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A vectorial total variation model for denoising high angular resolution diffusion images corrupted by Rician noise

机译:矢量全变分模型,用于消除受里奇安噪声破坏的高角度分辨率扩散图像

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摘要

The presence of noise in High Angular Resolution Diffusion Imaging (HARDI) data of the brain can limit the accuracy with which fiber pathways of the brain can be extracted. In this work, we present a variational model to denoise HARDI data corrupted by Rician noise. We formulate a minimization model composed of a data fidelity term incorporating the Rician noise assumption and a regularization term given by the vectorial total variation. Although the proposed minimization model is non-convex, we are able to establish existence of minimizers. Numerical experiments are performed on three types of data: 2D synthetic data, 3D diffusion-weighted Magnetic Resonance Imaging (DW-MRI) data of a hardware phantom containing synthetic fibers, and 3D real HARDI brain data. Experiments show that our model is effective for denoising HARDI-type data while preserving important aspects of the fiber pathways such as fractional anisotropy and the orientation distribution functions.
机译:大脑的高角度分辨率扩散成像(HARDI)数据中存在噪声会限制提取大脑纤维路径的准确性。在这项工作中,我们提出了一种变分模型来对受Rician噪声破坏的HARDI数据进行去噪。我们制定了一个最小化模型,该模型由结合了Rician噪声假设的数据保真度项和矢量总变化量给出的正则化项组成。尽管提出的最小化模型是非凸的,但是我们能够确定最小化器的存在。对三种类型的数据进行了数值实验:2D合成数据,包含合成纤维的硬件模型的3D扩散加权磁共振成像(DW-MRI)数据和3D真实HARDI脑数据。实验表明,我们的模型在保留光纤路径的重要方面(例如分数各向异性和方向分布函数)的同时,可以对HARDI类型的数据进行去噪。

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