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Denoising of diffusion magnetic resonance images using a modified and differentiable Monge-Kantorovich distance for measure-valued functions

机译:使用修改和可分辨的Monge-Kantorovich距离的扩散磁共振图像的去噪,用于测量值函数

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We report on the implementation of a novel total-variation denoising method for diffusion spectrum images (DSI). Our method works on the raw signal obtained from dMRI. From the Stejskal-Tanner equation [6] , the signals S(x, s(k)), 1 = k = K , at a given voxel location x may be considered as samplings of a measure supported on the unit sphere S-2 is an element of R-3 at locations s(k) = ((theta)k, phi(k)) is an element of S-2 which quantify the ease/difficulty of diffusion in these directions. We consider the entire signal S as a measure-valued function in a complete metric space which employs the Monge-Kantorovich (MK) metric. A total variation (TV) for measures and measure-valued functions is also defined. A major advance in this paper is the use of a modification of the standard MK distance which permits rapid computation in higher dimensions. An added bonus is that this modified metric is differentiable. The resulting TV-based denoising problem is a convex optimization problem. (C) 2020 Elsevier B.V. All rights reserved.
机译:我们报告了扩散谱图像(DSI)的新型总变异去噪方法的实施。我们的方法适用于从DMRI获得的原始信号。从STEJSKAL-TANNER方程[6],信号S(x,s(k)),1 <= k

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