Framelet transform and fuzzy clustering-based intelligent technique for speckle noise removal in ultrasound images

IF 0.8 Q4 ROBOTICS
Praveen Kumar Lendale, N. Nandhitha
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引用次数: 0

Abstract

PurposeSpeckle noise removal in ultrasound images is one of the important tasks in biomedical-imaging applications. Many filtering -based despeckling methods are discussed in many existing works. Two-dimensional (2-D) transforms are also used enormously for the reduction of speckle noise in ultrasound medical images. In recent years, many soft computing-based intelligent techniques have been applied to noise removal and segmentation techniques. However, there is a requirement to improve the accuracy of despeckling using hybrid approaches.Design/methodology/approachThe work focuses on double-bank anatomy with framelet transform combined with Gaussian filter (GF) and also consists of a fuzzy kind of clustering approach for despeckling ultrasound medical images. The presented transform efficiently rejects the speckle noise based on the gray scale relative thresholding where the directional filter group (DFB) preserves the edge information.FindingsThe proposed approach is evaluated by different performance indicators such as the mean square error (MSE), peak signal to noise ratio (PSNR) speckle suppression index (SSI), mean structural similarity and the edge preservation index (EPI) accordingly. It is found that the proposed methodology is superior in terms of all the above performance indicators.Originality/valueFuzzy kind clustering methods have been proved to be better than the conventional threshold methods for noise dismissal. The algorithm gives a reconcilable development as compared to other modern speckle reduction procedures, as it preserves the geometric features even after the noise dismissal.
基于小框架变换和模糊聚类的超声图像斑点去噪智能技术
目的超声图像中斑点噪声的去除是生物医学成像应用的重要内容之一。现有的许多研究都讨论了许多基于滤波的去噪方法。二维(2-D)变换也被广泛用于减少超声医学图像中的斑点噪声。近年来,许多基于软计算的智能技术被应用到噪声去除和分割技术中。然而,使用混合方法来提高去斑的精度是有要求的。设计/方法/方法研究了基于框架变换和高斯滤波(GF)的双银行解剖,并提出了一种用于超声医学图像去斑的模糊聚类方法。该变换基于灰度相对阈值法有效地抑制了散斑噪声,其中方向滤波组(DFB)保留了边缘信息。结果采用均方误差(MSE)、峰值信噪比(PSNR)、散斑抑制指数(SSI)、平均结构相似度和边缘保持指数(EPI)等性能指标对该方法进行了评价。结果表明,本文提出的方法在所有绩效指标方面都具有优势。独创性/价值模糊类聚类方法已被证明比传统的阈值方法更能消除噪声。与其他现代散斑去除方法相比,该算法得到了一个协调的发展,因为它在噪声消除后仍然保留了几何特征。
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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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
21
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