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Hybrid-DC: A Hybrid Framework Using ResNet-50 and Vision Transformer for Steel Surface Defect Classification in the Rolling Process

Minjun Jeong, Minyeol Yang, Jongpil Jeong

2024Electronics28 citationsDOIOpen Access PDF

Abstract

This study introduces Hybrid-DC, a hybrid deep-learning model integrating ResNet-50 and Vision Transformer (ViT) for high-accuracy steel surface defect classification. Hybrid-DC leverages ResNet-50 for efficient feature extraction at both low and high levels and utilizes ViT’s global context learning to enhance classification precision. A unique hybrid attention layer and an attention fusion mechanism enable Hybrid-DC to adapt to the complex, variable patterns typical of steel surface defects. Experimental evaluations demonstrate that Hybrid-DC achieves substantial accuracy improvements and significantly reduced loss compared to traditional models like MobileNetV2 and ResNet, with a validation accuracy reaching 0.9944. The results suggest that this model, characterized by rapid convergence and stable learning, can be applied for real-time quality control in steel manufacturing and other high-precision industries, enhancing automated defect detection efficiency.

Topics & Concepts

TransformerProcess (computing)Artificial intelligenceResidual neural networkEngineeringComputer scienceMaterials sciencePattern recognition (psychology)Electrical engineeringDeep learningVoltageOperating systemIndustrial Vision Systems and Defect DetectionAdvanced Surface Polishing TechniquesIntegrated Circuits and Semiconductor Failure Analysis
Hybrid-DC: A Hybrid Framework Using ResNet-50 and Vision Transformer for Steel Surface Defect Classification in the Rolling Process | Litcius