The analog formulation of sparsity implies infinite divisibility and rules out Bernoulli-Gaussian priors

A. Amini, U. Kamilov, M. Unser
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引用次数: 8

Abstract

Motivated by the analog nature of real-world signals, we investigate continuous-time random processes. For this purpose, we consider the stochastic processes that can be whitened by linear transformations and we show that the distribution of their samples is necessarily infinitely divisible. As a consequence, such a modeling rules out the Bernoulli-Gaussian distribution since we are able to show in this paper that it is not infinitely divisible. In other words, while the Bernoulli-Gaussian distribution is among the most studied priors for modeling sparse signals, it cannot be associated with any continuous-time stochastic process. Instead, we propose to adapt the priors that correspond to the increments of compound Poisson processes, which are both sparse and infinitely divisible.
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稀疏性的模拟公式意味着无限可除性,并排除伯努利-高斯先验
由于真实世界信号的模拟性质,我们研究了连续时间随机过程。为此,我们考虑了可以用线性变换白化的随机过程,并证明了它们的样本分布必然是无限可分的。因此,这样的建模排除了伯努利-高斯分布,因为我们能够在本文中证明它不是无限可分的。换句话说,虽然伯努利-高斯分布是对稀疏信号建模研究最多的先验之一,但它不能与任何连续时间随机过程相关联。相反,我们建议调整与复合泊松过程的增量相对应的先验,这些过程既稀疏又无限可分。
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