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Support Vector Machines for Remote-Sensing Image classification

机译:支持向量机用于遥感图像分类

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摘要

In the last decade, the application of statistt ical and neural network classifiers to remote-sensing images has been deeply investigated. Therefore, performances, characteristics, and pros and cons of such classifiers are quite well know, even from remote-sensing practitioners. In this paper, we present the application to remote-sensing image classification of a new pattern recognition technique recently introduced within the framework of the Statistical Learning Theory developed by V. Vapnik and his co-workers, namely, the Support Vector Machines (SVMs). In section 1, the main theoretical foundations of SVMs are presented. In section 2, experiments carried out on a data set of multisensor remote-sensing images are described, with particular emphasis on the design and training phase of a SVM. In section 3, the experimental results are reported, together with a comparison between the performances of SVMs, neural network, and k-NN classifiers.
机译:在过去的十年中,已经对统计和神经网络分类器在遥感图像中的应用进行了深入研究。因此,即使是遥感从业人员,也非常了解此类分类器的性能,特点和优缺点。在本文中,我们介绍了V. Vapnik及其同事开发的统计学习理论框架中最近引入的一种新的模式识别技术在遥感图像分类中的应用,即支持向量机(SVM) 。在第1节中,介绍了SVM的主要理论基础。在第2节中,描述了在多传感器遥感图像的数据集上进行的实验,尤其着重于SVM的设计和训练阶段。在第3节中,将报告实验结果以及SVM,神经网络和k-NN分类器的性能之间的比较。

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