Fast Convolutional Sparse Coding

H. Bristow, Anders P. Eriksson, S. Lucey
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引用次数: 331

Abstract

Sparse coding has become an increasingly popular method in learning and vision for a variety of classification, reconstruction and coding tasks. The canonical approach intrinsically assumes independence between observations during learning. For many natural signals however, sparse coding is applied to sub-elements ( i.e. patches) of the signal, where such an assumption is invalid. Convolutional sparse coding explicitly models local interactions through the convolution operator, however the resulting optimization problem is considerably more complex than traditional sparse coding. In this paper, we draw upon ideas from signal processing and Augmented Lagrange Methods (ALMs) to produce a fast algorithm with globally optimal sub problems and super-linear convergence.
快速卷积稀疏编码
稀疏编码已经成为一种越来越受欢迎的学习和视觉方法,用于各种分类、重构和编码任务。规范方法本质上假定学习过程中观察之间的独立性。然而,对于许多自然信号,稀疏编码应用于信号的子元素(即补丁),其中这种假设是无效的。卷积稀疏编码通过卷积算子显式地对局部相互作用进行建模,但由此产生的优化问题比传统稀疏编码要复杂得多。本文借鉴信号处理和增广拉格朗日方法的思想,提出了一种具有全局最优子问题和超线性收敛的快速算法。
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