Automatic Recognition of Fish Diseases in Fish Farms

A. Waleed, H. Medhat, Mariam Esmail, Kareem Osama, Radwa Samy, Taraggy M. Ghanim
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引用次数: 18

Abstract

Fish diseases are the major cause for increasing mortality in fish farms. Automatic identification of diseased fish at early stages is necessary step to prevent spreading disease. Fish disease diagnosis suffers from some limitations that need high level of expertise to be resolved. Recognition of fish abnormal behaviors helps in early prediction of fish diseases. Fish behavior is evaluated by analyzing fish trajectories in videos. Abnormalities may be due to environmental changes. This paper introduces a survey on what computer vision techniques propose in that field. A comprehensive comparison between different automatic recognition systems is included. Finally, our approach is proposed to automatically recognize and identify three different types of fish diseases. These diseases are Epizootic ulcerative syndrome (EUS), Ichthyophthirius (Ich) and Columnaris. Our approach shows the effect of different color spaces on the Convolutional Neural Networkk CNN final performance.
养鱼场鱼类疾病的自动识别
鱼类疾病是养鱼场死亡率上升的主要原因。在早期阶段自动识别病鱼是防止疾病传播的必要步骤。鱼类疾病诊断存在一些局限性,需要高水平的专业知识才能解决。对鱼类异常行为的识别有助于鱼类疾病的早期预测。通过分析视频中鱼的运动轨迹来评估鱼的行为。异常可能是环境变化所致。本文介绍了计算机视觉技术在该领域的发展概况。对不同的自动识别系统进行了全面的比较。最后,我们提出了一种自动识别和识别三种不同类型鱼类疾病的方法。这些疾病是兽疫性溃疡综合征(EUS)、鱼鳞病(Ich)和柱状病。我们的方法显示了不同颜色空间对卷积神经网络CNN最终性能的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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