A Suggestion System According to Fabric Control Time
Abstract
Keywords
References
- [1] Shi, M., Jiang, S., Wang, H., Xu, B., “A simplified pulse-coupled neural network for adaptive segmentation of fabric defects”, Machine Vision and Applications, 20(2): 131-138, (2009).
- [2] Kaynar, O., Işik, Y. E., Görmez, Y., Demirkoparan, F., “Fabric defect detection with LBP-GLCM”, International Artificial Intelligence and Data Processing Symposium, 1-5, (2017).
- [3] Zhang, L., Jing, J., Zhang, H., “Fabric defect classification based on LBP and GLCM”, Journal of Fiber Bioengineering and Informatics, 8(1): 81-89, (2015).
- [4] Huang, C. C., Chen, I. C., “Neural-fuzzy classification for fabric defects”, Textile Research Journal, 71(3): 220-224, (2001).
- [5] Beljadid, A., Tannouche, A., Balouki, A., “Application of deep learning for the detection of default in fabric texture”, 6th International Conference on Optimization and Applications, Morocco, (2020).
- [6] Wang, C., Wang, D., Wang, R., Leng, J., “Textile defect detection and classification based on deep convolution neural network”, Developments of Artificial Intelligence Technologies in Computation and Robotics: Proceedings of the 14th International FLINS Conference, 1094-1101, (2020).
- [7] Jing, J., Wang, Z., Rätsch, M., Zhang, H., “Mobile-Unet: An efficient convolutional neural network for fabric defect detection”, Textile Research Journal, 1-13, (2020).
- [8] Wei, B., Hao, K., Tang, X. S., Ding, Y., “A new method using the convolutional neural network with compressive sensing for fabric defect classification based on small sample sizes”, Textile Research Journal, 89(17): 3539-3555, (2019).
Details
Primary Language
English
Subjects
Engineering
Journal Section
Research Article
Authors
Semih Utku
0000-0002-8786-560X
Türkiye
Publication Date
December 1, 2022
Submission Date
December 1, 2020
Acceptance Date
January 2, 2022
Published in Issue
Year 2022 Volume: 35 Number: 4
Cited By
Determination of various fabric defects using different machine learning techniques
The Journal of The Textile Institute
https://doi.org/10.1080/00405000.2023.2201978