用于稀疏表示的迭代调优字典

J. Zepeda, C. Guillemot, Ewa Kijak
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引用次数: 15

摘要

我们为稀疏表示引入了一种新的字典结构,它更适合于实际场景中使用的追踪算法。我们称之为迭代调优字典(ITD)的新结构由一组字典组成,每个字典都与一个追踪算法的单个迭代索引相关联。在这项工作中,我们首先使追踪分解适应过渡段结构的情况,然后引入一种用于构建过渡段的训练算法。训练算法包括对训练集的(i−1)-个残差应用K-means,从而产生ITD结构的第i个字典。在结果部分,我们将我们的算法与最先进的字典训练方案进行比较,并表明我们的方法产生的稀疏表示可以在相同的稀疏度级别上产生更好的信号近似值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Iteration-Tuned Dictionary for sparse representations
We introduce a new dictionary structure for sparse representations better adapted to pursuit algorithms used in practical scenarios. The new structure, which we call an Iteration-Tuned Dictionary (ITD), consists of a set of dictionaries each associated to a single iteration index of a pursuit algorithm. In this work we first adapt pursuit decompositions to the case of ITD structures and then introduce a training algorithm used to construct ITDs. The training algorithm consists of applying a K-means to the (i −1)-th residuals of the training set to thus produce the i-th dictionary of the ITD structure. In the results section we compare our algorithm against the state-of-the-art dictionary training scheme and show that our method produces sparse representations yielding better signal approximations for the same sparsity level.
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