Reducing the Gibbs effect in multimodal medical imaging by the Fake Nodes approach

Davide Poggiali , Diego Cecchin , Stefano De Marchi
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引用次数: 1

Abstract

It is a common practice in multimodal medical imaging to undersample the anatomically-derived segmentation images to measure the mean activity of a co-acquired functional image. This practice avoids the resampling-related Gibbs effect that would occur in oversampling the functional image. As sides effect, waste of time and efforts are produced since the anatomical segmentation at full resolution is performed in many hours of computations or manual work. In this work we explain the commonly-used resampling methods and give errors bound in the cases of continuous and discontinuous signals. Then we propose a Fake Nodes scheme for image resampling designed to reduce the Gibbs effect when oversampling the functional image. This new approach is compared to the traditional counterpart in two significant experiments, both showing that Fake Nodes resampling gives smaller errors at the cost of an higher computational time.

假淋巴结法减少多模态医学成像中的吉布斯效应
在多模态医学成像中,对解剖学衍生的分割图像进行欠采样以测量共同获得的功能图像的平均活动是一种常见的做法。这种做法避免了在对功能图像进行过采样时可能出现的与重采样相关的吉布斯效应。作为副作用,由于在许多小时的计算或手工工作中进行全分辨率的解剖分割,产生了时间和精力的浪费。本文解释了常用的重采样方法,并给出了连续和不连续信号情况下的误差界。然后,我们提出了一种伪节点的图像重采样方案,旨在减少过采样时的吉布斯效应。在两个重要的实验中,将这种新方法与传统方法进行了比较,两者都表明假节点重采样以更高的计算时间为代价给出了更小的误差。
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