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Sparsity optimization in design of multidimensional filter networks

机译:多维滤波网络设计中的稀疏性优化

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Filter networks are a powerful tool for reducing image processing time and maintaining high image quality. They are composed of sparse sub-filters whose high sparsity ensures fast image processing. The filter network design is related to solving a sparse optimization problem where a cardinality constraint bounds below the sparsity level. In the case of sequentially connected sub-filters, which is the simplest network structure of those considered in this paper, a cardinality-constrained multilinear least-squares (MLLS) problem is to be solved. Even when disregarding the cardinality constraint, the MLLS is typically a large-scale problem characterized by a large number of local minimizers, each of which is singular and non-isolated. The cardinality constraint makes the problem even more difficult to solve. An approach for approximately solving the cardinality-constrained MLLS problem is presented. It is then applied to solving a bi-criteria optimization problem in which both the time and quality of image processing are optimized. The developed approach is extended to designing filter networks of a more general structure. Its efficiency is demonstrated by designing certain 2D and 3D filter networks. It is also compared with the existing approaches.
机译:过滤器网络是减少图像处理时间并保持高质量图像的强大工具。它们由稀疏子滤镜组成,其稀疏性确保了快速的图像处理。滤波器网络设计与解决稀疏优化问题有关,其中基数约束限制在稀疏级别以下。在顺序连接的子滤波器的情况下,这是本文考虑的最简单的网络结构,需要解决基数约束的多线性最小二乘(MLLS)问题。即使不考虑基数约束,MLLS通常也是一个大规模问题,其特征是具有大量局部最小化器,每个局部最小化器都是单数且非隔离的。基数约束使问题更加难以解决。提出了一种近似解决基数受限的MLLS问题的方法。然后将其应用于解决双标准优化问题,在该问题中,图像处理的时间和质量都得到了优化。所开发的方法扩展到设计更通用结构的滤波器网络。通过设计某些2D和3D滤波器网络可以证明其效率。还将其与现有方法进行比较。

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