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Dictionary Learning for Sparse Coding: Algorithms and Convergence Analysis

机译:稀疏编码的字典学习:算法和收敛性分析

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摘要

In recent years, sparse coding has been widely used in many applications ranging from image processing to pattern recognition. Most existing sparse coding based applications require solving a class of challenging non-smooth and non-convex optimization problems. Despite the fact that many numerical methods have been developed for solving these problems, it remains an open problem to find a numerical method which is not only empirically fast, but also has mathematically guaranteed strong convergence. In this paper, we propose an alternating iteration scheme for solving such problems. A rigorous convergence analysis shows that the proposed method satisfies the global convergence property: the whole sequence of iterates is convergent and converges to a critical point. Besides the theoretical soundness, the practical benefit of the proposed method is validated in applications including image restoration and recognition. Experiments show that the proposed method achieves similar results with less computation when compared to widely used methods such as K-SVD.
机译:近年来,稀疏编码已被广泛用于从图像处理到模式识别的许多应用中。大多数现有的基于稀疏编码的应用程序都需要解决一类具有挑战性的非平滑非凸优化问题。尽管已经开发了许多数值方法来解决这些问题,但是找到一种数值方法不仅是经验上的快速,而且在数学上保证了强的收敛性,这仍然是一个悬而未决的问题。在本文中,我们提出了一种交替迭代方案来解决此类问题。严格的收敛性分析表明,该方法满足全局收敛性:迭代的整个序列是收敛的,并且收敛到临界点。除了理论上的合理性外,该方法的实际好处还可以在包括图像恢复和识别在内的应用中得到验证。实验表明,与广泛使用的方法(例如K-SVD)相比,所提出的方法以更少的计算量实现了相似的结果。

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