基于机器学习的鱼肝显微图像污染检测方法

Asmaa Hashem Sweidan, Nashwa El-Bendary, A. Hassanien, O. Hegazy, A. Mohamed
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引用次数: 7

摘要

本文提出了一种基于鱼肝组织病理学的水质自动分类方法。由于鱼肝脏是检测水体化学污染的良好生物指标,本方法利用鱼肝脏显微图像检测水体污染。拟议的办法包括三个阶段;即预处理、特征提取和分类三个阶段。由于颜色和纹理是微观鱼肝图像最重要的特征,该系统采用彩色直方图和Gabor小波变换对水质程度进行分类。同时,将主成分分析(PCA)和支持向量机(svm)算法分别用于特征提取和水质程度分类。收集的数据集分别包含125张彩色JPEG图像作为训练数据集和45张图像作为测试数据集。训练数据集分为4类,代表不同的组织病理变化及其对应的水质程度。实验结果表明,采用支持向量机线性核函数对每类37张图像进行训练,所提出的分类方法获得了93.3%的水质分类准确率。
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Machine Learning based Approach for Water pollution detection via fish liver microscopic images analysis
This article presents an automatic classification approach for assessing water quality based on fish liver histopathology. As fish liver is a good bioindicator for detecting water chemical pollution, the proposed approach utilizes fish liver microscopic images in order to detect water pollution. The proposed approach consists of three phases; namely pre-processing, feature extraction, and classification phases. Since color and texture are the most important characteristics of microscopic fish liver images, the proposed system uses colored histogram and Gabor wavelet transform for classifying water quality degree. Also, it implemented Principal Components Analysis (PCA) along with Support Vector Machines (SVMs) algorithms for feature extraction and water quality degree classification, respectively. Collected datasets contain colored JPEG images of 125 images as training dataset and 45 images as testing dataset, respectively. Training dataset is divided into 4 classes representing the different histopathlogical changes and their corresponding water quality degrees. Experimental results showed that the proposed classification approach has obtained water quality classification accuracy of 93.3%, using SVMs linear kernel function with 37 images per class for training.
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