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Statistics of transform coding and assessment of reconstructed image quality.

机译:变换编码的统计信息和重建图像质量的评估。

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摘要

Transform coding is an important data compression technology that is the basis for many industry image compression standards. This dissertation studies the statistics of transform coding and applies the statistics to model observers for assessing the quality of reconstructed medical images for diagnostic detection tasks. The research results provide a theoretical foundation for optimizing compression algorithms and assessing the reconstructed image/video quality.; The block-based image transform, in this study, is defined as a one-dimensional linear transform which mathematically reveals the intrinsic relationships among image blocks. It is shown that compression noise is a linear transform of quantization noise, which is usually generated during quantization of transform coefficients using multidimensional uniform scalar quantizers. The statistics of quantization and the statistics of transform coding are derived in this study. It shows that compression noise of transform coding has a Gaussian distribution. The statistics of transform coding are verified by using the JPEG compression algorithm and lumpy background images, which are widely used to simulate mammogram images. The theoretical results agree closely with the statistics of the actual compression data.; Model observers are algorithms to predict the performance of human observers for diagnostic detection tasks; some of them, especially the channelized Hotelling observers, have been used successfully in medical applications. By using the compression noise statistics in two-alternative force choice (2AFC) tests, several model observers applied to decompressed images are derived in analytical form; they are further approximated by using the statistics of decompressed background images without any knowledge of the detection objects. The derived model observer performance and its approximations are verified using various decompressed JPEG background images with circular or Gaussian signals. They closely agree with the actual calculated performance. The derived performance can be used to optimize quantization scheme, which in turn will help to compress medical images efficiently based on the nature of the specific diagnostic tasks.; In addition to the model observers, the statistics derived from this study can be used to optimize image/video compression algorithms, such as quantization algorithm optimization, artifact removal, compression noise reduction, etc. It also provides a theoretical foundation for reconstructed image/video quality assessments.
机译:变换编码是一种重要的数据压缩技术,它是许多行业图像压缩标准的基础。本文研究了变换编码的统计数据,并将其应用于模型观察者,以评估用于诊断检测任务的重建医学图像的质量。研究结果为优化压缩算法和评估重建的图像/视频质量提供了理论基础。在这项研究中,基于块的图像变换被定义为一维线性变换,它在数学上揭示了图像块之间的内在联系。结果表明,压缩噪声是量化噪声的线性变换,通常是在使用多维均匀标量量化器对变换系数进行量化的过程中生成的。这项研究得出了量化统计和变换编码统计。它表明变换编码的压缩噪声具有高斯分布。使用JPEG压缩算法和块状背景图像验证了变换编码的统计信息,该图像被广泛用于模拟乳房X射线照片。理论结果与实际压缩数据的统计非常吻合。模型观察者是预测人类观察者执行诊断检测任务的性能的算法;其中一些,特别是通道化的Hotelling观测器,已成功用于医疗应用。通过在二重力选择(2AFC)测试中使用压缩噪声统计信息,以解析形式导出了应用于解压缩图像的几个模型观察者;在不了解检测对象的情况下,通过使用解压缩后的背景图像的统计信息对它们进行进一步近似。使用带有圆形或高斯信号的各种解压缩的JPEG背景图像,可以验证派生的模型观察器性能及其近似值。它们与实际计算的性能非常吻合。导出的性能可用于优化量化方案,这将有助于根据特定诊断任务的性质有效地压缩医学图像。除模型观察者外,本研究得出的统计数据还可用于优化图像/视频压缩算法,例如量化算法优化,伪像去除,压缩噪声降低等。它也为重构图像/视频提供了理论基础。质量评估。

著录项

  • 作者

    Li, Dunling.;

  • 作者单位

    The George Washington University.;

  • 授予单位 The George Washington University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 D.Sc.
  • 年度 2007
  • 页码 315 p.
  • 总页数 315
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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