3D Diffusion tensor magnetic resonance images denoising based on sparse representation

Y. Kong, Defeng Wang, Tian-Fu Wang, W. Chu, A. Ahuja
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引用次数: 4

Abstract

Diffusion tensor magnetic resonance imaging (DT-MRI) is widely used to characterize white matter health and brain disease. However, the DT-MRI is very sensitive to noise. This paper proposes a sparse representation based denoising method for 3D diffusion weighted images (DWI) in DT-MRI. As consecutive 2D images in DWI volume have similar content and structure, we can process a fixed number of adjacent images from DWI volume simultaneously. The proposed method first learned a dictionary from the selected 2d diffusion weighted images according to the K-SVD learning algorithm. Then the clean images are obtained by gradually approximating the underlying images using the bases selected from the learned dictionary based on sparse representation. At last, the tensor images are estimated from the diffusion weighted images. The experiments on both synthetic and real DT-MRI images show that the proposed method performs better than classical techniques by preserving image contrast and structures.
基于稀疏表示的三维扩散张量磁共振图像去噪
扩散张量磁共振成像(DT-MRI)被广泛用于表征白质健康和脑部疾病。然而,ct - mri对噪声非常敏感。提出了一种基于稀疏表示的ct - mri三维弥散加权图像去噪方法。由于DWI体中连续的二维图像具有相似的内容和结构,我们可以同时处理固定数量的DWI体中的相邻图像。该方法首先根据K-SVD学习算法从选定的二维扩散加权图像中学习字典。然后基于稀疏表示,利用从学习字典中选择的基逐渐逼近底层图像,得到干净图像。最后,从扩散加权图像中估计张量图像。在合成和真实ct - mri图像上的实验表明,该方法在保留图像对比度和结构方面优于传统方法。
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