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Separable Dictionary Learning for Convolutional Sparse Coding via Split Updates

机译:可分离的字典学习通过拆分更新进行卷积稀疏编码

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Existing methods for constructing separable 2D dictionary filter banks approximate a set of K non-separable filters via a linear combination of R K separable filters. This approach involves the inefficiency of learning an initial set of non-separable filters, and places an upper bound on the quality of the separable filter banks. In this paper, we propose a method to directly learn a set of K separable dictionary filters from a given image training set by drawing ideas from convolutional dictionary learning (CDL) methods. We show that the separable filters obtained by our method match the performance of an equivalent number of non-separable filters. Furthermore, the computational performance of our learning method is shown to be substantially faster than a state-of-the-art non-separable CDL method for large numbers of filters or large training sets.
机译:用于构造可分离的2D字典滤波器组的现有方法通过R k可分离滤波器的线性组合近似于一组K不可分离的滤波器。该方法涉及学习初始不可可分子滤波器的效率低,并将上限放置在可分离滤波器组的质量上。在本文中,我们提出了一种方法来通过从卷积字典学习(CDL)方法的想法来直接从给定的图像训练中直接学习一组K可分离的字典过滤器。我们表明,我们的方法获得的可分离滤波器与等效数量的不可分离滤波器的性能匹配。此外,我们学习方法的计算性能被示出比用于大量滤波器或大型训练集的最先进的不可分离的CDL方法大致快。

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