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Sparse decomposition over multi-component redundant dictionaries

机译:多分量冗余字典的稀疏分解

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In many applications - such as compression, de-noising and source separation - a good and efficient signal representation is characterized by sparsity. This means that many coefficients are close to zero, while only few ones have a non-negligible amplitude. On the other hand, real-world signals such as audio or natural images - clearly present peculiar structures. In this paper we introduce a global optimization framework that aims at respecting the sparsity criterion while decomposing a signal over an overcomplete, multi-component dictionary. We adopt a probabilistic analysis which can lead to consider the signal internal structure. As an example that fits this framework, we propose the weighted basis pursuit algorithm, based on the solution of a convex, non-quadratic problem. Results show that this method can provide sparse signal representations and sparse m-terms approximations. Moreover, weighted basis pursuit provides a faster convergence compared to basis pursuit.
机译:在许多应用中,例如压缩,降噪和信号源分离,良好而有效的信号表示具有稀疏性。这意味着许多系数接近于零,而只有少数系数具有不可忽略的幅度。另一方面,现实世界中的信号(例如音频或自然图像)显然呈现出奇特的结构。在本文中,我们介绍了一个全局优化框架,该框架旨在在稀疏,多成分字典上分解信号时遵守稀疏性准则。我们采用概率分析,可以导致考虑信号内部结构。作为适合此框架的示例,我们基于凸的非二次问题的解决方案,提出了加权基追踪算法。结果表明,该方法可以提供稀疏的信号表示和稀疏的m项近似。此外,与基本追求相比,加权基本追求提供了更快的收敛速度。

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