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基于分区的加权和滤波器的优化及其在图像去噪中的应用。

Optimization of partition-based Weighted Sum filters and their application to image denoising.

作者信息

Shao Min, Barner Kenneth E

机构信息

ZOLL Medical Corporation, Chelmsford, MA 01851, USA.

出版信息

IEEE Trans Image Process. 2006 Jul;15(7):1900-15. doi: 10.1109/tip.2006.873436.

Abstract

Partition-based Weighted Sum (P-WS) filtering is an effective method for processing nonstationary signals, especially those with regularly occurring structures, such as images. P-WS filters were originally formulated as Hard-partition Weighted Sum (HP-WS) filters and were successfully applied to image denoising. This formulation relied on intuitive arguments to generate the filter class. Here we present a statistical analysis that justifies the use of weighted sum filters after observation space partitioning. Unfortunately, the HP-WS filters are nondifferentiable and an analytical solution for their global optimization is therefore difficult to obtain. A two-stage suboptimal training procedure has been reported in the literature, but prior to this research no evaluation on the optimality of this approach has been reported. Here, a Genetic Algorithm (GA) HP-WS optimization procedure is developed that, in simulations, shows that the simpler two-stage training procedure yields near optimal results. Also developed in this paper are Soft-partition Weighted Sum (SP-WS) filters. The SP-WS filters utilize soft, or fuzzy, partitions that yield a differentiable filtering operation, enabling the development of gradient-based optimization procedures. Image denoising simulation results are presented comparing HP-WS and SP-WS filters, their optimization procedures, and wavelet-based image denoising. These results show that P-WS filters, in general, outperform traditional and wavelet-based image filters, and SP-WS filters utilizing soft partitioning not only allow for simple optimization, but also yields improved performance.

摘要

基于划分的加权和(P-WS)滤波是处理非平稳信号的有效方法,尤其适用于具有规则结构的信号,如图像。P-WS滤波器最初被制定为硬划分加权和(HP-WS)滤波器,并成功应用于图像去噪。这种公式依赖直观的论据来生成滤波器类别。在此,我们进行了一项统计分析,证明在观测空间划分后使用加权和滤波器的合理性。不幸的是,HP-WS滤波器不可微,因此难以获得其全局优化的解析解。文献中报道了一种两阶段次优训练过程,但在本研究之前,尚未有对该方法最优性的评估报道。在此,开发了一种遗传算法(GA)HP-WS优化过程,在模拟中表明,更简单的两阶段训练过程能产生接近最优的结果。本文还开发了软划分加权和(SP-WS)滤波器。SP-WS滤波器利用软划分或模糊划分,产生可微的滤波操作,从而能够开发基于梯度的优化过程。给出了图像去噪模拟结果,比较了HP-WS和SP-WS滤波器、它们的优化过程以及基于小波的图像去噪。这些结果表明,一般来说,P-WS滤波器优于传统和基于小波的图像滤波器,利用软划分的SP-WS滤波器不仅允许简单优化,而且性能有所提高。

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