Hierarchical classification of SAR data with feature extraction method based on texture features

N. G. Kasapoglu, B. Yazgan
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引用次数: 1

Abstract

In this study hierarchical classification structure and the feature extraction method based on texture features are applied to SAR data. The most important feature of hierarchical classification is to break down a complex decision-making process into a collection of simpler decisions. In order to achieve more complex analysis it is advantageous to use binary decision trees, in which the decision between only two classes must be assigned at each node. Pixel based feature extraction methods reduce classification performance because of the speckle and also conventional texture analysis is not applicable to every part of an image. Therefore, a decision-making process, which can be applied to every pixel of an image, is required. The results show that computation time and accuracy of classification process are improved.
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基于纹理特征的SAR数据层次分类方法
本研究将分层分类结构和基于纹理特征的特征提取方法应用于SAR数据。分层分类最重要的特点是将复杂的决策过程分解为一系列更简单的决策。为了实现更复杂的分析,使用二叉决策树是有利的,在二叉决策树中,每个节点只需要分配两个类之间的决策。基于像素的特征提取方法由于存在散斑而降低了分类性能,而且传统的纹理分析并不适用于图像的每个部分。因此,需要一个可以应用于图像的每个像素的决策过程。结果表明,该方法提高了分类过程的计算时间和精度。
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