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Inter-Spectral and Intra-Spectral Features for Effective Classification of Remotely Sensed Images

机译:光谱间和光谱内特征对遥感影像进行有效分类

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Feature selection and extraction are the crucial steps that help to achieve meaningful classification of remotely sensed images. This paper presents a novel work, which selects a high level set of features from the remotely sensed images, than the conventional methods. The new features introduced in this work are inter-spectral and intra-spectral features. It is observed that these features aid us to differentiate between the characteristic pixels of each class in the image. Different classifiers are fed with different types of features of the images and a comparison of the same is also presented in the paper.
机译:特征选择和提取是帮助实现遥感图像有意义分类的关键步骤。与传统方法相比,本文提出了一种新颖的作品,该作品从遥感图像中选择了高级特征集。这项工作中引入的新功能是光谱间和光谱内特征。可以看出,这些特征有助于我们区分图像中每个类别的特征像素。不同的分类器具有不同类型的图像特征,并且在本文中也进行了比较。

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