Implementasi Jaringan Syaraf Tiruan Menggunakan Metode Self-Organizing Map Pada Klasifikasi Citra Jenis Ikan Kakap


  • Rini Nuraini * Mail Universitas Nasional, Jakarta, Indonesia
  • (*) Corresponding Author
Keywords: Self-Organizing Maps; Image Classification; RGB; HSV; GLCM

Abstract

Snapper is one of the favorite fish for consumption because it has a myriad of benefits for the human body. There are many types of snapper, especially snapper which is often found in Indonesian waters. Knowing the types of snapper is important knowledge because snapper has different characteristics, for example there are snapper that can be consumed and there are also types of snapper that can be cultivated. However, the lack of information and similar types of snapper makes it difficult for people to identify the type of snapper. This study aims to implement a Self-Organizing Map (SOM) artificial neural network for classification of snapper species based on color and texture characteristics. In order to provide information about the snapper object to be classified, color and texture feature extraction is used. In color feature extraction, RGB and HSV parameters are used and for texture features, the Gray Level Co-occurrence Matrix (GLCM) approach is applied. Furthermore, the characteristic results obtained will be classified using the Self-Organizing Map (SOM) algorithm which divides the input patterns into certain classes so that the network output is in the form of classes that have similarities to the given input. Based on the results of the accuracy test, the built model is capable of producing an accuracy of 89.89%. Thus, the SOM model built for image classification of snapper species is in the good category.

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References

A. H. Dafiq, Z. Anna, A. Rizal, and A. A. H. Suryana, “Analisis Bioekonomi Sumber Daya Ikan Kakap Merah (Lutjanus Malabaricus) di Perairan Kabupaten Indramayu Jawa Barat,” J. Perikan. dan Kelaut., vol. X, no. 1, pp. 8–19, 2019.

S. Sadya, “Produksi Ikan Kakap Indonesia Capai 312.945 Ton pada 2021,” Dataindonesia.id, 2022. https://dataindonesia.id/sektor-riil/detail/produksi-ikan-kakap-indonesia-capai-312945-ton-pada-2021

S. Surianti, Buku Ajar: Dasar-Dasar Akuakultur (Budidaya Perikanan). Bandung: Media Sains Indonesia, 2022.

P. N. Andono, T. Sutojo, and M. Muljono, Pengolahan Citra Digital. Yogyakarta: Penerbit Andi, 2017.

R. I. Borman, F. Rossi, Y. Jusman, A. A. A. Rahni, S. D. Putra, and A. Herdiansah, “Identification of Herbal Leaf Types Based on Their Image Using First Order Feature Extraction and Multiclass SVM Algorithm,” in International Conference on Electronic and Electrical Engineering and Intelligent System (ICE3IS), 2021, pp. 12–17.

R. I. Borman, R. Napianto, N. Nugroho, D. Pasha, Y. Rahmanto, and Y. E. P. Yudoutomo, “Implementation of PCA and KNN Algorithms in the Classification of Indonesian Medicinal Plants,” in International Conference on Computer Science, Information Technology, and Electrical Engineering (ICOMITEE), 2021, pp. 46–50. doi: 10.1109/ICOMITEE53461.2021.9650176.

A. Herdiansah, R. I. Borman, D. Nurnaningsih, A. A. J. Sinlae, and R. R. Al Hakim, “Klasifikasi Citra Daun Herbal Dengan Menggunakan Backpropagation Neural Networks Berdasarkan Ekstraksi Ciri Bentuk,” JURIKOM (Jurnal Ris. Komputer), vol. 9, no. 2, pp. 388–395, 2022, doi: 10.30865/jurikom.v9i1.3846.

R. I. Borman, B. Priopradono, and A. R. Syah, “Klasifikasi Objek Kode Tangan pada Pengenalan Isyarat Alphabet Bahasa Isyarat Indonesia (Bisindo),” in Seminar Nasional Informatika dan Aplikasinya (SNIA), 2017, no. September, pp. 1–4.

Y. Yuliska and K. U. Syaliman, “Peningkatan Akurasi K-Nearest Neighbor Pada Data Index Standar Pencemaran Udara Kota Pekanbaru,” IT J. Res. Dev., vol. 5, no. 1, pp. 11–18, 2020.

E. P. Wanti and M. Muhathir, “Pengidentifikasian Citra Ikan Berformalin Dengan Menggunakan Metode Multilayer Perceptron,” J. Sains Komput. Inform., vol. 5, no. 1, pp. 491–502, 2021.

Z. Y. Lamasgi, S. Serwin, Y. Lasena, and H. Husdi, “Identifikasi Tingkat Kesegaran Ikan Tuna Menggunakan Metode GLCM dan KNN,” Jambura J. Electr. Electron. Eng., vol. 4, no. 1, pp. 70–76, 2022.

F. Izhari, M. Zarlis, and S. Sutarman, “Analysis of backpropagation neural neural network algorithm on student ability based cognitive aspects,” 2020. doi: 10.1088/1757-899X/725/1/012103.

A. Nurkholis, D. Alita, Z. Amalia, and A. Sucipto, “Hotspot Classification for Forest Fire Prediction using C5.0 Algorithm,” in International Conference on Intelligent Cybernetics Technology & Applications (ICICyTA), 2021, pp. 12–16.

