基于人工神经网络的1RS LISS-III卫星图像分类比较研究

Anand Upadhyay, S. Singh, Pooja Singh, Priyanshu Singh
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引用次数: 7

摘要

远程是一种广泛应用的技术,用于从远程位置监测地球表面可用的各种资源。借助卫星图像对不同资源进行解译是非常重要的。因此,本文的研究目的是利用人工神经网络对IRS P-6 LISS-III卫星图像进行分类。人工神经网络采用监督学习对LISS-III卫星图像进行分类。本文采用基于像素的分类方法对LISS-III图像进行分类。使用Matlab 2010实现了该分类器。孟买地区的LISS-III卫星图像用于训练和测试分类器。本文使用混淆矩阵和Kappa系数计算分类器的准确率,除了人工神经网络的实现外,还对隐含层数和神经元数的影响进行了不同的比较研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative study of artificial neural network based classification of 1RS LISS-III satellite images
The remote is the widely used technology for monitoring the different resources available on earth surface from remote location. It is very important to interpret the different resources with the help of the satellite images. So, the purpose of this research paper is to classify the IRS P-6 LISS-III satellite image using the artificial neural network. The artificial neural network uses the supervised learning for the classification of the LISS-III satellite image. Here, the pixel based classification method is adopted for the classification of the LISS-III image. The proposed classifier is implemented using the Matlab 2010.The LISS-III satellite image of Mumbai region is used for training and testing the classifier. In the proposed paper the accuracy of classifier is calculated using the confusion matrix and Kappa coefficient, apart from the implementation of the artificial neural network here the different comparative study related to the impact of the number of hidden layers and number of the neurons is also performed.
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