An improved YOLOv8 model for fish classification and disease detection

Authors

  • Quang Hoan Nguyen Faculty of Computer Science and Engineering, Thuyloi University
  • Hong Quang Doan National Center for Technological Progress
  • Van Hung Tran Vietnam Research Institute of Electronics, Informatics and Automation
  • Vu Thi Tuyet Nhung Hanoi College of High Technology
  • Duc Anh Duong Vietnam Research Institute of Electronics, Informatics and Automation

DOI:

https://doi.org/10.64032/mca.v29i2.279

Keywords:

Convolutional Neural Networks, YOLOv8, Neural Network, Fish Classification, Fish Disease

Abstract

Fish classification and disease detection are crucial for sustainable aquaculture, necessitating accurate and efficient vision models. This study introduces FISH-YOLOV8, an enhanced YOLOv8 variant, incorporating: (1) SPD-Conv for optimized feature extraction and reduced computational load; (2) BiFormer Attention for enhanced small object detection and occlusion management; (3) dynamic IoU-threshold NMS to minimize false positives. This Article states that, evaluated on 15,162 images, FISH-YOLOV8 attains a mAP@50 of 0.990 and a mAP@50:95 of 0.859, outperforming baseline YOLOv8 and advanced models such as YOLOv11, at 45 fps, supports effective real-time aquaculture monitoring.

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Published

17-06-2025

How to Cite

Nguyen, Q. H., Doan, H. Q., Tran, V. H., Vu Thi Tuyet Nhung, & Duong, D. A. (2025). An improved YOLOv8 model for fish classification and disease detection. Journal of Measurement, Control, and Automation, 29(2), 64–72. https://doi.org/10.64032/mca.v29i2.279

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