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Methods for Efficient, High Quality Volume Resampling in the Frequency Domain

机译:高效,高质量的频域重采样方法

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摘要

Resampling is a frequent task in visualization and medical imaging. It occurs whenever images or volumes are magnified, rotated, translated, or warped. Resampling is also an integral procedure in the registration of multi-modal datasets, such as CT, PET, and MRI, in the correction of motion artifacts in MRI, and in the alignment of temporal volume sequences in fMRI. It is well known that the quality of the resampling result depends heavily on the quality of the interpolation filter used. However, high-quality filters are rarely employed in practice due to their large spatial extents. In this paper, we explore a new resampling technique that operates in the frequency-domain where high- quality filtering is feasible. Further, unlike previous methods of this kind, our technique is not limited to integer-ratio scaling factors, but can resample image and volume datasets at any rate. This would usually require the application of slow Discrete Fourier Transforms (DFT) to return the data to the spatial domain. We studied two methods that successfully avoid these delays: the chirp-z transform and the FFTW package. We also outline techniques to avoid the ringing artifacts that may occur with frequency-domain filtering. