基于注意机制的钢材表面缺陷深度网络检测

Suyang Wu, Hongmei Chu, Cong Cheng
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引用次数: 0

摘要

对于基于深度学习的小数据集的钢材表面缺陷分类问题,实际操作过程中大多数缺陷都是小规模缺陷,导致卷积神经网络进行缺陷分类的效果不理想。本文提出了一种带有注意机制的卷积神经网络对钢表面缺陷进行分类。在所提出的检测网络中,我们以ResNet34网络为骨干网络,并在网络中引入挤压和激励网络来自适应校正特征。此外,在实验过程中,采用改变图像对比度和饱和度的数据增强方法和图像随机旋转的数据增强方法对数据集进行扩展。实验表明,该方法在NEU-DET数据集上的分类准确率为98.3%,比仅使用ResNet34网络的分类准确率提高了7.8%。
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Deep Network for Steel Surface Defect Detection Based on Attention Mechanism
For the problem of deep learning-based steel surface defect classification with a small dataset, most of the defects are small-scale defects in the actual operation process, which leads to the unsatisfactory effect of convolutional neural network for defect classification. This paper proposes a convolutional neural network with an attention mechanism to categorize steel surface defects. In the proposed detection network, we use ResNet34 network as the backbone network, and introduce squeeze and excitation networks into the network to adaptively correct features. In addition, during the experiment, the data augmentation method of changing the contrast and saturation of the image and the data augmentation method of random rotation of the image were used to extend the dataset. Experiments demonstrate that the proposed method's classification accuracy on NEU-DET dataset is 98.3%, which is 7.8% higher than that of only using ResNet34 network.
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