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Rician noise reduction in magnetic resonance images using adaptive non-local mean and guided image filtering
Authors:Muhammad Tariq Mahmood  Yeon-Ho Chu  Young-Kyu Choi
Affiliation:1.School of Computer Science and Engineering,Korea University of Technology and Education,Cheonan,Korea
Abstract:This paper proposes a Rician noise reduction method for magnetic resonance (MR) images. The proposed method is based on adaptive non-local mean and guided image filtering techniques. In the first phase, a guidance image is obtained from the noisy image through an adaptive non-local mean filter. Sobel operators are applied to compute the strength of edges which is further used to control the spread of the kernel in non-local mean filtering. In the second phase, the noisy and the guidance images are provided to the guided image filter as input to restore the noise-free image. The improved performance of the proposed method is investigated using the simulated and real data sets of MR images. Its performance is also compared with the previously proposed state-of-the art methods. Comparative analysis demonstrates the superiority of the proposed scheme over the existing approaches.
Keywords:
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