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Integrating content-based image retrieval and deep learning to improve wafer bin map defect patterns classification

Ming‐Chuan Chiu, Yen‐Han Lee, Tao-Ming Chen

2022Journal of Industrial and Production Engineering14 citationsDOI

Abstract

Defect dies scattering on semiconductor wafer bin maps (WBM) tends to form specific patterns that point to particular manufacturing problems. The distribution of defect patterns from the shop floor is often highly imbalanced, leading to the challenge of having insufficient data about defect pattern types when building deep learning classification models. The method for completing such analysis in a timely manner with limited data is of critical interest. This study developed a method for applying content-based image retrieval (CBIR) and convolutional neural networking (CNN) to WBM defect patterns classification to solve the data imbalance problem and to improve accuracy when using relatively a small quantity of data. In this research, 3,600 WBMs featuring 12 defect pattern types were selected from the WM-811 K dataset for empirical validation. Using only 1,400 CNN training data elements, the overall classification accuracy reached 98.44%.

Topics & Concepts

Computer scienceBinConvolutional neural networkArtificial intelligencePattern recognition (psychology)Deep learningWaferContextual image classificationPoint (geometry)Image retrievalContent-based image retrievalData miningImage (mathematics)MathematicsEngineeringAlgorithmGeometryElectrical engineeringIndustrial Vision Systems and Defect DetectionImage and Object Detection TechniquesImage Processing Techniques and Applications
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