Reweighted laplace prior based hyperspectral compressive sensing for unknown sparsity

Lei Zhang, Wei Wei, Yanning Zhang, Chunna Tian, Fei Li
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引用次数: 38

Abstract

Compressive sensing(CS) has been exploited for hype-spectral image(HSI) compression in recent years. Though it can greatly reduce the costs of computation and storage, the reconstruction of HSI from a few linear measurements is challenging. The underlying sparsity of HSI is crucial to improve the reconstruction accuracy. However, the sparsity of HSI is unknown in reality and varied with different noise, which makes the sparsity estimation difficult. To address this problem, a novel reweighted Laplace prior based hyperspectral compressive sensing method is proposed in this study. First, the reweighted Laplace prior is proposed to model the distribution of sparsity in HSI. Second, the latent variable Bayes model is employed to learn the optimal configuration of the reweighted Laplace prior from the measurements. The model unifies signal recovery, prior learning and noise estimation into a variational framework to infer the parameters automatically. The learned sparsity prior can represent the underlying structure of the sparse signal very well and is adaptive to the unknown noise, which improves the reconstruction accuracy of HSI. The experimental results on three hyperspectral datasets demonstrate the proposed method outperforms several state-of-the-art hyperspectral CS methods on the reconstruction accuracy.
未知稀疏度的重加权拉普拉斯先验高光谱压缩感知
近年来,压缩感知技术被广泛应用于高光谱图像的压缩。虽然它可以大大降低计算和存储成本,但从一些线性测量中重建HSI是具有挑战性的。HSI的稀疏性对提高重建精度至关重要。然而,现实中HSI的稀疏度是未知的,并且随着噪声的不同而变化,这给稀疏度估计带来了困难。为了解决这一问题,本文提出了一种新的基于重加权拉普拉斯先验的高光谱压缩感知方法。首先,提出了重加权拉普拉斯先验来模拟恒指的稀疏度分布。其次,利用隐变量贝叶斯模型从测量数据中学习重加权拉普拉斯先验的最优配置。该模型将信号恢复、先验学习和噪声估计统一到一个变分框架中,自动推断参数。学习得到的稀疏先验能很好地表征稀疏信号的底层结构,对未知噪声具有较强的自适应能力,提高了HSI的重建精度。在三个高光谱数据集上的实验结果表明,该方法在重建精度上优于几种最先进的高光谱CS方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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