Speckle filtering of ultrasound B-Scan Images - a comparative study between spatial and diffusion filters

R. Sivakumar, M. Gayathri, D. Nedumaran
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引用次数: 46

Abstract

Speckle noise is the inherent property of ultrasound B-Scan images which has been filtered using well-established speckle reduction techniques. In this work, six spatial filters namely Frost, Median, Lee, Kuan, Wiener, and Homomorphic filters, and two diffusion filters viz., Speckle Reduction Anisotropic Diffusion (SRAD) filter, and Anisotropic Diffusion (AD) filter have been attempted over 200 different digital ultrasound B-scan images of kidney, abdomen, liver and choroids. A comparative study has been made on these filters in preserving the edges of the images with effective denoising by calculating fourteen established performance metrics along with the execution time in order to determine the effective and optimum despeckling algorithm for real time implementation. To do this, a cumulative speckle reduction (CSR) algorithm has been developed using MATLAB 7.1, which performs all despeckle filtering functions as well as performance metrics calculation in a single iteration. This study reveals that most of the despeckle filters performed well and gave optimum performance, but SRAD is the outperformed filtering technique for B-scan ultrasound image as far as the performance metrics, execution time and visual inspection are concerned.
b超图像的散斑滤波——空间滤波器与扩散滤波器的比较研究
散斑噪声是超声b扫描图像的固有特性,它已经使用成熟的散斑减少技术进行了过滤。本研究采用Frost、Median、Lee、Kuan、Wiener和同态滤波器等6种空间滤波器,以及两种扩散滤波器,即散斑减少各向异性扩散(SRAD)滤波器和各向异性扩散(AD)滤波器,对200张不同的肾、腹部、肝脏和脉膜的数字超声b扫描图像进行了尝试。通过计算14个既定的性能指标以及执行时间,对这些滤波器在有效去噪的情况下保持图像边缘的性能进行了比较研究,以确定实时实现的有效和最佳去噪算法。为此,使用MATLAB 7.1开发了累积散斑减少(CSR)算法,该算法在一次迭代中执行所有散斑滤波功能以及性能指标计算。本研究表明,大多数消斑滤波器性能良好,并给出了最佳的性能,但就性能指标、执行时间和视觉检测而言,SRAD是b扫描超声图像的最佳滤波技术。
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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