An enhanced Kuan filter for suboptimal speckle reduction

A. Akl, K. Tabbara, C. Yaacoub
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引用次数: 13

Abstract

Speckle noise is a common problem found in several imaging applications, mainly in SAR and ultrasound imaging. Originally designed for RADAR and SONAR image denoising, the Kuan filter can be adapted for other applications by emulating its parameters. However, these parameters need to be calibrated for each image by applying the filter several times with the parameters modified upon each filter run, until the desired quality is reached. In this paper, we propose a novel technique for automatically estimating the optimal filter parameter value, which results in near-optimal performance, where the PSNR loss does not exceed 0.1 dB most of the time, compared to the best possible filter output, and yielding a significant gain with respect to the basic filter used with the default parameters.
一种用于次优散斑减少的增强宽滤波器
散斑噪声是一些成像应用中常见的问题,主要是在SAR和超声成像中。宽滤波器最初设计用于雷达和声纳图像去噪,可以通过模拟其参数来适应其他应用。然而,这些参数需要通过多次应用过滤器来校准每个图像,每次过滤器运行时修改参数,直到达到所需的质量。在本文中,我们提出了一种自动估计最优滤波器参数值的新技术,与最佳可能的滤波器输出相比,该技术在大多数时间内的PSNR损失不超过0.1 dB,从而获得接近最优的性能,并且相对于使用默认参数的基本滤波器产生显着的增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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