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首页> 外文期刊>IEEE Transactions on Signal Processing >Working Locally Thinking Globally: Theoretical Guarantees for Convolutional Sparse Coding
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Working Locally Thinking Globally: Theoretical Guarantees for Convolutional Sparse Coding

机译:在全球范围内进行本地思考:卷积稀疏编码的理论保证

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摘要

The celebrated sparse representation model has led to remarkable results in various signal processing tasks in the last decade. However, despite its initial purpose of serving as a global prior for entire signals, it has been commonly used for modeling low dimensional patches due to the computational constraints it entails when deployed with learned dictionaries. A way around this problem has been recently proposed, adopting a convolutional sparse representation model. This approach assumes that the global dictionary is a concatenation of banded circulant matrices. While several works have presented algorithmic solutions to the global pursuit problem under this new model, very few truly effective guarantees are known for the success of such methods. In this paper, we address the theoretical aspects of the convolutional sparse model providing the first meaningful answers to questions of uniqueness of solutions and success of pursuit algorithms, both greedy and convex relaxations, in ideal and noisy regimes. To this end, we generalize mathematical quantities, such as the l norm, mutual coherence, Spark and restricted isometry property to their counterparts in the convolutional setting, intrinsically capturing local measures of the global model. On the algorithmic side, we demonstrate how to solve the global pursuit problem by using simple local processing, thus offering a first of its kind bridge between global modeling of signals and their patch-based local treatment.
机译:在过去的十年中,著名的稀疏表示模型已在各种信号处理任务中取得了显著成果。然而,尽管其最初的目的是作为整个信号的全局先验,但由于与学习词典一起部署时会受到计算上的限制,因此它通常用于建模低维补丁。最近提出了一种解决该问题的方法,即采用卷积稀疏表示模型。该方法假定全局字典是带状循环矩阵的串联。尽管在此新模型下已有几篇著作提出了针对全球追赶问题的算法解决方案,但对于这种方法的成功,鲜有真正有效的保证。在本文中,我们讨论了卷积稀疏模型的理论方面,为理想和嘈杂状态下的解决方案的唯一性和追求算法的成功(贪婪和凸松弛)提供了第一个有意义的答案。为此,我们在卷积设置中将数学量(例如l范数,相互相干性,Spark和受限制的等距属性)推广到其对应项,以内在地捕获全局模型的局部度量。在算法方面,我们演示了如何通过使用简单的局部处理来解决全局跟踪问题,从而在信号的全局建模与其基于补丁的局部处理之间提供了首个桥梁。

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