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Denoising of medical ultrasound images based on non-local similarity: A low-rank approach

机译:基于非局部相似性的医疗超声图像去噪:低秩的方法

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Ultrasound imaging is one of the safest technique of clinical diagnosis. The presence of speckle noise has made denoising of ultrasound images indispensable for the proper diagnosis of diseases. Non-Local similarity and low-rank approaches is an upcoming area of research in the field of image diagnosis. However, their advantages have not been exploited in the denoising of the ultrasound image. In this work, a technique to denoise the ultrasound images by exploiting the low-rank property of patches grouped together is proposed. The patches are grouped utilising the idea of simultaneous sparse coding technique. This is followed by the singular value decomposition of similarly grouped patches which can be utilised for obtaining local and non-local information between the patches. The singular values are thresholded to obtain the denoised image. The proposed algorithm is compared with the state-of-art techniques existing in the literature and is seen to give the best results regarding both quantitative and qualitative measurements.
机译:超声成像是最安全的临床诊断技术之一。斑点噪声的存在使超声图像的去噪能不能适当诊断疾病。非局部相似性和低秩方法是在图像诊断领域的即将到来的研究领域。然而,它们的优点并未在超声图像的去噪中被利用。在这项工作中,提出了一种通过利用分组在一起分组的补丁的低秩属性来表示超声图像的技术。利用同时稀疏编码技术的思想分组。这是类似分组斑块的奇异值分解,其可用于获得贴片之间的局部和非本地信息。阈值为阈值以获得去噪图像。将所提出的算法与文献中存在的最先进的技术进行比较,并且可以看到关于定量和定性测量的最佳结果。

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