Speckle noise reduction in 3D ultrasound images — A review

C. Rekha, K. Manjunathachari, G. Rao
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引用次数: 9

Abstract

In image processing noise removal is the strenuous tasks. Noise removal forms one of the applications of segmentation. It is also the basic tool for the medical diagnosis. It helps the medical practitioner to extract the defected organ easily and give a proper diagnosis. The present scenario is to concentrate on extracting the desired tissue from the noisy image obtained through ultrasound scanning methods. Ultrasound images are the predominantly used scanning approaches because of their low-cost and non-invasive nature. Elimination of the speckle from ultrasound is the demanding aspect. This paper focuses on various researches on speckle removal in ultrasound images. Emphasis is made on which method best removes the speckle noise by measuring various parameters such as signal to noise ratio, efficiency, etc,. In this paper it is also proposed to use a well-defined and well framed approach to reduce speckle noise in ultrasound images and improve signal to noise ratio of the obtained image compared to existing methods.
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三维超声图像中的斑点噪声降低-综述
在图像处理中,去噪是一项艰巨的任务。噪声去除是分割的应用之一。它也是医学诊断的基本工具。它有助于医生容易地取出有缺陷的器官并作出正确的诊断。目前的场景是集中在提取所需的组织从噪声图像通过超声扫描方法获得。超声图像是主要使用的扫描方法,因为其低成本和非侵入性。从超声波中消除斑点是一个要求很高的方面。本文重点介绍了超声图像中斑点去除的各种研究。通过对信噪比、效率等参数的测量,重点讨论了哪一种方法能较好地去除散斑噪声。本文还提出了一种定义良好、框架良好的方法来降低超声图像中的斑点噪声,与现有方法相比,提高图像的信噪比。
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