首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing >A hierarchical sparsity-smoothness Bayesian model for amp;#x2113;inf0/inf amp;#x002B; amp;#x2113;inf1/inf amp;#x002B; amp;#x2113;inf2/inf regularization
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A hierarchical sparsity-smoothness Bayesian model for amp;#x2113;inf0/inf amp;#x002B; amp;#x2113;inf1/inf amp;#x002B; amp;#x2113;inf2/inf regularization

机译:&#x2113的分层稀疏 - 平滑度贝叶斯模型; 0 + ℓ 1 + ℓ 2 正规化

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Sparse signal/image recovery is a challenging topic that has captured a great interest during the last decades. To address the ill-posedness of the related inverse problem, regularization is often essential by using appropriate priors that promote the sparsity of the target signal/image. In this context, ℓ0 + ℓ1 regularization has been widely investigated. In this paper, we introduce a new prior accounting simultaneously for both sparsity and smoothness of restored signals. We use a Bernoulli-generalized Gauss-Laplace distribution to perform ℓ0 + ℓ1 + ℓ2 regularization in a Bayesian framework. Our results show the potential of the proposed approach especially in restoring the non-zero coefficients of the signal/image of interest.
机译:稀疏信号/图像恢复是一个具有挑战性的话题,在过去几十年中捕获了很大的兴趣。为了解决相关逆问题的不良态度,通过使用促进目标信号/图像的稀疏性的适当的前沿,正规化通常是必不可少的。在这种情况下,ℓ0+ℓ1正规化已被广泛调查。在本文中,我们同时介绍了一个新的事先核算,用于休稀烂和恢复信号的平滑度。我们使用BERNOULLI-GROONDALED GAUSS-LAPLACE分布在贝叶斯框架中执行ℓ0+ℓ1+ℓ2正则化。我们的结果表明了所提出的方法的潜力,特别是在恢复感兴趣的信号/图像的非零系数方面。

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