Detecting High-risk Area for Lumpy Skin Disease in Cattle Using Deep Learning Feature

M. Genemo
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引用次数: 2

Abstract

Cattle’s lumpy skin disease is a viral disease that transmits by blood-feeding insects like mosquitoes. The disease mostly affects animals that have not previously been exposed to the virus. Cattle lumpy skin disease impacts milk, beef, and national and international livestock trade. Traditional lumpy skin disease diagnosis is very difficult due to, the lack of materials, experts, and time-consuming. Due to this, it is crucial to use deep learning algorithms with the ability to classify the disease with high accuracy performance results. Therefore, Deep learning-based segmentation and classification are proposed for disease segmentation and classification by using deep features. For this, 10 layers of Convolutional Neural Networks have been chosen. The developed framework is initially trained on a collected Cattle’s lumpy Skin Disease (CLSD) dataset. The features are extracted from input images; hence the color of the skin is very important to identify the affected area during disease representation we used a color histogram. This segmented area of affected skin color is used for feature extraction by a deep pre-trained CNN. Then the generated result is converted into a binary using a threshold. The Extreme learning machine (ELM) classifier is used for classification. The classification performance of the proposed methodology achieved an accuracy of 0.9012% on CLSD To prove the effectiveness of the proposed methods, we present a comparison with the state-of-the-art techniques.
基于深度学习特征的牛肿块性皮肤病高危区域检测
牛的肿块性皮肤病是一种病毒性疾病,通过蚊子等吸血昆虫传播。这种疾病主要影响以前没有接触过这种病毒的动物。牛肿块性皮肤病影响牛奶、牛肉以及国内和国际牲畜贸易。传统的肿块性皮肤病由于缺乏材料、专家和耗时等原因,诊断非常困难。因此,使用能够以高精度性能结果对疾病进行分类的深度学习算法至关重要。因此,提出了基于深度学习的分割分类方法,利用深度特征对疾病进行分割分类。为此,我们选择了10层卷积神经网络。开发的框架最初是在收集的牛肿块性皮肤病(CLSD)数据集上进行训练的。从输入图像中提取特征;因此,在疾病表征期间,皮肤的颜色对于识别受影响的区域非常重要,我们使用了颜色直方图。这个被分割的受影响肤色区域被深度预训练的CNN用于特征提取。然后使用阈值将生成的结果转换为二进制。使用极限学习机(ELM)分类器进行分类。该方法的分类性能在CLSD上达到了0.9012%的准确率。为了证明所提出方法的有效性,我们与最先进的技术进行了比较。
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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