Pei Yangjun, Hou Mingyang, Han Qi, Weng Tengfei, Tian Yuan, Chen Guorong, Liu Jinyuan, Wu Chen
School of Intelligent Technology and Engineering, Chongqing University of Science and Technology, Chongqing 401331, China.
Comput Intell Neurosci. 2022 Jul 18;2022:7539857. doi: 10.1155/2022/7539857. eCollection 2022.
The classification method of steel surface defects based on deep learning provides a basis for quality control of industrial steel manufacturing. Due to a large number of interference in the steel production area and the limited computing resources of the edge equipment deployed in the production area, it is a challenge to develop a lightweight model to achieve rapid and accurate classification in the case of limited computing resources. In this article, an improved lightweight convolution structure (LCS) is proposed, which combines the separable structure of convolution and introduces depth convolution and point direction convolution instead of the traditional convolutional module, so as to realize the lightweight of the model. In order to ensure the classification accuracy, spatial attention and channel attention are combined to compensate for the accuracy loss after deep convolution and point direction convolution respectively. Further, in order to improve the classification accuracy, a mixed interactive attention module (MIAM) is proposed to enhance the extracted feature information after LCS. The experimental results show that the recognition accuracy of our method exceeds that of the traditional model, and the number of parameters and the amount of calculation are greatly reduced, which realizes the lightweight of the steel surface defect classification model.
基于深度学习的钢材表面缺陷分类方法为工业钢材制造的质量控制提供了依据。由于钢材生产区域存在大量干扰,且生产区域部署的边缘设备计算资源有限,因此开发一种轻量级模型以在有限计算资源情况下实现快速准确分类是一项挑战。本文提出了一种改进的轻量级卷积结构(LCS),它结合了卷积的可分离结构,并引入深度卷积和逐点方向卷积来替代传统卷积模块,从而实现模型的轻量化。为确保分类精度,将空间注意力和通道注意力相结合,分别补偿深度卷积和逐点方向卷积后的精度损失。此外,为提高分类精度,提出了一种混合交互注意力模块(MIAM)以增强LCS后提取的特征信息。实验结果表明,我们方法的识别精度超过传统模型,且参数数量和计算量大幅减少,实现了钢材表面缺陷分类模型的轻量化。