Computed Tomography image denoising utilizing an efficient sparse coding algorithm

K. Abhari, M. Marsousi, J. Alirezaie, P. Babyn
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引用次数: 6

Abstract

In this paper, the problem of reducing noise from low-dose Computed Tomography (CT) is investigated. The process is composed of: sparse coding, dictionary update and denoising; that is a time consuming process. Hence, despite the promising results reported in literature, it has not attracted much attention in medical applications. In an attempt to reduce the complexity and time consumed, we propose an efficient method for sparse coding approximation. In the proposed sparse coding approach, unlike most current methods the global search is performed only once. The potential representative atoms are identified and buffered, then only a local recursive pursuit within a few atoms is executed to find the sparse representation. Moreover, the K-SVD dictionary update method and its extension to image denoising is utilized for reducing the noise in CT scans. Our results demonstrate this approach is reliable and improves the accuracy and process time significantly, making the proposed method a suitable candidate for clinical purposes.
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利用高效稀疏编码算法的计算机断层图像去噪
本文研究了低剂量计算机断层扫描(CT)的降噪问题。该过程包括:稀疏编码、字典更新和去噪;这是一个耗时的过程。因此,尽管在文献中报道了有希望的结果,但在医学应用中并未引起太多关注。为了减少编码的复杂度和时间消耗,我们提出了一种有效的稀疏编码近似方法。在本文提出的稀疏编码方法中,与目前大多数方法不同的是,全局搜索只执行一次。识别和缓冲潜在的代表性原子,然后只在几个原子内执行局部递归搜索以找到稀疏表示。此外,利用K-SVD字典更新方法及其对图像去噪的扩展来降低CT扫描中的噪声。我们的研究结果表明,这种方法是可靠的,并显著提高了准确性和处理时间,使所提出的方法适合临床目的。
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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