Noise-driven anisotropic diffusion filtering of MRI.

IEEE Transactions on Image Processing(2009)

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摘要
A new filtering method to remove Rician noise from magnetic resonance images is presented. This filter relies on a robust estimation of the standard deviation of the noise and combines local linear minimum mean square error filters and partial differential equations for MRI, as the speckle reducing anisotropic diffusion did for ultrasound images. The parameters of the filter are automatically chosen from the estimated noise. This property improves the convergence rate of the diffusion while preserving contours, leading to more robust and intuitive filtering. The partial derivative equation of the filter is extended to a new matrix diffusion filter which allows a coherent diffusion based on the local structure of the image and on the corresponding oriented local standard deviations. This new filter combines volumetric, planar, and linear components of the local image structure. The numerical scheme is explained and visual and quantitative results on simulated and real data sets are presented. In the experiments, the new filter leads to the best results.
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关键词
coherent diffusion,minimum mean square error filters,square error filter,local image structure,matrix diffusion filter,oriented local standard deviation,noise-driven anisotropic diffusion,new matrix diffusion filter,magnetic resonance images,ultrasound images,new filter,rician distribution,least mean squares methods,magnetic resonance imaging,lmmse filter,partial differential equations,local linear minimum,filtering theory,rician noise,anisotropic diffusion,anisotropic diffusion filtering,rician channels,local structure,convergence rate,robust estimator,standard deviation,noise reduction,magnetic resonance image,filtering,anisotropic magnetoresistance,magnetic resonance,partial differential equation
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