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Multi-classifiers and decision fusion for robust statistical pattern recognition with applications to hyperspectral classification.

机译:多分类器和决策融合,可用于高光谱分类的稳健统计模式识别。

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摘要

In this dissertation, a multi-classifier, decision fusion framework is proposed for robust classification of high dimensional data in small-sample-size conditions. Such datasets present two key challenges. (1) The high dimensional feature spaces compromise the classifiers' generalization ability in that the classifier tends to over-fit decision boundaries to the training data. This phenomenon is commonly known as the Hughes phenomenon in the pattern classification community. (2) The small-sample-size of the training data results in ill-conditioned estimates of its statistics. Most classifiers rely on accurate estimation of these statistics for modeling training data and labeling test data, and hence ill-conditioned statistical estimates result in poorer classification performance.This dissertation tests the efficacy of the proposed algorithms to classify primarily remotely sensed hyperspectral data and secondarily diagnostic digital mammograms, since these applications naturally result in very high dimensional feature spaces and often do not have sufficiently large training datasets to support the dimensionality of the feature space. Conventional approaches, such as Stepwise LDA (S-LDA) are sub-optimal, in that they utilize a small subset of the rich spectral information provided by hyperspectral data for classification. In contrast, the approach proposed in this dissertation utilizes the entire high dimensional feature space for classification by identifying a suitable partition of this space, employing a bank-of-classifiers to perform "local" classification over this partition, and then merging these local decisions using an appropriate decision fusion mechanism. Adaptive classifier weight assignment and nonlinear pre-processing (in kernel induced spaces) are also proposed within this framework to improve its robustness over a wide range of fidelity conditions. Experimental results demonstrate that the proposed framework results in significant improvements in classification accuracies (as high as a 12% increase) over conventional approaches.
机译:本文针对小样本量条件下的高维数据的鲁棒分类,提出了一种多分类器决策融合框架。这样的数据集提出了两个关键挑战。 (1)高维特征空间损害了分类器的泛化能力,因为分类器倾向于将决策边界过度拟合到训练数据。这种现象在模式分类社区中通常被称为休斯现象。 (2)训练数据的小样本量导致其统计数据的病态估计。大多数分类器依靠对这些统计信息的准确估计来对训练数据和标签测试数据进行建模,因此病态的统计估计结果会​​导致较差的分类性能。数字乳房X线照片,因为这些应用程序自然会产生非常高的维度特征空间,并且通常没有足够大的训练数据集来支持特征空间的维度。常规方法(例如逐步LDA(S-LDA))次优,因为它们利用由高光谱数据提供的丰富光谱信息的一小部分进行分类。相比之下,本文提出的方法通过识别该空间的合适分区,利用分类库在该分区上执行“局部”分类,然后合并这些局部决策,来利用整个高维特征空间进行分类使用适当的决策融合机制。在该框架内还提出了自适应分类器权重分配和非线性预处理(在内核诱导空间中),以提高其在宽范围保真度条件下的鲁棒性。实验结果表明,与传统方法相比,所提出的框架可显着提高分类准确性(最多可提高12%)。

著录项

  • 作者

    Prasad, Saurabh.;

  • 作者单位

    Mississippi State University.;

  • 授予单位 Mississippi State University.;
  • 学科 Engineering, Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 145 p.
  • 总页数 145
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:38:58

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