首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >Variational enhancement and denoising of flow field images
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Variational enhancement and denoising of flow field images

机译:流场图像的变分增强和去噪

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In this work we propose a variational reconstruction algorithm for enhancement and denoising of flow fields that is reminiscent of total-variation (TV) regularization used in image processing, but which also takes into account physical properties of flow such as curl and divergence. We point out the invariance properties of the scheme with respect to transformations of the coordinate system such as shifts, rotations, and changes of scale. To demonstrate the utility of the reconstruction method, we use it first to denoise a simulated phantom where the scheme is found to be superior to its quadratic (L2) variant both in terms of SNR and in preservation of discontinuities. We then use the scheme to enhance the quality of pathline visualizations in an application to 4D (3D+time) flow-sensitive magnetic resonance imaging of blood flow in the aorta.
机译:在这项工作中,我们提出了一种用于流场增强和去噪的变分重构算法,该算法让人联想到图像处理中使用的总变化(TV)正则化,但同时也考虑了流的物理特性,例如卷曲和发散。我们指出了该方案相对于坐标系变换(如平移,旋转和比例变化)的不变性。为了演示重建方法的实用性,我们首先使用它对模拟体模进行降噪,在该模型中,该方案在信噪比和保存方面均优于其二次方(L 2 )变体。不连续性。然后,我们使用该方案来增强主动脉中血流的4D(3D + time)流量敏感磁共振成像的应用中的路径可视化质量。

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