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Data Mining Applications on large RSI Data

机译:大型RSI数据上的数据挖掘应用

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摘要

Data Mining becomes more important as more and more data are generated and collected. In this paper, we discuss the application of data mining to Remotely Sensed Imagery (RSI) Data. Since RSI data contains huge amounts of information, it's a high potent area for data mining. Association Rule Mining can be applied to RSI data in which each pixel is a transaction. Discretization needs to be performed first to deal with quantitative data. Equi-length, equisupport and user-defined partition are three ways of discretization. Based on the characteristics of RSI data and the "item group" idea, two pruning techniques are proposed to prune uninteresting rules, thus improving the efficiency. Some pre-processing and post-processing on RSI data can provide a fast way of discovering rules. The application of another two important data mining techniques, clustering and classification, on RSI data, are also described.
机译:随着越来越多的数据生成和收集,数据挖掘变得越来越重要。在本文中,我们讨论了数据挖掘在遥感影像(RSI)数据中的应用。由于RSI数据包含大量信息,因此这是数据挖掘的强大领域。关联规则挖掘可以应用于RSI数据,其中每个像素都是一个事务。首先需要进行离散化处理定量数据。等长,等分支持和用户定义的分区是离散化的三种方式。基于RSI数据的特征和“项目组”的思想,提出了两种修剪不规则规则的修剪技术,从而提高了效率。对RSI数据进行一些预处理和后处理可以提供一种发现规则的快速方法。还描述了另外两种重要的数据挖掘技术,即聚类和分类在RSI数据上的应用。

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