Optimasi Deteksi Objek Dengan Segmentasi dan Data Augmentasi Pada Hewan Siput Beracun Menggunakan Algoritma You Only Look Once (YOLO)

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Reyga Ferdiansyah Putra
Dadang Iskandar Mulyana

Abstract

Significant progress has been achieved in visual detection, and the abundance of remarkable models has been proposed. Object detection is an important task in various popular fields such as medical diagnosis, robot navigation, autonomous driving, augmented reality, and more. This research aims to develop an optimized object detection model with segmentation and augmentation using the YOLO (You Only Look Once) algorithm for recognizing 10 types of toxic snails in images and videos. The dataset consists of 5,720 images that have been augmented using Roboflow, divided into 5,000 images for training, 480 images for validation, and 240 images for testing. With a model training of 50 epochs, YOLOv8 Box_Curve F1-Confidence achieved "0.98 at 0.625", Precision Confidence "1.00 at 0.997", Precision Recall "0.987 mAP@0.5", and Recall Confidence "1.00 at 0.000". Mask_Curve, YOLOv8 achieved "0.98 at 0.625", Precision Confidence "1.00 at 0.997", Precision Recall "0.986 mAP@0.5", and Recall Confidence "1.00 at 0.000".

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How to Cite
Putra, R. F., & Mulyana, D. I. (2024). Optimasi Deteksi Objek Dengan Segmentasi dan Data Augmentasi Pada Hewan Siput Beracun Menggunakan Algoritma You Only Look Once (YOLO). Jurnal JTIK (Jurnal Teknologi Informasi Dan Komunikasi), 8(1), 93–103. https://doi.org/10.35870/jtik.v8i1.1391
Section
Computer & Communication Science
Author Biographies

Reyga Ferdiansyah Putra, Sekolah Tinggi Ilmu Komputer Cipta Karya Informatika

Program Studi Teknik Informatika, Sekolah Tinggi Ilmu Komputer Cipta Karya Informatika, Kota Jakarta Timur, Daerah Khusus Ibukota Jakarta, Indonesia

Dadang Iskandar Mulyana, Sekolah Tinggi Ilmu Komputer Cipta Karya Informatika

Program Studi Teknik Informatika, Sekolah Tinggi Ilmu Komputer Cipta Karya Informatika, Kota Jakarta Timur, Daerah Khusus Ibukota Jakarta, Indonesia

References

He, W., Huang, Z., Wei, Z., Li, C. and Guo, B., 2019. TF-YOLO: An improved incremental network for real-time object detection. Applied Sciences, 9(16), p.3225. DOI: https://doi.org/10.3390/app9163225.

Fang, W., Wang, L. and Ren, P., 2019. Tinier-YOLO: A real-time object detection method for constrained environments. Ieee Access, 8, pp.1935-1944. DOI: https://doi.org/10.1109/ACCESS.2019.2961959.

Meyer, F., 2019. Watersheds and Flooding: a Segmentation Golden Braid

Azizah, A.N. and Fatichah, C., 2023. Tajweed-YOLO: Object Detection Method for Tajweed by Applying HSV Color Model Augmentation on Mushaf Images. Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi), 7(2), pp.236-245. DOI: https://doi.org/10.29207/resti.v7i1.4739.

Khairunnas, K., Yuniarno, E.M. and Zaini, A., 2021. Pembuatan Modul Deteksi Objek Manusia Menggunakan Metode YOLO untuk Mobile Robot. Jurnal Teknik ITS, 10(1), pp.A50-A55. DOI: http://dx.doi.org/10.12962/j23373539.v10i1.61622.

Thoriq, M.Y.A., Siradjuddin, I.A. and Permana, K.E., 2023. Deteksi Wajah Manusia Berbasis One Stage Detector Menggunakan Metode You Only Look Once (Yolo). Jurnal Teknoinfo, 17(1), pp.66-73. DOI: https://doi.org/10.33365/jti.v17i1.1884.

Li, W., Chen, C., Zhang, M., Li, H. and Du, Q., 2018. Data augmentation for hyperspectral image classification with deep CNN. IEEE Geoscience and Remote Sensing Letters, 16(4), pp.593-597. DOI: https://doi.org/10.1109/LGRS.2018.2878773.

Zhang, M., Li, W. and Du, Q., 2018. Diverse region-based CNN for hyperspectral image classification. IEEE Transactions on Image Processing, 27(6), pp.2623-2634. DOI: https://doi.org/10.1109/TIP.2018.2809606.

Zhao, L. and Zhu, M., 2023. MS-YOLOv7: YOLOv7 based on multi-scale for object detection on UAV aerial photography. Drones, 7(3), p.188. DOI: https://doi.org/10.3390/drones7030188.

Wang, C.Y., Bochkovskiy, A. and Liao, H.Y.M., 2023. YOLOv7: Trainable bag-of-freebies sets new state-of-the-art for real-time object detectors. In Proceedings of the IEEE/CVF conference on computer vision and pattern recognition (pp. 7464-7475). Source code is released in https://github.com/ WongKinYiu/yolov7.

BAKIRMAN, T., 2023. An Assessment of YOLO Architectures for Oil Tank Detection from SPOT Imagery. International Journal of Environment and Geoinformatics, 10(1), pp.9-15. DOI: https://doi.org/10.30897/ijegeo.1196817.

Sapitri, A.I., Nurmaini, S., Rachmatullah, M.N., Tutuko, B., Darmawahyuni, A., Firdaus, F., Rini, D.P. and Islami, A., 2023. Deep learning-based real time detection for cardiac objects with fetal ultrasound video. Informatics in Medicine Unlocked, 36, p.101150. DOI: https://doi.org/10.1016/j.imu.2022.101150.

Siddique, S., Islam, S., Neon, E.E., Sabbir, T., Naheen, I.T. and Khan, R., 2023. Deep learning-based bangla sign language detection with an edge device. Intelligent Systems with Applications, 18, p.200224. DOI: https://doi.org/10.1016/j.iswa.2023.200224Ref.

Cao, L., Zheng, X. and Fang, L., 2023. The semantic segmentation of standing tree images based on the Yolo V7 deep learning algorithm. Electronics, 12(4), p.929. DOI: https://doi.org/10.3390/electronics12040929.

Yudianto, M.R.A., Kusrini, K. and Al Fatta, H., 2020. Analisis Pengaruh Tingkat Akurasi Klasifikasi Citra Wayang dengan Algoritma Convolitional Neural Network. (JurTI) Jurnal Teknologi Informasi, 4(2), pp.182-191. DOI: https://doi.org/10.36294/jurti.v4i2.1319.