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Analysis of fast structured dictionary learning

机译:快速结构化词典学习的分析

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Sparsity-based models and techniques have been exploited in many signal processing and imaging applications. Data-driven methods based on dictionary and sparsifying transform learning enable learning rich image features from data and can outperform analytical models. In particular, alternating optimization algorithms have been popular for learning such models. In this work, we focus on alternating minimization for a specific structured unitary sparsifying operator learning problem and provide a convergence analysis. While the algorithm converges to the critical points of the problem generally, our analysis establishes under mild assumptions, the local linear convergence of the algorithm to the underlying sparsifying model of the data. Analysis and numerical simulations show that our assumptions hold for standard probabilistic data models. In practice, the algorithm is robust to initialization.
机译:基于稀疏性的模型和技术已在许多信号处理和成像应用中被利用。 基于字典和稀疏转换学习的数据驱动方法可从数据中学习丰富的图像特征,并且可以超越分析模型。 特别是,交替的优化算法在学习此类模型方面很受欢迎。 在这项工作中,我们专注于为特定的结构化统一稀疏操作员学习问题交替最小化并提供收敛分析。 尽管算法通常会收敛到问题的关键点,但我们的分析在温和的假设下建立,而算法与数据的基础稀疏模型的局部线性收敛。 分析和数值模拟表明,我们的假设适用于标准概率数据模型。 实际上,该算法对初始化是可靠的。

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