Penerapan Metode CNN (Convolutional Neural Network) untuk Mengklasifikasikan Jenis Cacat pada Kulit Hewan
Abstract
Recently, leather industry was rapidly growth in several countries. In Indonesia, leather industry became one of the government's priority industries since there were quite a lot of leather industries developing in various regions in Indonesia. On the other hand, there were large number of consumer demand for leather products. Regarding to this fact, maintaining the quality of leather was strongly important. An alternative solution for maintaining leather quality is to conduct leather quality inspection process. However, currently the leather inspection process was still carried out manually by identifying directly the types of defects found on the surface of the leather. This manual inspection process certainly has several hurdles such as time consuming, requiring high accuracy, and requiring experienced operators. This research aimed to develop convolutional neural network architecture that can classify types of leather defects. This research was done by conducting four main processes which were literature study and data collection processes, develop CNN architecture, training process, and testing process. This research work used public dataset consisting of 3600 digital leather images distributed into six classes (folding mask, grain off, growth marks, loose grains, pinhole, non-defective). Based on the training and testing process, the model obtained training accuracy of 90.43% and testing accuracy of 88.47%.
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References
Abdullah, A. Bin, Jawahar, M., Manogaran, N., Subbiah, G., Seeranagan, K., Balusamy, B., & Saravanan, A. C. (2024). Leather Image Quality Classification and Defect Detection System using Mask Region-based Convolution Neural Network Model. International Journal of Advanced Computer Science and Applications, 15(4), 526–536. https://doi.org/10.14569/IJACSA.2024.0150455
Aslam, M., Khan, T. M., Naqvi, S. S., Holmes, G., & Naffa, R. (2020). Ensemble Convolutional Neural Networks With Knowledge Transfer for Leather Defect Classification in Industrial Settings. IEEE Access, 8, 198600–198614. https://doi.org/10.1109/ACCESS.2020.3034731
Aslam, M., Khan, T., Naqvi, S., Holmes, G., & Naffa, R. (2019). On the Application of Automated Machine Vision for Leather Defect Inspection and Grading: A Survey. IEEE Access, PP. https://doi.org/10.1109/ACCESS.2019.2957427
Deng, J., Liu, J., Wu, C., Zhong, T., Gu, G., & Ling, B. W.-K. (2020). A Novel Framework for Classifying Leather Surface Defects Based on a Parameter Optimized Residual Network. IEEE Access, 8, 192109–192118. https://doi.org/10.1109/ACCESS.2020.3032164
Gan, Y. S., Yau, W. C., Liong, S. T., & Chen, C. C. (2022). Automated Classification System for Tick-Bite Defect on Leather. Mathematical Problems in Engineering, 2022. https://doi.org/10.1155/2022/5549879
Iqbal, S., Khan, T. M., Naqvi, S. S., & Holmes, G. (2023). MLR-Net: A multi-layer residual convolutional neural network for leather defect segmentation. Engineering Applications of Artificial Intelligence, 126, 107007. https://doi.org/https://doi.org/10.1016/j.engappai.2023.107007
Khanal, S. R., Silva, J., Magalhães, L., Soares, J., Gonzalez, D. G., Castilla, Y. C., & Ferreira, M. J. (2022). Leather Defect Detection Using Semantic Segmentation: A Hardware platform and software prototype. Procedia Computer Science, 204, 573–580. https://doi.org/https://doi.org/10.1016/j.procs.2022.08.070
Liong, S.-T., Gan, Y. S., Huang, Y.-C., Liu, K.-H., & Yau, W.-C. (2019). Integrated Neural Network and Machine Vision Approach For Leather Defect Classification.
Liong, S.-T., Gan, Y. S., Huang, Y.-C., Yuan, C.-A., & Chang, H.-C. (2019). Automatic Defect Segmentation on Leather with Deep Learning.
Manivannan, S. (2023). Collaborative deep semi-supervised learning with knowledge distillation for surface defect classification. Computers & Industrial Engineering, 186, 109766. https://doi.org/https://doi.org/10.1016/j.cie.2023.109766
Moganam, P. K., & Sathia Seelan, D. A. (2022). Deep learning and machine learning neural network approaches for multi class leather texture defect classification and segmentation. Journal of Leather Science and Engineering, 4(1), 7. https://doi.org/10.1186/s42825-022-00080-9
Moganam, P. K., & Seelan, D. A. S. (2020). Perceptron neural network based machine learning approaches for leather defect detection and classification. Instrumentation Mesure Metrologie, 19(6), 421–429. https://doi.org/10.18280/I2M.190603
Molla, Y. S., Yimer, S. T., & Alemneh, E. (2023). COSMIC-Functional Size Classification of Agile Software Development: Deep Learning Approach. 2023 International Conference on Information and Communication Technology for Development for Africa (ICT4DA), 155–159. https://doi.org/10.1109/ICT4DA59526.2023.10302232
Praveen Kumar, M., & Denis Ashok, S. (2020). A multi-level colour thresholding based segmentation approach for improved identification of the defective region in leather surfaces. Engineering Journal, 24(2), 101–108. https://doi.org/10.4186/ej.2020.24.2.101
Vasagam, S. N., & Sornam, M. (2022). Intermittent Leather Defect Detection Based on Ensemble Algorithms Derived from Black Hat Transformation and Hough Transformation BT - ICT Analysis and Applications (S. Fong, N. Dey, & A. Joshi, Eds.; pp. 35–45). Springer Nature Singapore.
Wang, F., & Kyoung, K. J. (2023). Leather Defect Detection Method in Clothing Design Based on TDENet. IEEE Access, 11, 104890–104904. https://doi.org/10.1109/ACCESS.2023.3308493
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