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Explainable AI for domain experts: a post Hoc analysis of deep learning for defect classification of TFT-LCD panels

Authors
Lee, MinyoungJeon, JoohyoungLee, Hongchul
Issue Date
Aug-2022
Publisher
SPRINGER
Keywords
Deep learning; Defect classification; Visualization; Explainable artificial intelligence
Citation
JOURNAL OF INTELLIGENT MANUFACTURING, v.33, no.6, pp.1747 - 1759
Indexed
SCIE
SCOPUS
Journal Title
JOURNAL OF INTELLIGENT MANUFACTURING
Volume
33
Number
6
Start Page
1747
End Page
1759
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/140188
DOI
10.1007/s10845-021-01758-3
ISSN
0956-5515
Abstract
The deep learning (DL) model has performed successfully in various fields, including manufacturing. DL models for defect image data analysis in the manufacturing field have been applied to multiple domains such as defect detection, classification, and localization. However, DL models require trade-offs in accuracy and interpretability. We use explainable artificial intelligence techniques to analyze the predicted results of the defect image classification model, which is considered as a "black-box" model, to produce human-understandable results. We visualize defects using layer-wise relevance propagation-based methods, fit the model into a decision tree, and convert prediction results into human-interpretable text. Our research complements the interpretation of prediction results for the classification model. The domain expert can obtain the reliability and explanatory ability for the defect classification of TFT-LCD panel data of the DL model through the results of the proposed analysis.
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