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An Efficient Dictionary Learning Algorithm and Its Application to 3-D Medical Image Denoising

机译:高效的字典学习算法及其在3D医学图像去噪中的应用

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摘要

In this paper, we propose an efficient dictionary learning algorithm for sparse representation of given data and suggest a way to apply this algorithm to 3-D medical image denoising. Our learning approach is composed of two main parts: sparse coding and dictionary updating. On the sparse coding stage, an efficient algorithm named multiple clusters pursuit (MCP) is proposed. The MCP first applies a dictionary structuring strategy to cluster the atoms with high coherence together, and then employs a multiple-selection strategy to select several competitive atoms at each iteration. These two strategies can greatly reduce the computation complexity of the MCP and assist it to obtain better sparse solution. On the dictionary updating stage, the alternating optimization that efficiently approximates the singular value decomposition is introduced. Furthermore, in the 3-D medical image denoising application, a joint 3-D operation is proposed for taking the learning capabilities of the presented algorithm to simultaneously capture the correlations within each slice and correlations across the nearby slices, thereby obtaining better denoising results. The experiments on both synthetically generated data and real 3-D medical images demonstrate that the proposed approach has superior performance compared to some well-known methods.
机译:在本文中,我们提出了一种有效的字典学习算法来稀疏表示给定数据,并提出了一种将该算法应用于3D医学图像降噪的方法。我们的学习方法由两个主要部分组成:稀疏编码和字典更新。在稀疏编码阶段,提出了一种有效的多聚类追踪算法(MCP)。 MCP首先应用字典结构化策略将具有高相干性的原子聚类在一起,然后采用多重选择策略在每次迭代中选择几个竞争性原子。这两种策略可以大大降低MCP的计算复杂度,并帮助其获得更好的稀疏解。在字典更新阶段,引入了有效地逼近奇异值分解的交替优化。此外,在3-D医学图像去噪应用中,提出了一种联合3-D操作,以利用所提出的算法的学习能力来同时捕获每个切片内的相关性和相邻切片之间的相关性,从而获得更好的去噪结果。对合成生成的数据和真实的3D医学图像进行的实验表明,与某些众所周知的方法相比,该方法具有更好的性能。

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