturing line due to its poor accuracy and slow working speed. The existing, well-liked deep learning-based algorithm also suffers from a lack of precision, and there is still much opportunity for development. This paper presents an approach for reducing average running time while enhancing accuracy by combining upgraded faster region convolutional neural networks (faster R-CNN) with improved ResNet50. The updated ResNet50 model starts with a picture and then adds the deformable revolution network and a better cutoff to determine if the sample has defects or not. The algorithm outputs a sample free of flaws if the likelihood of a defect is less than 0.3. Otherwise, the data are added to the modified faster R-CNN, which includes matrix NMS, enhanced feature pyramid networks, and spatial pyramid pooling. The location and classification of the sample defect, if present, are the output's final results.
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