Implementasi Algoritma Convolutional Neural Network dalam Menentukan Kelayakan Kayu
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Wood eligibility is the most important factor in the furniture industry. However, currently there are still many producers who ignore the feasibility of wood so that it can affect production results and selling prices. With the development of technology such as digital image processing, the process of selecting feasible wood can be done without the need for human visuals. This research proposes to classify wood eligibility based on digital images of wood eligibility using the Deep Leraning method. Convolutional Neural Network (CNN) which is one type of Deep Learning algorithm is proposed as a method to analyze wood worthiness images. The dataset of wood worthiness images was obtained through observations made by researchers at CV Kanindotama. The dataset used in this study amounted to 105 wood images divided into 83 training data and 22 test data. The model built using the ResNet50V2 architecture gets the greatest accuracy of only 69.51% for training data and 62.5% for test data. While the model built using the MobileNetV2 architecture gets an accuracy of up to 98.29% for training data and 100% for test data. This proves that the MobileNetV2 architecture is better than ResNet50V2. In addition, it can be said that the CNN algorithm can be used to analyze the feasibility of wood well.
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Classify ; Digital Image ; Wood ; CNN ; MobileNetV2
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Afriansyah, M., Saputra, J., Ardhana, V. Y. P., & Sa'adati, Y. (2024). ALGORITMA NAIVE BAYES YANG EFISIEN UNTUK KLASIFIKASI BUAH PISANG RAJA BERDASARKAN FITUR WARNA. Journal of Information Systems Management and Digital Business, 1(2), 236-248. https://doi.org/10.59407/jismdb.v1i2.438.
AKHYAR, F., NOVAMIZANTI, L., & RIANTIARNI, T. (2022). Sistem Inspeksi Cacat pada Permukaan Kayu menggunakan Model Deteksi Obyek YOLOv5. ELKOMIKA: Jurnal Teknik Energi Elektrik, Teknik Telekomunikasi, & Teknik Elektronika, 10(4), 990. https://doi.org/10.26760/elkomika.v10i4.990.
Azmi, K., Defit, S., & Sumijan, S. (2023). Implementasi convolutional neural network (CNN) untuk klasifikasi batik tanah liat sumatera barat. Jurnal Unitek, 16(1), 28-40. https://doi.org/10.52072/unitek.v16i1.504.
DLY, I. A., Jasril, J., Sanjaya, S., Handayani, L., & Yanto, F. (2023). Klasifikasi Citra Daging Sapi dan Babi Menggunakan CNN Alexnet dan Augmentasi Data. Journal of Information System Research (JOSH), 4(4), 1176-1185. https://doi.org/10.47065/josh.v4i4.3702.
Harahap, F. A. A., Nafisa, A. N., Purba, E. N. D. B., & Putri, N. A. (2023). Implementasi Algoritma Convolutional Neural Network Arsitektur Model MobileNetV2 dalam Klasifikasi Penyakit Tumor Otak Glioma, Pituitary dan Meningioma. Jurnal Teknologi Informasi, Komputer, dan Aplikasinya (JTIKA), 5(1), 53-61. https://doi.org/10.29303/jtika.v5i1.234.
Hendriyana, H., & Maulana, Y. H. (2020). Identification of types of wood using convolutional neural network with MobileNet architecture. Jurnal RESTI (Rekayasa Sistem Dan Teknologi Informasi), 4(1), 70-76.
Illahi, M. A. A., & Handoko, W. T. (2023). Klasifikasi Jenis Buah Kelengkeng Dengan Metode K-Nearest Neighbor (KNN) Berdasarkan Citra Warna Buah. Kesatria: Jurnal Penerapan Sistem Informasi (Komputer dan Manajemen), 4(3), 566-573. https://doi.org/10.30645/kesatria.v4i3.205.
Indraswari, R., Herulambang, W., & Rokhana, R. (2022). Deteksi Penyakit Mata Pada Citra Fundus Menggunakan Convolutional Neural Network (CNN). Techno. com, 21(2).
Izzulhaq, M. A., & Alamsyah, A. (2024). Penerapan Algoritma Convolutional Neural Network Arsitektur ResNet50V2 Untuk Mengidentifikasi Penyakit Pneumonia. Indonesian Journal of Mathematics and Natural Sciences, 47(1), 12-22. https://doi.org/10.15294/p532ny06.
Mustamin, N. F., Sari, Y., & Khatimi, H. (2021). Klasifikasi kualitas kayu kelapa menggunakan arsitektur CNN. KLIK-KUMPULAN JURNAL ILMU KOMPUTER, 8(1), 49-59.
Neneng, N., Putri, N. U., & Susanto, E. R. (2021). Klasifikasi Jenis Kayu Menggunakan Support Vector Machine Berdasarkan Ciri Tekstur Local Binary Pattern. Cybernetics, 4(02), 93-100.
Novyanto, F., & Nurraharjo, E. (2022). Penentuan Jenis Kayu Untuk Bahan Meubel Dengan Metode Saw. Jurnal Informatika dan Rekayasa Elektronik, 5(2), 191-200. https://doi.org/10.36595/jire.v5i2.683.
Nugraha, P., Komarudin, A., & Ramadhan, E. (2022). Deteksi Objek Dan Jenis Burung Menggunakan Convolutional Neural Network Dengan Arsitektur Inception Resnet-V2. INFOTECH journal, 8(2), 43-51. https://doi.org/10.31949/infotech.v8I2.2889.
Purnama, B., Winarto, E. A., Shairuppdin, S., & Wijaya, I. S. Deteksi Malware Ransomware Menggunakan Deep Neural Network. JEPIN (Jurnal Edukasi dan Penelitian Informatika), 10(1), 8-12.
Rahmadhani, U. S., & Marpaung, N. L. (2023). Klasifikasi Jamur Berdasarkan Genus Dengan Menggunakan Metode CNN. Jurnal Informatika: Jurnal Pengembangan IT, 8(2), 169-173. https://doi.org/10.30591/jpit.v8i2.5229.
Ridho, A., Setiawan, A. F., & Vendyansyah, N. (2024). Klasifikasi kualitas kayu dengan metode k-nearest neighbors (KNN) berbasis website. Jurnal Mahasiswa Teknik Informatika, 8(5), 8609–8617.
Tsar Siregar, M. A. (2022). IDENTIFIKASI CACAT PADA KAYU MENGGUNAKAN FITUR GLCM DENGAN METODE SVM (Doctoral dissertation, Universitas Multi Data Palembang).
Waliyansyah, R. R., & Fitriyah, C. (2019). Perbandingan Akurasi Klasifikasi Citra Kayu Jati Menggunakan Metode Naive Bayes dan k-Nearest Neighbor (k-NN). JEPIN (Jurnal Edukasi dan Penelitian Informatika), 5(2), 157-163. https://doi.org/10.26418/jp.v5i2.32473.