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DTI Image Denoising Based on Complex Shearlet Domain and Complex Diffusion Anisotropic Filtering

机译:基于复Shearlet域和复扩散各向异性滤波的DTI图像降噪

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Diffusion tensor imaging (DTI) is an imaging modality that has developed in recent years. It is a non-invasive technique and needn't contrast medium. However, the SNR of DTI data is relatively low and clinically polluted by noise, which can bring serious impacts on tensor calculating, fiber tracking and other post-processing. In order to reduce the influence of noise on DTI images and improve the efficiency of diffusion tensor imaging effectively, a new DTI denoising scheme is proposed by combining the complex Shearlet transform and complex diffusion anisotropic filtering. The experiment results acquired from the simulated and real data prove the good performance of the presented algorithm.
机译:扩散张量成像(DTI)是近年来发展起来的一种成像方式。这是一种非侵入性技术,不需要造影剂。但是,DTI数据的SNR相对较低,并且在临床上受到噪声的污染,这可能会对张量计算,光纤跟踪和其他后处理产生严重影响。为了减少噪声对DTI图像的影响,有效地提高扩散张量成像的效率,提出了一种将Shearlet复变换和扩散各向异性滤波相结合的DTI去噪方案。从仿真和真实数据中获得的实验结果证明了该算法的良好性能。

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