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Integration of spatial and spectral information by means of unsupervised extraction and classification for homogenous objects applied to multispectral and hyperspectral data

机译:通过无监督提取和分类对应用于多光谱和高光谱数据的同质对象进行空间和光谱信息集成

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摘要

This paper presents a method of unsupervised enhancement of pixels homogeneity in a local neighborhood. This mechanism will enable an unsupervised contextual classification of multispectral data that integrates the spectral and spatial information producing results that are more meaningful to the human analyst. This unsupervised classifier is an unsupervised development of the well-known supervised extraction and classification for homogenous objects (ECHO) classifier. One of its main characteristics is that it simplifies the retrieval process of spatial structures. This development is specially relevant for the new generation of airborne and spaceborne sensors with high spatial resolution.
机译:本文提出了一种在局部邻域中无监督地增强像素均匀性的方法。这种机制将实现对多光谱数据的无监督上下文分类,该分类将光谱和空间信息整合在一起,从而产生对人类分析家更有意义的结果。此无监督分类器是众所周知的同质对象监督提取和分类(ECHO)分类器的无监督开发。它的主要特征之一是简化了空间结构的检索过程。这一发展特别适用于具有高空间分辨率的新一代机载和星载传感器。

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