WSEAS Transactions on Information Science and Applications
Print ISSN: 1790-0832, E-ISSN: 2224-3402
Volume 20, 2023
Pre-trained CNN-based TransUNet Model for Mixed-Type Defects in Wafer Maps
Authors: , ,
Abstract: Classifying the patterns of defects in semiconductors is critical to finding the root cause of production defects. Especially as the concentration density and design complexity of semiconductor wafers increase, so do the size and severity of defects. The increased likelihood of mixed defects makes finding them more complex than traditional wafer defect detection methods. Manually inspecting wafers for defects is costly, creating a need for automated, artificial intelligence (AI)-based computer vision approaches. Previous research on defect analysis has several limitations, including low accuracy. To analyze mixed-type defects, existing research requires a separate model to be trained for each defect type, which is not scalable. In this paper, we propose a model for segmenting mixed defects by applying a pre-trained CNN-based TransUNet using N-pair contrastive loss. The proposed method allows you to extract an enhanced feature by repressing extraneous features and concentrating attention on the defects you want to discover. We evaluated the model on the Mixed-WM38 dataset with 38,015 images. The results of our experiments indicate that the suggested model performs better than previous works with an accuracy of 0.995 and an F1-Score of 0.995.
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Keywords: classification, mixed-type wafer maps, TransUNet, N-pair contrastive loss function, multitask learning, transformer layer
Pages: 238-244
DOI: 10.37394/23209.2023.20.27