基于非局部均值核回归的b超图像去斑

R. Bharath, P. Rajalakshmi
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引用次数: 0

摘要

医学超声扫描是一种广泛应用于医疗保健的诊断成像方式。斑点是超声图像中存在的固有噪声,降低了超声扫描的诊断准确性。散斑噪声有助于像素之间的高方差,并划定了器官的边界。有效去斑包括减少均匀区域对应像素间的方差,同时保留解剖细节。非局部均值滤波器是非常成功的,并产生的最先进的结果去斑超声图像。本文证明了多项式回归核非局部均值滤波器对超声图像去斑的有效性。在软件模拟和实时超声图像上对该算法进行了评价,结果表明该算法在去斑和边缘保持方面都非常有效。
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Non-local means kernel regression based despeckling of B-mode ultrasound images
Medical ultrasound scanning is a widely used diagnostic imaging modality in health-care. Speckle is inherent noise present in ultrasound images reducing the diagnostic accuracy of ultrasound scanning. Speckle noise contributes to high variance between pixels and delineates boundaries of the organs. Effective despeckling involves reducing the variance between pixels corresponding to homogeneous region and to preserve anatomical details simultaneously. Non-Local Means filters are highly successful and produced state of the art results in despeckling ultrasound images. In this paper, we show the effectiveness of Non-Local Means filter with polynomial regression kernel in despeckling ultrasound images. The proposed algorithm is evaluated on software simulated and real time ultrasound images and proved very effective in both despeckling and edge preservation.
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