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Consensual and hierarchical classification of remotely sensed multispectral images.

机译:遥感多光谱图像的共识和层次分类。

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摘要

Classification of remotely sensed multispectral images involves assigning a class to each pixel which has similar characteristics with known land cover. This is the important step in remote sensing to extract information about the Earth's surface. Statistical methods and computational intelligence algorithms such as neural networks are commonly used for classification. However, no single classifier can be good for all kinds of multispectral images. To obtain consistent and improved results, consensual and hierarchical approaches are applied. The proposed method consists of nonlinear image filtering, different multiple classifiers which use statistical methods or hierarchical neural networks with rejection schemes, and a combining scheme for integrating the results of multiple classifiers by a consensus rule. Nonlinear image filtering is used to reduce variance of homogeneous region and improve spectral separability.; Most errors in classification occur with the data which are close to boundaries between classes. To handle these data more effectively, hierarchical structure is applied in classification using neural networks. By successive classifiers which are tuned to reduce remaining error, classification performance increases. This structure includes detection schemes to decide whether successive classifiers are utilized for each input. Rules are developed to determine automatically how many successive classifiers are needed. To obtain more reliable classification result for a given input pattern, multiple classification results for the same input pattern are combined by a consensus rule. Optimal weights for combining multiple classification results are computed in the sense of least squares based on the trained results of single classifiers to be combined. These are used to derive a consensus of multiple classification results.; If the classifier is based on neural networks, a classifier with a single algorithm can generate multiple different results by preprocessing input data and varying learning parameters. Since the same learning algorithm can be trained in different ways by preprocessing of the input pattern and varying learning parameters, generated classification results are different from each other with diverse errors as in classification with multiple different types of classifiers. By combining these classification results, classification performance increases. Experimental results with the proposed methods are discussed.
机译:遥感多光谱图像的分类涉及为每个像素分配一个具有与已知土地覆被相似特征的类别。这是遥感提取有关地球表面信息的重要步骤。统计方法和计算智能算法(例如神经网络)通常用于分类。但是,没有一个单一的分类器可以适用于所有种类的多光谱图像。为了获得一致且改进的结果,应用了共识和分层方法。所提出的方法包括非线性图像滤波,使用统计方法或具有拒绝方案的分层神经网络的不同多个分类器,以及通过共识规则对多个分类器的结果进行合并的组合方案。非线性图像滤波用于减少均匀区域的变化并提高光谱可分离性。分类中的大多数错误是由于数据接近类之间的边界而发生的。为了更有效地处理这些数据,在使用神经网络的分类中应用了层次结构。通过调整连续的分类器以减少残留错误,可以提高分类性能。该结构包括用于确定是否对每个输入使用连续分类器的检测方案。开发规则以自动确定需要多少个连续分类器。为了获得给定输入模式的更可靠的分类结果,通过共识规则将相同输入模式的多个分类结果组合在一起。基于要合并的单个分类器的训练结果,在最小二乘意义上计算用于合并多个分类结果的最佳权重。这些用于得出多个分类结果的共识。如果分类器基于神经网络,则具有单个算法的分类器可以通过预处理输入数据和更改学习参数来生成多个不同的结果。由于可以通过预处理输入模式和更改学习参数以不同的方式训练相同的学习算法,因此生成的分类结果彼此不同,存在多种错误,如使用多种不同类型的分类器进行分类时一样。通过合并这些分类结果,可以提高分类性能。讨论了所提出方法的实验结果。

著录项

  • 作者

    Lee, Jaejoon.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Engineering Electronics and Electrical.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 107 p.
  • 总页数 107
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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