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Compressive Sensing for 3D Data Processing Tasks: Applications, Models and Algorithms.

机译:3D数据处理任务的压缩传感:应用程序,模型和算法。

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摘要

Compressive sensing (CS) is a novel sampling methodology representing a paradigm shift from conventional data acquisition schemes. The theory of compressive sensing ensures that under suitable conditions compressible signals or images can be reconstructed from far fewer samples or measurements than what are required by the Nyquist rate. So far in the literature, most works on CS concentrate on one-dimensional or two-dimensional data. However, besides involving far more data, three-dimensional (3D) data processing does have particularities that require the development of new techniques in order to make successful transitions from theoretical feasibilities to practical capacities. This thesis studies several issues arising from the applications of the CS methodology to some 3D image processing tasks. Two specific applications are hyperspectral imaging and video compression where 3D images are either directly unmixed or recovered as a whole from CS samples. The main issues include CS decoding models, preprocessing techniques and reconstruction algorithms, as well as CS encoding matrices in the case of video compression.;Our investigation involves three major parts. (1) Total variation (TV) regularization plays a central role in the decoding models studied in this thesis. To solve such models, we propose an efficient scheme to implement the classic augmented Lagrangian multiplier method and study its convergence properties. The resulting Matlab package TVAL3 is used to solve several models. Computational results show that, thanks to its low per-iteration complexity, the proposed algorithm is capable of handling realistic 3D image processing tasks. (2) Hyperspectral image processing typically demands heavy computational resources due to an enormous amount of data involved. We investigate low-complexity procedures to unmix, sometimes blindly, CS compressed hyperspectral data to directly obtain material signatures and their abundance fractions, bypassing the high-complexity task of reconstructing the image cube itself. (3) To overcome the "cliff effect" suffered by current video coding schemes, we explore a compressive video sampling framework to improve scalability with respect to channel capacities. We propose and study a novel multi-resolution CS encoding matrix, and a decoding model with a TV-DCT regularization function.;Extensive numerical results are presented, obtained from experiments that use not only synthetic data, but also real data measured by hardware. The results establish feasibility and robustness, to various extent, of the proposed 3D data processing schemes, models and algorithms. There still remain many challenges to be further resolved in each area, but hopefully the progress made in this thesis will represent a useful first step towards meeting these challenges in the future.
机译:压缩感测(CS)是一种新颖的采样方法,代表了传统数据采集方案的典范转变。压缩感测理论确保了在合适的条件下,可以从比奈奎斯特速率所需的样本或测量结果少得多的样本或测量结果中重建可压缩信号或图像。迄今为止,在文献中,大多数有关CS的工作都集中在一维或二维数据上。但是,除了涉及更多的数据之外,三维(3D)数据处理的确具有特殊性,需要开发新技术才能成功地从理论可行性过渡到实际能力。本文研究了CS方法在某些3D图像处理任务中的应用所引起的几个问题。两个特定的应用是高光谱成像和视频压缩,其中3D图像可以直接取消混合或从CS样本中整体恢复。主要问题包括CS解码模型,预处理技术和重构算法,以及视频压缩情况下的CS编码矩阵。我们的研究涉及三个主要部分。 (1)总变异(TV)正则化在本文研究的解码模型中起着核心作用。为了解决这些模型,我们提出了一种有效的方案来实现经典的增强拉格朗日乘子方法并研究其收敛性。生成的Matlab程序包TVAL3用于求解多个模型。计算结果表明,由于其低的重复复杂度,该算法能够处理逼真的3D图像处理任务。 (2)由于涉及大量数据,高光谱图像处理通常需要大量的计算资源。我们研究了低复杂度的过程,以解开CS压缩的高光谱数据(有时是盲目混合),以直接获取材料特征及其丰度分数,从而绕过了重建图像立方体本身的高复杂度任务。 (3)为了克服当前视频编码方案所遭受的“悬崖效应”,我们探索了一种压缩视频采样框架来提高有关信道容量的可伸缩性。我们提出并研究了一种新颖的多分辨率CS编码矩阵以及具有TV-DCT正则化功能的解码模型。通过实验,不仅使用合成数据,而且还使用硬件测量的真实数据,给出了广泛的数值结果。结果在不同程度上确定了拟议的3D数据处理方案,模型和算法的可行性和鲁棒性。每个领域仍然有许多挑战有待进一步解决,但是希望本文所取得的进展将代表将来朝着应对这些挑战迈出的有益的第一步。

著录项

  • 作者

    Li, Chengbo.;

  • 作者单位

    Rice University.;

  • 授予单位 Rice University.;
  • 学科 Applied Mathematics.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 156 p.
  • 总页数 156
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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