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A sparse representation and dictionary learning based algorithm for image restoration in the presence of Rician noise

机译:稀疏表示和基于字典学习的Rician噪声图像复原算法

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摘要

Rician noise removal for Magnetic Resonance Imaging (MRI) is very important because the MRI has been widely used in various clinical applications and the associated Rician noise deteriorates the image quality and causes errors in interpreting the images. Great efforts have recently been devoted to develop the corresponding noise-removal algorithms, particularly the development based on the newly-established Total Variation (TV) theorem. However, all the TV-based algorithms depend mainly on the gradient information and have been shown to produce the so called “blocky” artifact, which also deteriorates the image quality and causes image interpretation errors. In order to avoid producing the artifact, this paper presents a new de-noising model based on sparse representation and dictionary learning. The Split Bregman Iteration strategy is employed to implement the model. Furthermore, an appropriate dictionary is designed by the use of the Kernel Singular Value Decomposition method, resulting in a new Rician noise removal algorithm. Compared with other de-noising algorithms, the presented new algorithm can achieve superior performance, in terms of quantitative measures of the Structural Similarity Index and Peak Signal to Noise Ratio, by a series of experiments using different images in the presence of Rician noise.
机译:用于磁共振成像(MRI)的Rician噪声消除非常重要,因为MRI已广泛用于各种临床应用中,并且相关的Rician噪声会降低图像质量并导致解释图像时出错。近来,人们致力于开发相应的噪声消除算法,特别是基于新近建立的总变分(TV)定理的开发。但是,所有基于电视的算法都主要依赖于梯度信息,并已显示出会产生所谓的“块状”伪影,这也会使图像质量下降并导致图像解释错误。为了避免产生伪像,本文提出了一种基于稀疏表示和字典学习的新降噪模型。使用Split Bregman迭代策略来实现模型。此外,通过使用核奇异值分解方法设计了适当的字典,从而产生了新的Rician噪声消除算法。与其他降噪算法相比,在存在结构噪声的情况下,通过使用不同图像的一系列实验,在结构相似性指数和峰值信噪比的定量测量方面,该新算法可以实现更高的性能。

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