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Luminance-Chrominance linear prediction models for color textures: An application to satellite image segmentation

机译:用于颜色纹理的亮度 - 色度线性预测模型:卫星图像分割的应用

摘要

This thesis details the conception, development and analysis of a novel color texture descriptor based on the luminance-chrominance complex linear prediction models for perceptual color spaces. In this approach, two dimensional complex multichannel versions of both causal and non-causal models are developed and used to perform the simultaneous parametric power spectrum estimation of the luminance and the "combined chrominance" channels of the proposed two channel complex color image. The accuracy and precision of these spectral estimates along with the spectral distance measures ensure the robustness and pertinence of the approach for color texture classification. A luminance-chrominance spectral interference based quantitative measure for the color space comparison is also introduced. The experimental results for different test data sets, in IHLS and L*a*b* color spaces are presented and discussed. These results have shown that the chrominance structure information of the color textured images could get better characterized in L*a*b* color space and hence could provide the better color texture classification results. A Bayesian framework based on the multichannel linear prediction error is also developed for the segmentation of textured color images. The main contribution of this segmentation methodology resides in the robust parametric approximations proposed for the multichannel linear prediction error distribution. These comprised of a unimodal approximation based on the Wishart distribution and a multimodal approximation based on the multivariate Gaussian mixture models. Another novelty of this approach is the fusion of a region size energy term with the conventional Potts model energy to develop a Gibbs random field model of the class label field. This improved label field model is used for the spatial regularization of the initial class label estimates computed through the proposed parametric priors. Experimental results for the segmentation of synthetic color textures as well as high resolution QuickBird and IKONOS satellite images validate the application of this approach for highly textured images. Advantages of using these priors instead of classical Gaussian approximation and improved label field model are evident from these results. They also verify that the L*a*b* color space exhibits better performance among the used color spaces, indicating its significance for the characterization of complex textures through this approach.
机译:本文基于感知色空间的亮度-色度复线性预测模型,详细介绍了一种新颖的颜色纹理描述子的概念,开发和分析。在这种方法中,因果模型和非因果模型的二维复杂多通道版本都被开发出来,并用于执行所建议的两通道复杂彩色图像的亮度和“组合色度”通道的同时参数功率谱估计。这些光谱估计的准确性和精确度以及光谱距离度量确保了颜色纹理分类方法的鲁棒性和针对性。还介绍了一种用于色空间比较的基于亮度-色度光谱干涉的定量方法。介绍并讨论了在IHLS和L * a * b *颜色空间中不同测试数据集的实验结果。这些结果表明,彩色纹理图像的色度结构信息可以在L * a * b *颜色空间中得到更好的表征,因此可以提供更好的颜色纹理分类结果。基于多通道线性预测误差的贝叶斯框架也被开发用于纹理彩色图像的分割。这种分割方法的主要贡献在于为多通道线性预测误差分布提出的鲁棒参数逼近。这些包括基于Wishart分布的单峰近似和基于多元高斯混合模型的多峰近似。这种方法的另一个新颖之处是将区域大小的能量项与常规的Potts模型能量进行融合,以开发类标签场的Gibbs随机场模型。此改进的标签字段模型用于通过拟议的参数先验计算的初始类别标签估计值的空间正则化。合成色彩纹理以及高分辨率QuickBird和IKONOS卫星图像分割的实验结果验证了该方法在高纹理图像中的应用。从这些结果中可以明显看出,使用这些先验代替经典的高斯近似和改进的标记场模型的优势。他们还验证了L * a * b *颜色空间在所使用的颜色空间中表现出更好的性能,从而表明该方法对于表征复杂纹理的重要性。

著录项

  • 作者

    Qazi Imtnan-Ul-Haque;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类
  • 入库时间 2022-08-20 21:11:07

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