M. Cottrell, M. Olteanu, F. Rossi, and N. N. Villa-Vialaneix, “Self-Organizing Maps, theory and applications,” Rev. Investig. Operacional, vol. 39, no. 1, pp. 1–20, 2018.

B. Dong, G. Weng, and R. Jin, “Active contour model driven by Self Organizing Maps for image segmentation,” Expert Syst. Appl., vol. 177, pp. 1–9, 2021, doi: 10.1016/j.eswa.2021.114948.

A. C. Benabdellah, A. Benghabrit, and I. Bouhaddou, “A survey of clustering algorithms for an industrial context,” Procedia Comput. Sci., vol. 148, pp. 291–302, 2019, doi: 10.1016/j.procs.2019.01.022.

F. Farooq, J. Ahmed, and L. Zheng, “Facial Expression Recognition Using Hybrid Features and Self-Organizing Maps,” in International Conference on Multimedia and Expo (ICME), 2017, pp. 409–414. doi: 10.1109/ICME.2017.8019503.

M. Wong, W. Abeysinghe, and C. Hung, “A Massive Self-Organizing Map For Hyperspectral Image Classification,” in Workshop on Hyperspectral Imaging and Signal Processing: Evolution in Remote Sensing (WHISPERS), 2019, pp. 1–5. doi: 10.1109/WHISPERS.2019.8921093.

S. Mishra and M. Panda, “Medical image retrieval using self-organising map on texture features,” Futur. Comput. Informatics J., vol. 3, pp. 359–370, 2018, doi: 10.1016/j.fcij.2018.10.006.

A. Mulyanto, W. Jatmiko, P. Mursanto, P. Prasetyawan, and R. I. Borman, “A New Indonesian Traffic Obstacle Dataset and Performance Evaluation of YOLOv4 for ADAS,” J. ICT Res. Appl., vol. 14, no. 3, pp. 286–298, 2021.

A. Mulyanto, R. I. Borman, P. Prasetyawan, W. Jatmiko, P. Mursanto, and A. Sinaga, “Indonesian Traffic Sign Recognition For Advanced Driver Assistent (ADAS) Using YOLOv4,” in International Seminar on Research of Information Technology and Intelligent Systems (ISRITI), 2020, pp. 520–524.

S. Sumijan and P. A. W. Purnama, Teori dan Aplikasi Pengolahan Citra Digital Penerapan dalam Bidang Citra Medis. Solok: Insan Cendekia Mandiri, 2021.

R. I. Borman, I. Ahmad, and Y. Rahmanto, “Klasifikasi Citra Tanaman Perdu Liar Berkhasiat Obat Menggunakan Jaringan Syaraf Tiruan Radial Basis Function,” Bull. Informatics Data Sci., vol. 1, no. 1, pp. 6–13, 2022.

R. I. Borman and B. Priyopradono, “Implementasi Penerjemah Bahasa Isyarat Pada Bahasa Isyarat Indonesia (BISINDO) Dengan Metode Principal Component Analysis (PCA),” J. Inform. J. Pengemb. IT, vol. 03, no. 1, pp. 103–108, 2018.

H. Mayatopani, R. I. Borman, W. T. Atmojo, and A. Arisantoso, “Classification of Vehicle Types Using Backpropagation Neural Networks with Metric and Ecentricity Parameters,” J. Ris. Inform., vol. 4, no. 1, pp. 65–70, 2021, doi: 10.34288/jri.v4i1.293.

G. Zhu, X. Wu, J. Ge, F. Liu, W. Zhao, and C. Wu, “In fl uence of mining activities on groundwater hydrochemistry and heavy metal migration using a self-organizing map (SOM),” J. Clean. Prod., vol. 257, pp. 1–14, 2020, doi: 10.1016/j.jclepro.2020.120664.

G. Duan, X. Liao, W. Yu, and G. Li, “Classification and Prediction of Violence Against Chinese Medical Staff on the Sina Microblog Based on a Self-Organizing Map: Quantitative Study,” J. Med. Interes. Res., vol. 22, no. 5, pp. 1–13, 2020, doi: 10.2196/13294.

Z. Abidin, R. I. Borman, F. B. Ananda, P. Prasetyawan, F. Rossi, and Y. Jusman, “Classification of Indonesian Traditional Snacks Based on Image Using Convolutional Neural Network (CNN) Algorithm,” in International Conference on Electronic and Electrical Engineering and Intelligent System (ICE3IS), 2022, pp. 18–23.

R. I. Borman, Y. Fernando, and Y. Egi Pratama Yudoutomo, “Identification of Vehicle Types Using Learning Vector Quantization Algorithm with Morphological Features,” J. RESTI (Rekayasa Sist. dan Teknol. Informasi), vol. 6, no. 2, pp. 339–345, 2022, doi: 10.29207/resti.v6i2.3954.


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Submitted: 2022-11-20
Published: 2022-12-26
Abstract View: 1618 times
PDF Download: 1244 times
How to Cite
Nuraini, R. (2022). Implementasi Jaringan Syaraf Tiruan Menggunakan Metode Self-Organizing Map Pada Klasifikasi Citra Jenis Ikan Kakap. Building of Informatics, Technology and Science (BITS), 4(3), 1325−1333. https://doi.org/10.47065/bits.v4i3.2558
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