堆栈滤波的局部自适应技术

D. Petrescu, I. Tabus, M. Gabbouj
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引用次数: 4

摘要

本文介绍了一种新的堆栈滤波结构,该滤波器能够适应数据中遇到的局部特征。研究了有监督和无监督两种优化设计方法。我们将图像分割成小区域,并根据输入信号的空间域或阈值水平域特征选择叠加滤波器对每个区域进行处理。与全局堆栈过滤方法相比,该方法提供了显著的改进潜力。计算一些局部统计量,以建立一个简化的输入空间,有效地描述数据的最重要的局部特征。矢量量化用于将简化后的输入空间聚类为少量区域,然后找到简化后的输入空间聚类与滤波器空间之间的映射,从而得到为给定区域选择最适合的堆栈滤波器的规则。有监督聚类方法明显优于全局过滤方法。
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Locally adaptive techniques for stack filtering
This paper introduces a new structure for stack filtering, where the filter adapts to the local characteristics encountered in data. Both supervised and unsupervised techniques for optimal design are investigated. We split the image into small regions and select the stack filter to process each region according to the spatial domain or threshold level domain characteristics of the input signal. This method provides a significant improvement potential over the global stack filtering approach. Some local statistics are computed, to build a reduced input space which efficiently describes the most important local characteristics of data. Vector quantization is used for clustering the reduced input space into a small number of regions, and then finding a mapping between reduced input space clusters and the filter space, will result in rules for selecting the best suited stack filter for a given region. The supervised clustering procedures are shown to surpass significantly the global filtering approach.
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