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An Analysis Dictionary Learning Algorithm under a Noisy Data Model with Orthogonality Constraint

机译:具有正交约束的噪声数据模型下的分析词典学习算法

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摘要

Two common problems are often encountered in analysis dictionary learning (ADL) algorithms. The first one is that the original clean signals for learning the dictionary are assumed to be known, which otherwise need to be estimated from noisy measurements. This, however, renders a computationally slow optimization process and potentially unreliable estimation (if the noise level is high), as represented by the Analysis K-SVD (AK-SVD) algorithm. The other problem is the trivial solution to the dictionary, for example, the null dictionary matrix that may be given by a dictionary learning algorithm, as discussed in the learning overcomplete sparsifying transform (LOST) algorithm. Here we propose a novel optimization model and an iterative algorithm to learn the analysis dictionary, where we directly employ the observed data to compute the approximate analysis sparse representation of the original signals (leading to a fast optimization procedure) and enforce an orthogonality constraint on the optimization criterion to avoid the trivial solutions. Experiments demonstrate the competitive performance of the proposed algorithm as compared with three baselines, namely, the AK-SVD, LOST, and NAAOLA algorithms.
机译:分析字典学习(ADL)算法中经常遇到两个常见问题。第一个是假定用于学习字典的原始干净信号是已知的,否则需要从噪声测量中进行估计。但是,这将导致计算缓慢的优化过程以及潜在的不可靠估计(如果噪声水平较高),如分析K-SVD(AK-SVD)算法所代表。另一个问题是字典的简单解决方案,例如,字典学习算法可以给出的空字典矩阵,如学习过度完全稀疏变换(LOST)算法中所述。在这里,我们提出了一种新颖的优化模型和一种迭代算法来学习分析字典,在该模型中,我们直接使用观察到的数据来计算原始信号的近似分析稀疏表示(导致快速优化过程),并对正交信号施加正交约束。避免琐碎解决方案的优化标准。实验表明,与AK-SVD,LOST和NAAOLA算法这三个基准相比,该算法具有竞争优势。

著录项

  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(2014),-1
  • 年度 -1
  • 页码 852978
  • 总页数 8
  • 原文格式 PDF
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