Evaluation of ML Models for Detection and Prediction of Fish Diseases: A Case Study on Epizootic Ulcerative Syndrome

K. Sujatha, Pakanati Mounika
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引用次数: 1

Abstract

Fish diseases pose significant threats to the aquaculture industry, leading to adverse economic and environmental impacts. The early detection and diagnosis of fish diseases are crucial for effective disease control and prevention. In this study, fish images with Epizootic Ulcerative Syndrome (EUS) disease symptoms were collected along with non-infected fish images, which were then augmented to obtain a larger dataset. The pre-processed images were analysed using different machine learning algorithms, including “decision tree, logistic regression, naive Bayes, support vector machine (SVM), and multi-layer perceptron (MLP)”. The study found that the SVM-based system was effective in detecting EUS disease in fish, achieving an accuracy of 85.24% on the original dataset using a polynomial kernel, and 82.75% on the augmented dataset using a Gaussian kernel. These results suggest that SVM-based systems can be used for the early detection and prevention of EUS disease in fish, highlighting their potential for application in the aquaculture industry. Furthermore, the study indicates the importance of dataset augmentation in improving the accuracy of machine learning models in detecting fish diseases. The findings of this study can serve as a foundation for future research on the development of effective machine learning models for the early detection and diagnosis of various fish diseases.
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鱼类疾病检测与预测的ML模型评价——以兽疫溃疡综合征为例
鱼类疾病对水产养殖业构成重大威胁,导致不利的经济和环境影响。鱼类疾病的早期发现和诊断是有效控制和预防疾病的关键。在本研究中,将具有兽疫溃疡综合征(EUS)疾病症状的鱼类图像与未感染的鱼类图像一起收集,然后对其进行增强以获得更大的数据集。预处理后的图像使用不同的机器学习算法进行分析,包括“决策树,逻辑回归,朴素贝叶斯,支持向量机(SVM)和多层感知器(MLP)”。研究发现,基于svm的系统可以有效地检测鱼类EUS疾病,使用多项式核对原始数据集的准确率为85.24%,使用高斯核对增强数据集的准确率为82.75%。这些结果表明,基于支持向量机的系统可用于鱼类EUS疾病的早期检测和预防,突出了其在水产养殖业中的应用潜力。此外,该研究表明了数据集增强在提高机器学习模型检测鱼类疾病的准确性方面的重要性。这项研究的发现可以作为未来研究开发有效的机器学习模型的基础,用于早期发现和诊断各种鱼类疾病。
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