School of Mathematics, Shandong University, Jinan 250100, China.
School of Mathematics, Shandong University, Jinan 250100, China.
Brain Res Bull. 2018 Sep;142:270-280. doi: 10.1016/j.brainresbull.2018.08.006. Epub 2018 Aug 10.
Magnetic resonance (MR) imaging plays an important role in clinical diagnosis and scientific research. A clean MR image can better provide patient's information to doctors or researchers for further treatment. However, in real life, MR images are inevitably corrupted by annoying Rician noise in the process of imaging. Aiming at the Rician noise of 3D MR images, a framework is proposed to suppress noise by low-rank matrix approximation (LRMA) with weighted Schatten p-norm minimization regularization (WSNMD-3D). The proposed method not only considers the importance of different rank components, but can also approximate the true rank of the latent low-rank matrix. This approach first groups similar non-local cubic patches extracted from the noisy 3D MR image into a matrix whose columns are vectorized patches. The above matrix can be modeled as a low-rank matrix approximate model. Then weighted Schatten p-norm minimization (WSNM) is applied to the model, which shrinks different rank components with different treatments. Finally, the denoised 3D MR image is acquired by aggregating all denoised patches with weighted averaging. Experimental results on synthetic and real 3D MR data show that the proposed method obtains better results than state-of-the-art methods, both visually and quantitatively.
磁共振(MR)成像在临床诊断和科学研究中发挥着重要作用。干净的磁共振图像可以更好地为医生或研究人员提供患者信息,以便进行进一步的治疗。然而,在现实生活中,磁共振图像在成像过程中不可避免地会受到令人讨厌的瑞利噪声的干扰。针对三维磁共振图像的瑞利噪声,提出了一种通过低秩矩阵逼近(LRMA)和加权 Schatten p-范数最小化正则化(WSNMD-3D)来抑制噪声的框架。该方法不仅考虑了不同秩分量的重要性,而且能够近似估计潜在低秩矩阵的真实秩。该方法首先将从噪声三维磁共振图像中提取的相似非局部立方块分组到一个矩阵中,该矩阵的列是向量化的块。上述矩阵可以建模为一个低秩矩阵近似模型。然后将加权 Schatten p-范数最小化(WSNM)应用于该模型,该模型对不同的秩分量进行不同的处理。最后,通过对所有去噪块进行加权平均得到去噪后的三维磁共振图像。在合成和真实三维磁共振数据上的实验结果表明,该方法在视觉和定量上都优于最先进的方法。