Hierarchical multispectral image classification based on self organized maps

A. Saveliev, D.V. Dobrinin
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引用次数: 4

Abstract

One of the problems in the thematic interpretation of the remote sensor (RS) data is the processing of the sets of multispectral, multidate images. The problem is that when we try to compare two and more RS image, we have to rectify their geometry and correct atmospheric effects. While the geometric correction could be done with any precision, the atmospheric correction for a set of images is a very complex task, and it could not be solved in a common case. The authors propose a new approach, based on the artificial neural networks, for a stable RS images classification and interpretation without the atmospheric correction. That approach, using the Kohonen's self-organized maps (SOM), has been realized as a part of the ScanEx image processing technology in a computer program NeRIS (Neural Raster Interpretation System). The Sammon's mapping of that SOM classification from the p-dimensional input image space to the 2-dimensional points on a plane (whereby the distances between the mapped vectors tend to approximate to distances of the input vectors), was used for hierarchical classification and stable thematic interpretation of the RS images.
基于自组织地图的分层多光谱图像分类
遥感数据专题解译中的一个问题是多光谱、多数据图像的处理。问题是,当我们试图比较两个或更多的RS图像时,我们必须纠正它们的几何形状并纠正大气效应。虽然几何校正可以达到任何精度,但对一组图像进行大气校正是一项非常复杂的任务,在一般情况下无法解决。提出了一种基于人工神经网络的无需大气校正的稳定遥感影像分类解译方法。该方法使用Kohonen的自组织地图(SOM),已在计算机程序NeRIS(神经光栅解释系统)中作为ScanEx图像处理技术的一部分实现。该SOM分类从p维输入图像空间到平面上的二维点的Sammon映射(其中映射向量之间的距离倾向于接近输入向量的距离)用于RS图像的分层分类和稳定的主题解释。
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