磁共振图像的独立分量分析去噪

Kedar Phatak, Swapnil Jakhade, Aniket Nene, Mrs R S Kamathe, Mrs K R Joshi, Asst Prof, Prof
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引用次数: 5

摘要

数字磁共振图像处理通常需要事先应用滤波器来降低图像的噪声水平,同时保留重要的细节。这可以提高数字MR图像的质量,有助于准确诊断。基于线性滤波器的去噪方法不能像基于非线性滤波器的方法那样保留图像结构(如边缘)。近年来,针对自然图像和人工图像,提出了一种基于ICA的非线性去噪方法[1,2]。ICA去噪方法的功能取决于图像的统计量。在本文中,我们证明MRI具有适合于ICA去噪的统计量。对MRI进行ICA变换,对其12个独立的组织分量进行分离,然后通过观察各分量的统计特性,采用合适的稀疏编码收缩函数对各分量进行去噪。实验证明,ICA去噪是一种较好的去噪方法。
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De-noising of magnetic resonance images using independent component analysis
Digital MR Image processing often requires a prior application of filters to reduce the noise level of the image while preserving important details. This may improve the quality of digital MR images and contribute to an accurate diagnosis. De-noising methods based on linear filters cannot preserve image structures such as edges in the same way that methods based on nonlinear filters can do it. Recently, a nonlinear de-noising method based on ICA has been introduced [1,2] for natural and artificial images. The functioning of the ICA de-noising method depends on the statistics of the images. In this paper, we show that MRI has statistics appropriate for ICA de-noising. ICA transform is applied on MRI and its 12 independent tissue components are separated and then by observing statistical properties of each component suitable sparse coding shrinkage function is applied for de-noising of each component. We demonstrate experimentally that ICA de-noising is a suitable method to remove the noise of digitized MRI.
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