Design and Implementation of Cloud Computing for Fish Freshness Detection Using YOLOv8 Deep Learning Model on FishQ Application

Authors

  • Rifqi Fadhilah Firdaus Telkom University
  • Ledya Novamizanti Telkom University
  • Suryo Adhi Wibowo Telkom University

Abstract

file:///C:/Users/User/Downloads/24.04.1572_jurnal_eproc.pdfSebagai solusi dari permasalah sortasi ikan, dilakukan pengembangan dan pengimplementasian aplikasi FishQ yang menggunakan teknologi cloud computing dan model deep learning YOLOv8 untuk mendeteksi kesegaran ikan cakalang. FishQ dirancang untuk meningkatkan efisiensi dan akurasi dalam proses sortasi ikan yang selama ini dilakukan secara manual dan rentan terhadap kesalahan. Pengujian dilakukan pada 30 sampel ikan cakalang dalam kondisi beku dan tidak beku, dengan kategori segar, tidak segar, dan multiple. Hasil pengujian menunjukkan bahwa sistem mampu mendeteksi kesegaran ikan dengan akurasi tinggi. Analisis hasil pengujian menunjukkan bahwa sistem cloud computing yang dirancang mampu mendeteksi kesegaran ikan dengan efisien dan akurat, terutama lebih cepat pada ikan dalam kondisi beku. Secara keseluruhan, aplikasi FishQ diharapkan dapat membantu perusahaan perikanan dalam meningkatkan efisiensi dan akurasi proses sortasi ikan, sehingga dapat meningkatkan kualitas produk perikanan yang dijual.

Kata kunci— FishQ, cloud computing, YOLOv8, deteksi kesegaran ikan, deep learning, sortasi ikan.

References

Pusat Hidro-Oseanografi TNI Angkatan Laut, https://www.bps.go.id/i d/statistics-table/1/MjAyNCMx/ekspor-ikan-segardingin-hasil-tangkap-menurut-negara-tujuan-utama-- 2012-2022.html. Accessed: Oct. 14, 2022. [3] T. Rudi Hartanto, S. Suharno, and B. Burhanuddin, https://mediaindonesia.com/huma niora/587196/aruna-dorong-peningkatankesejahteraan-nelayan. Accessed: Nov. 20, 2023. [5] R. Yusuf Azhari, https://towardsdatascience.com/using-google-cloudmachine-learning-apis-programmatically-in-pythonpart-1-430f608af6a5. Accessed: Jul. 6, 2024. [8] Google Cloud, "Solusi Praktis: Pemrosesan gambar AI/ML pada Cloud Functions," Cloud Architecture Center, 2024. [Online]. Available: https://cloud.google.com/architecture/ai-ml/imageprocessing-cloud-functions?hl=id. Accessed: Jul. 6, 2024. [9] Google Cloud, "Panduan memulai: Men-deploy aplikasi dalam container ke Cloud Run," Dokumentasi Cloud Build, 2024. [Online]. Available: https://cloud. Google .com/build/docs/deploy-containerizedapplication-cloud -run?hl=id. Accessed: Jul. 6, 2024. [10] Google Cloud, "Men-deploy ke Cloud Run menggunakan Cloud Build," Dokumentasi Cloud Build, 2024. [Online]. Available: https://cloud.google.com /b uild/docs/deployingbuilds/deploy-cloud-run?hl=id. Accessed: Jul. 6, 2024. [11] Google Cloud, "Google Cloud: Layanan Cloud Computing," Google Cloud, 2024. [Online]. Available: https://cloud.google.com/?hl=id. Accessed: Jul. 6, 2024. [12] S. Chikuse, "How to Detect Objects in Images Using the YOLOv8 Neural Network," freeCodeCamp, 2023. [Online]. Available: https://www.freecodecamp.org/news/how-to-detectobjects-in-images-using-yolov8/. Accessed: Jul. 6, 2024. [13] Google Cloud, "Integrasi dengan Google Cloud | Cloud Storage for Firebase," Google Cloud, 2024. [Online]. Available: https://firebase.google.com/docs/stora ge/gcp -integra tion?hl=id. Accessed: Jul. 6, 2024. [14] Google Cloud, "Apa itu Cloud Run," Google Cloud, 2024.[Online].Available: https://cloud.google.com/run/ docs/overview/what-iscloud-run?hl=id. Accessed: Jul. 6, 2024. [15] Google Cloud, "Deep Learning Containers," Google Cloud, 2024. [Online]. Available: https://cloud.google.com/deep-learning-containers. Accessed: Jul. 6, 2024. [16] Amazon Web Services (AWS), "Object Detection Request and Response Formats," AWS Documentation, 2024.[Online].Available: https://docs.aws.amazon.com/ sagemaker/latest/dg/object-detection-in-formats.html. Accessed: Jul. 6, 2024. [17] Landing AI, "JSON Prediction Responses from LandingLens," Landing AI Documentation, 2024. [Online].Available: https://support.landing.ai/docs/json-responses. Accessed: Jul. 6, 2024. [18] Aris Setiyadi, Ema Utami, "Analisa Kemampuan Algoritma YOLOv8 dalam Deteksi Objek Manusia," Jurnal Sains Komputer & Informatika (J-SAKTI), vol. 7, no. 2, pp. 891-901, Sep. 2023. [Online]. Available: https://tunasbangsa.ac.id/ejurnal/index.php/jsakti/artic le/download/694/669. Accessed: Jul. 6, 2024. [19] Imam Maulana, "Analisis Penggunaan Model YOLOv8 (You Only Look Once) terhadap Deteksi Citra Senjata Berbahaya," Jurnal Teknik Informatika, STMIK IKMI, 2023.[Online].Available: https://ejournal.itn.ac.id/index .php/jati/article/view/8271. Accessed: Jul. 6, 2024. [20] H. M. Lathifah, L. Novamizanti, & S. Rizal,

Published

2024-08-31

Issue

Section

Program Studi S1 Teknik Telekomunikasi