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Dictionary Learning for Promoting Structured Sparsity in Hyperspectral Compressive Sensing

机译:词典学习在高光谱压缩感知中促进结构稀疏性

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摘要

The ability to accurately represent a hyperspectral image (HSI) as a combination of a small number of elements from an appropriate dictionary underpins much of the recent progress in hyperspectral compressive sensing (HCS). Preserving structure in the sparse representation is critical to achieving an accurate reconstruction but has thus far only been partially exploited because existing methods assume a predefined dictionary. To address this problem, a structured sparsity-based hyperspectral blind compressive sensing method is presented in this study. For the reconstructed HSI, a data-adaptive dictionary is learned directly from its noisy measurements, which promotes the underlying structured sparsity and obviously improves reconstruction accuracy. Specifically, a fully structured dictionary prior is first proposed to jointly depict the structure in each dictionary atom as well as the correlation between atoms, where the magnitude of each atom is also regularized. Then, a reweighted Laplace prior is employed to model the structured sparsity in the representation of the HSI. Based on these two priors, a unified optimization framework is proposed to learn both the dictionary and sparse representation from the measurements by alternatively optimizing two separate latent variable Bayes models. With the learned dictionary, the structured sparsity of HSIs can be well described by the reweighted Laplace prior. In addition, both the learned dictionary and sparse representation are robust to noise corruption in the measurements. Extensive experiments on three hyperspectral data sets demonstrate that the proposed method outperforms several state-of-the-art HCS methods in terms of the reconstruction accuracy achieved.
机译:准确地将高光谱图像(HSI)表示为适当字典中少量元素的组合的能力,为高光谱压缩感测(HCS)的最新进展提供了基础。稀疏表示中的保留结构对于实现准确的重建至关重要,但由于现有方法采用了预定义的字典,因此到目前为止仅被部分利用。为了解决这个问题,本研究提出了一种基于稀疏的结构化高光谱盲压缩感知方法。对于重构的HSI,可直接从其嘈杂的测量值中学习数据自适应字典,这将促进潜在的结构化稀疏性并明显提高重构精度。具体来说,首先提出一种全结构的字典先验,以共同描述每个字典原子的结构以及原子之间的相关性,其中每个原子的大小也都经过规则化。然后,采用重加权的拉普拉斯先验模型对HSI表示中的结构化稀疏性进行建模。基于这两个先验,提出了一个统一的优化框架,通过交替优化两个单独的潜在变量贝叶斯模型,从测量中学习字典和稀疏表示。使用学习的字典,可以通过重新加权的拉普拉斯先验很好地描述HSI的结构化稀疏性。另外,学习词典和稀疏表示都对测量中的噪声破坏具有鲁棒性。在三个高光谱数据集上进行的大量实验表明,在实现的重建精度方面,该方法优于几种最新的HCS方法。

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  • 来源
    《IEEE Transactions on Geoscience and Remote Sensing》 |2016年第12期|7223-7235|共13页
  • 作者单位

    Shaanxi Provincial Key Laboratory of Speech and Image Information Processing, School of Computer Science and Engineering, Northwestern Polytechnical University, Xi'an, China;

    Shaanxi Provincial Key Laboratory of Speech and Image Information Processing, School of Computer Science and Engineering, Northwestern Polytechnical University, Xi'an, China;

    Shaanxi Provincial Key Laboratory of Speech and Image Information Processing, School of Computer Science and Engineering, Northwestern Polytechnical University, Xi'an, China;

    School of Computer Science, The University of Adelaide, Australian Centre for Robotic Vision, Adelaide, Brisbane, S.A., Qld., AustraliaAustralia;

    School of Computer Science, The University of Adelaide, Australian Centre for Robotic Vision, Adelaide, Brisbane, S.A., Qld., AustraliaAustralia;

    School of Computer Science, The University of Adelaide, Adelaide, S.A., Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Dictionaries; Image reconstruction; Atomic measurements; Hyperspectral imaging; Compressed sensing; Noise measurement;

    机译:词典;图像重建;原子测量;高光谱成像;压缩传感;噪声测量;

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