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Model-based iterative reconstruction for micro-scale and nano-scale imaging.

机译:用于微尺度和纳米尺度成像的基于模型的迭代重建。

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摘要

Transmission electron microscopes (TEM) and synchrotron X-ray (SX) sources are widely being used to characterize materials at the nano-scale and micron-scale in two/three dimensions. While there has been significant progress in enhancing the hardware in these instruments to improve image quality, the algorithms used for image reconstruction have not fully exploited the statistical information in the data and the properties of the material being imaged to enhance the quality of the images. Model-based iterative reconstruction (MBIR) is an emerging theme for image reconstruction that combines a probabilistic model for the measurement system (forward model) with a probabilistic model for the image (prior model) to formulate the reconstruction as a high-dimensional estimation problem. In this dissertation, we propose MBIR algorithms for different imaging modalities used in a TEM and in SX imaging.;First, we propose an MBIR algorithm for high angle annular dark field - scanning TEM (HAADF-STEM) tomography. Next, we present an MBIR algorithm for handling anomalous measurements encountered in bright field - electron tomography (BF-ET) of crystalline samples. Results on simulated as well as real data show significant improvements over the typical reconstruction approaches used for HAADFSTEM tomography and BF-ET. Furthermore, the proposed MBIR for BF-ET is also useful for SX tomography as it can handle anomalous measurements from saturated detector pixels.;Finally, we propose a flexible optimization framework, termed Plug-and-Play priors, that allows state-of-the-art forward models of imaging systems to be matched with state-of-the-art denoising algorithms for MBIR. We will demonstrate how the Plug-and-Play priors can be used to mix and match a wide variety of denoising algorithms based on advanced image models with forward models encountered in TEM tomography, SX tomography and in sparse image reconstruction from STEM data, thus greatly expanding the range of possible problem solutions.
机译:透射电子显微镜(TEM)和同步加速器X射线(SX)源被广泛用于在二维和三维中表征纳米级和微米级的材料。尽管在增强这些仪器的硬件以改善图像质量方面取得了显着进步,但用于图像重建的算法尚未充分利用数据中的统计信息和被成像材料的特性来增强图像质量。基于模型的迭代重建(MBIR)是图像重建的新兴主题,它将测量系统的概率模型(正向模型)与图像的概率模型(先前模型)结合在一起,将重建公式化为高维估计问题。本文针对TEM和SX成像中不同的成像方式提出了MBIR算法。首先,针对高角度环形暗场-扫描TEM(HAADF-STEM)层析成像提出了MBIR算法。接下来,我们提出一种MBIR算法,用于处理晶体样品的明场-电子断层扫描(BF-ET)中遇到的异常测量。模拟和真实数据的结果表明,与用于HAADFSTEM断层扫描和BF-ET的典型重建方法相比,已有显着改进。此外,针对BF-ET提出的MBIR还可用于SX层析成像,因为它可以处理来自饱和检测器像素的异常测量。最后,我们提出了一个灵活的优化框架,称为即插即用先验,可以实现成像系统的最先进模型与MBIR的最新去噪算法相匹配。我们将演示如何使用即插即用先验算法将基于高级图像模型的各种降噪算法与TEM层析成像,SX层析成像以及从STEM数据进行稀疏图像重构时遇到的正向模型进行混合和匹配。扩大可能的问题解决方案的范围。

著录项

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 125 p.
  • 总页数 125
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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