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Statistical methods and neural network approaches for classification of data from multiple sources

机译:统计方法和神经网络方法对多种来源的数据进行分类

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摘要

Statistical methods for classification of data from multiple data sources (e.g., Landsat MSS data, radar data and topographic data) are investigated and compared to neural network models. A problem with using conventional multivariate statistical approaches for classification of data of multiple types is in general that a multivariate distribution cannot be assumed for the classes in the data sources. Another common problem with statistical classification methods is that the data sources are not equally reliable. This means that the data sources need to be weighted according to their reliability but most statistical classification methods do not have a mechanism for this. This research focuses on statistical methods which can overcome these problems: a method of statistical multisource analysis and consensus theory. Reliability measures for weighting the data sources in these methods are suggested and investigated. Secondly, this research focuses on neural network models. The neural networks are distribution-free since no prior knowledge of the statistical distribution of the data is needed. This is an obvious advantage over most statistical classification methods. The neural networks also automatically take care of the problem involving how much weight each data source should have. On the other hand, their training process is iterative and can take a very long time. Methods to speed up the training procedure are introduced and investigated. Experimental results of classification using both neural network models and statistical methods are given, and the approaches are compared based on these results.
机译:研究了对来自多个数据源(例如Landsat MSS数据,雷达数据和地形数据)的数据进行分类的统计方法,并将其与神经网络模型进行了比较。使用常规的多元统计方法对多种类型的数据进行分类的问题通常在于,不能为数据源中的类别假设多元分布。统计分类方法的另一个常见问题是数据源不那么可靠。这意味着需要根据数据源的可靠性对数据源进行加权,但是大多数统计分类方法都没有为此提供机制。这项研究的重点是可以克服这些问题的统计方法:一种统计多源分析和共识理论的方法。建议并研究了在这些方法中加权数据源的可靠性措施。其次,本研究侧重于神经网络模型。神经网络是无分布的,因为不需要数据的统计分布的先验知识。与大多数统计分类方法相比,这是一个明显的优势。神经网络还自动处理涉及每个数据源应具有多少权重的问题。另一方面,他们的训练过程是迭代的,可能会花费很长时间。介绍并研究了加快训练过程的方法。给出了使用神经网络模型和统计方法进行分类的实验结果,并根据这些结果对方法进行了比较。

著录项

  • 作者

    Benediktsson, Jon Atli.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Electrical engineering.;Remote sensing.;Artificial intelligence.
  • 学位 Ph.D.
  • 年度 1990
  • 页码 256 p.
  • 总页数 256
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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