Fish Detection and Classification for Automatic Sorting System with an Optimized YOLO Algorithm

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Abstract

Featured Application: In the future, the application of this study is very feasible and very close to being implemented for the auto-sorting system for various fish or other objects, in the fish industry or other industries, with deep learning and machine vision technology. Automatic fish recognition using deep learning and computer or machine vision is a key part of making the fish industry more productive through automation. An automatic sorting system will help to tackle the challenges of increasing food demand and the threat of food scarcity in the future due to the continuing growth of the world population and the impact of global warming and climate change. As far as the authors know, there has been no published work so far to detect and classify moving fish for the fish culture industry, especially for automatic sorting purposes based on the fish species using deep learning and machine vision. This paper proposes an approach based on the recognition algorithm YOLOv4, optimized with a unique labeling technique. The proposed method was tested with videos of real fish running on a conveyor, which were put randomly in position and order at a speed of 505.08 m/h and could obtain an accuracy of 98.15%. This study with a simple but effective method is expected to be a guide for automatically detecting, classifying, and sorting fish.

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APA

Kuswantori, A., Suesut, T., Tangsrirat, W., Schleining, G., & Nunak, N. (2023). Fish Detection and Classification for Automatic Sorting System with an Optimized YOLO Algorithm. Applied Sciences (Switzerland), 13(6). https://doi.org/10.3390/app13063812

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