基于深度学习对象检测模型的鱼类物种和疾病检测系统

Myeong-Hun Bae, Jun Park, Se-Hoon Jung, Chun-Bo Sim
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引用次数: 0

摘要

在养鱼场中,饲料的过度使用会导致残渣和鱼粪污染水质环境,从而增加了病原体在鱼体内增殖和发病的概率。为了最大限度地减少疾病的发生,在减轻影响鱼的任何应激因素的同时,管理适量的饲料和勤奋地管理育种是至关重要的。这项研究涉及开发一种鱼类和疾病检测系统,其中训练模型以识别不同类型的鱼类及其疾病。该系统是为养鱼户设计的,通过网络提供了一个用户友好的界面。在模型训练中,YOLOv7模型表现出了很高的性能,对鱼类的检测准确率达到了0.9以上。同时,在鱼类疾病检测方面,YOLOv5l模型表现出整体上的优越性能。然而,用于鱼类疾病检测的数据集存在局限性,只有少量样本可用。为了克服这个问题,我们将与YOLOv5l模型一起开发的鱼类和疾病检测系统纳入了网页。该系统旨在帮助识别鱼类种群中的物种、疾病状况和特定受影响区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fish Species and Disease Detection System Using Deep Learning-Based Object Detection Model
In fish farms, the overuse of feed can lead to residue and fish excrement polluting the water quality environment, thereby increasing the probability of pathogen proliferation and disease incidence in fish. In order to minimize the occurrence of diseases, it is crucial to administer an appropriate amount of feed and manage breeding diligently while mitigating any stress factors affecting the fish. This study involves the development of a fish species and disease detection system, where models are trained to identify different types of fish and their diseases. The system is designed to be used by fish farmers, offering a user-friendly interface through the Web. In the model training, the YOLOv7 model demonstrated high performance, achieving over 0.9 accuracy in detecting fish species. Meanwhile, for fish disease detection, the YOLOv5l model exhibited overall superior performance. However, there was a limitation in the dataset for fish disease detection, with only a small number of samples available. To overcome this, the fish species and disease detection system, developed in conjunction with the YOLOv5l model, was incorporated into the web page. This system aims to help identify the species, disease status, and specific affected regions in the fish population.
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