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首页> 外文期刊>International journal of remote sensing >Combining spectral and spatial information into hidden Markov models for unsupervised image classification
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Combining spectral and spatial information into hidden Markov models for unsupervised image classification

机译:将光谱和空间信息组合到隐马尔可夫模型中以进行无监督图像分类

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摘要

Unsupervised classification methodology applied to remote sensing image processing can provide benefits in automatically converting the raw image data into useful information so long as higher classification accuracy is achieved. The traditional k-means clustering scheme using spectral data alone does not perform well in general as far as accuracy is concerned. This is partly due to the failure to take the spatial inter-pixels dependencies (i.e. the context) into account, resulting in a 'busy' visual appearance to the output imagery. To address this, the hidden Markov models (HMM) are introduced in this study as a fundamental framework to incorporate both the spectral and contextual information in analysis. This helps generate more patch-like output imagery and produces higher classification accuracy in an unsupervised scheme. The newly developed unsupervised classification approach is based on observation-sequence and observation-density adjustments, which have been proposed for incorporating 2D spatial information into the linear HMM. For the observation-sequence adjustment methods, there are a total of five neighbourhood systems being proposed. Two neighbourhood systems were incorporated into the observation-density methods for study. The classification accuracy is then evaluated by means of confusion matrices made by randomly chosen test samples. The classification obtained by k-means clustering and the HMM with commonly seen strip-like and Hilbert-Peano sequence fitting methods were also measured. Experimental results showed that the proposed approaches for combining both the spectral and spatial information into HMM unsupervised classification mechanism present improvements in both classification accuracy and visual qualities.
机译:只要获得更高的分类精度,应用于遥感图像处理的无监督分类方法就可以将原始图像数据自动转换为有用信息。就准确性而言,仅使用频谱数据的传统k均值聚类方案通常效果不佳。这部分是由于未能考虑空间像素间的依存关系(即上下文),导致输出图像出现了``繁忙''的视觉外观。为了解决这个问题,本研究引入了隐马尔可夫模型(HMM),作为将频谱和上下文信息都纳入分析的基本框架。这有助于生成更多类似补丁的输出图像,并在无监督的方案中产生更高的分类精度。新开发的无监督分类方法基于观测序列和观测密度调整,已提出将二维空间信息合并到线性HMM中的建议。对于观测序列调整方法,总共提出了五个邻域系统。将两个邻域系统合并到观测密度方法中进行研究。然后通过由随机选择的测试样品制成的混淆矩阵来评估分类准确性。还测量了通过k均值聚类和HMM以及常见的条状和Hilbert-Peano序列拟合方法获得的分类。实验结果表明,所提出的将光谱和空间信息组合到HMM无监督分类机制中的方法在分类准确度和视觉质量方面均得到了改善。

著录项

  • 来源
    《International journal of remote sensing》 |2005年第10期|p.2113-2133|共21页
  • 作者

    B. TSO; R. C. OLSEN;

  • 作者单位

    Department of Resource Management, National Defense Management College, NDU, 150, Ming-An Rd, Jon-Ho, Taipei, 235, Taiwan;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 遥感技术;
  • 关键词

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