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Spectral slopes for automated classification of land cover in landsat images

机译:光谱坡度,用于对Landat影像中的土地覆盖物进行自动分类

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In the literature, various techniques for supervised/ semi-supervised classification of satellite imageries require manual selection of samples for each class. In this paper, we propose a spectral-slope based classification technique, which automates the process of initial labeling of a set of sample points. These are subsequently used in a supervised classifier as training samples and it performs the task of classification over all the pixels in the image. We demonstrate the effectiveness of our proposed classification technique in summarizing the changes in temporal image sets. For selecting the training samples from the satellite imageries, a set of rules is proposed by using the spectral-slope properties. We classify the land-cover into three classes, namely, water, vegetation, and vegetation-void, and validate the classification results using very high resolution satellite imagery. The approach has also been used in the analysis of images acquired by different sensors operating under similar wavelength ranges.
机译:在文献中,用于卫星图像的监督/半监督分类的各种技术需要为每个类别手动选择样本。在本文中,我们提出了一种基于光谱斜率的分类技术,该技术可自动对一组样本点进行初始标记。这些随后在监督分类器中用作训练样本,并且在图像中的所有像素上执行分类任务。我们证明了我们提出的分类技术在总结时间图像集变化方面的有效性。为了从卫星图像中选择训练样本,通过使用频谱斜率特性提出了一组规则。我们将土地覆盖物分为水,植被和无植被三类,并使用高分辨率卫星图像验证分类结果。该方法也已用于分析在相似波长范围内工作的不同传感器采集的图像。

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