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Ultraspectral Data Compression.

机译:超光谱数据压缩。

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摘要

Ultraspectral images capture 2D data tuned at different wavelengths across the mid infrared electromagnetic spectrum. Atmospheric Infrared Sounder (AIRS) remote sensors are ultraspectral sensors that generate images with thousands of highly correlated bands and are considered the future of spectroscopy. The major application of AIRS is the acquisition of atmospheric parameters such as gases, temperature and other quantities to perform climate and weather forecast. Because typical AIRS images are well over 40 MB in size and because they are captured in remote locations data compression (before transmission) becomes a very critical issue. Existent compression studies of AIRS data adapt generic multispectral image compression techniques (not necessarily ultraspectral) but do not take into account the particular nature of ultraspectral images. Most of them do not consider correlation beyond one band, use fixed linear prediction (leading to significant distortion) and are not optimized to overcome time and space complexity constraints. Moreover compression studies do not provide analytical models of rate-distortion either.;This proposal will focus on presenting a whole new architecture for the compression of ultraspectral data presenting sound mathematical models that can be used to describe a set of algorithms and their practical implementation. Specifically we will (1) present a new preprocessing reversible stage that will rearrange the data to make it more efficient when the compression stage is performed; (2) present a new linear prediction based compression stage that will improve the compression rate of any given distortion when compared to literature ultraspectral data compression techniques. This involves defining a distortion measure and its effect on real applications; (3) define a mathematical model to approximate the rate-distortion of the compression stage and compare it against the real performance of the proposed algorithm; (4) evaluate the performance of the overall architecture and algorithms as well as discuss possible optimizations.;To summarize it can be said that the results of this thesis will contribute to the understanding of ultraspectral compression as well as the introduction of a novel multi-platform efficient open-source ultraspectral codec.
机译:超光谱图像捕获在整个中红外电磁光谱中以不同波长调谐的2D数据。大气红外测深仪(AIRS)远程传感器是超光谱传感器,可生成具有数千个高度相关波段的图像,并被认为是光谱学的未来。 AIRS的主要应用是获取大气参数,例如气体,温度和其他数量,以进行气候和天气预报。由于典型的AIRS图像的大小远远超过40 MB,并且由于它们是在远程位置捕获的,因此数据压缩(传输之前)成为非常关键的问题。 AIRS数据的现有压缩研究采用了通用的多光谱图像压缩技术(不一定是超光谱),但没有考虑到超光谱图像的特殊性质。它们中的大多数不考虑超出一个频带的相关性,而是使用固定的线性预测(导致明显的失真),并且没有针对克服时间和空间复杂性约束进行优化。此外,压缩研究也不提供速率失真的分析模型。该提案将集中于提出一种用于压缩超光谱数据的全新体系结构,并提出可用于描述一组算法及其实际实现的合理数学模型。具体来说,我们将(1)提出一个新的可逆预处理阶段,该阶段将对数据进行重新排列,以在执行压缩阶段时使其效率更高; (2)提出了一种新的基于线性预测的压缩阶段,与文献超光谱数据压缩技术相比,该压缩阶段将提高任何给定失真的压缩率。这涉及定义失真度量及其对实际应用的影响; (3)定义一个数学模型来近似压缩阶段的速率失真,并将其与所提出算法的实际性能进行比较; (4)评估整体架构和算法的性能,并讨论可能的优化方法。总而言之,可以说本论文的结果将有助于对超光谱压缩的理解以及新型多光谱压缩技术的引入。平台高效的开源超光谱编解码器。

著录项

  • 作者

    Herrero, Rolando.;

  • 作者单位

    Northeastern University.;

  • 授予单位 Northeastern University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 243 p.
  • 总页数 243
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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