基于知识蒸馏和自适应残余收缩网络的带钢表面缺陷分类方法研究

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Algorithms Pub Date : 2023-11-10 DOI:10.3390/a16110516
Xinbo Huang, Zhiwei Song, Chao Ji, Ye Zhang, Luya Yang
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引用次数: 0

摘要

带钢在生产过程中会出现不同类型的表面缺陷。为了保证产品质量,对这些缺陷进行分类是必要的。我们的研究表明,现有的带钢表面缺陷分类方法存在两个主要问题:(1)无法解决现实中数据不平衡的问题,(2)不能满足在线实时分类的要求。为了解决上述问题,本文提出了一种关系知识蒸馏自适应残余收缩网络(RKD-SARSN)。首先,设计了循环GAN缺陷样本迁移的数据增强策略。其次,将自适应残差收缩网络(SARSN)作为特征提取的骨干网络。为了解决样本不平衡问题,提出了一种基于精度和几何均值的自适应损失函数。最后,提出了关系知识精馏模型(RKD),并结合图像处理技术设计了GUI操作界面封装功能。SARSN作为教师模型,将其泛化性能转移到轻量级网络ResNet34中,方便地部署为学生模型。结果表明,该方法可以提高模型的部署效率,保证分类算法的实时性。对于具有非平衡数据的细粒度图像,该算法优于其他主流算法。
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Research on a Classification Method for Strip Steel Surface Defects Based on Knowledge Distillation and a Self-Adaptive Residual Shrinkage Network
Different types of surface defects will occur during the production of strip steel. To ensure production quality, it is essential to classify these defects. Our research indicates that two main problems exist in the existing strip steel surface defect classification methods: (1) they cannot solve the problem of unbalanced data using few-shot in reality, (2) they cannot meet the requirement of online real-time classification. To solve the aforementioned problems, a relational knowledge distillation self-adaptive residual shrinkage network (RKD-SARSN) is presented in this work. First, the data enhancement strategy of Cycle GAN defective sample migration is designed. Second, the self-adaptive residual shrinkage network (SARSN) is intended as the backbone network for feature extraction. An adaptive loss function based on accuracy and geometric mean (Gmean) is proposed to solve the problem of unbalanced samples. Finally, a relational knowledge distillation model (RKD) is proposed, and the functions of GUI operation interface encapsulation are designed by combining image processing technology. SARSN is used as a teacher model, its generalization performance is transferred to the lightweight network ResNet34, and it is conveniently deployed as a student model. The results show that the proposed method can improve the deployment efficiency of the model and ensure the real-time performance of the classification algorithms. It is superior to other mainstream algorithms for fine-grained images with unbalanced data classification.
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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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