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首页> 外文期刊>International journal of remote sensing >Multispectral landuse classification using neural networks and support vector machines: one or the other, or both?
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Multispectral landuse classification using neural networks and support vector machines: one or the other, or both?

机译:使用神经网络和支持向量机的多光谱土地利用分类:一个还是另一个,还是两者兼而有之?

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摘要

Land use classification is an important part of many remote sensing applications. A lot of research has gone into the application of statistical and neural network classifiers to remote-sensing images. This research involves the study and implementation of a new pattern recognition technique introduced within the framework of statistical learning theory called Support Vector Machines (SVMs), and its application to remote-sensing image classification. Standard classifiers such as Artificial Neural Network (ANN) need a number of training samples that exponentially increase with the dimension of the input feature space. With a limited number of training samples, the classification rate thus decreases as the dimensionality increases. SVMs are independent of the dimensionality of feature space as the main idea behind this classification technique is to separate the classes with a surface that maximizes the margin between them, using boundary pixels to create the decision surface. Results from SVMs are compared with traditional Maximum Likelihood Classification (MLC) and an ANN classifier. The findings suggest that the ANN and SVM classifiers perform better than the traditional MLC. The SVM and the ANN show comparable results. However, accuracy is dependent on factors such as the number of hidden nodes (in the case of ANN) and kernel parameters (in the case of SVM). The training time taken by the SVM is several magnitudes less.
机译:土地用途分类是许多遥感应用的重要组成部分。统计和神经网络分类器在遥感图像中的应用已经进行了很多研究。这项研究涉及在称为支持向量机(SVM)的统计学习理论框架内引入的一种新模式识别技术的研究和实现,并将其应用于遥感图像分类。诸如人工神经网络(ANN)之类的标准分类器需要大量训练样本,这些样本随输入特征空间的尺寸呈指数增长。因此,在训练样本数量有限的情况下,分类率会随着维数的增加而降低。 SVM独立于特征空间的维数,因为此分类技术背后的主要思想是使用边界像素创建决策表面,以最大程度地增加类之间的余量的表面来分离类。将SVM的结果与传统的最大似然分类(MLC)和ANN分类器进行比较。研究结果表明,ANN和SVM分类器的性能优于传统的MLC。 SVM和ANN显示出可比的结果。但是,准确性取决于诸如隐藏节点的数量(对于ANN)和内核参数(对于SVM)等因素。 SVM花费的训练时间要少几个数量级。

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