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An automated unsupervised/supervised classification methodology

机译:自动化的非监督/监督分类方法

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摘要

A new methodology is presented for classifying remotely-sensed imagery. This technique is meant to be locally-adaptive, supports non-gaussian statistics, and still allows one to generate an automatic classification. The new methodology requires training data, just as the standard technique does, but it uses an unsupervised technique (ISODATA) with which to first classify the data. The clusters from the unsupervised step are used with the training data in a supervised classification to get the mapping from cluster to class. Often, the statistics of the classification procedure are ill-conditioned for large feature spaces, and so this new methodology is designed for multi-step classifications. The idea is for the analyst to break up the classification into two or more steps where more general classes are separated first. The automated procedure then determines which subset of all the features are necessary at each step of the process. At the moment this is implemented using an exhaustive search stategy, but other methods are possible and will be explored. The resulting classification reports which channels were important at each stage of the classification process, thus automating the first step in understanding how and why the classification process works. In combination with a simple, unsupervised segmentation algorithm, which is also presented, this technique is then applied to SIR-C/X-SAR data.
机译:提出了一种用于对遥感影像进行分类的新方法。该技术旨在本地自适应,支持非高斯统计,并且仍然允许人们生成自动分类。与标准技术一样,新方法需要训练数据,但是它使用了一种无监督技术(ISODATA)来首先对数据进行分类。无监督步骤中的聚类与训练分类中的训练数据一起使用,以获取从聚类到类的映射。通常,分类过程的统计信息不适用于大型特征空间,因此,这种新方法专为多步分类而设计。分析师的想法是将分类分为两个或两个以上步骤,其中首先将更一般的类分开。然后,自动化过程将确定在过程的每个步骤中所有功能的哪些子集是必需的。目前,这是使用穷举搜索策略来实现的,但是其他方法也是可能的,并将进行探索。最终的分类报告了哪些通道在分类过程的每个阶段都很重要,从而使了解分类过程如何以及为什么工作的第一步自动化。结合提出的简单,无监督的分割算法,该技术随后应用于SIR-C / X-SAR数据。

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