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Effective automatic defect classification process based on CNN with stacking ensemble model for TFT-LCD panel

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Abstract

The classification of defect types during LCD panel production is very important because it is closely related to deciding whether a defect panel is restorable. But since defect areas are very small compared to the panel area, it is hard to classify defect types by images. Therefore, we need to eliminate the background pattern of the panel, but this is not an easy task because the brightness and saturation of the background varies, even in a single image. In this paper, we propose an indicator that can distinguish between defect and background area, which is robust to brightness change and minor noises. With this indicator, we got useful defect information and images with patterns eliminated to make a more efficient defect classifier. The convolutional neural network with stacked ensemble techniques played a great role in improving defect classification performance, when various information from image preprocessing was combined.

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Acknowledgements

This research was supported by Aim Systems Inc. by providing us with LCD panel data and labeling class of the defects.

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Correspondence to Hongchul Lee.

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Appendix

Appendix

A.1 Defect feature list and descriptions

The defect features list and descriptions extracted from binary thresholding on 2.1.4 are in Table 6.

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Kim, M., Lee, M., An, M. et al. Effective automatic defect classification process based on CNN with stacking ensemble model for TFT-LCD panel. J Intell Manuf 31, 1165–1174 (2020). https://doi.org/10.1007/s10845-019-01502-y

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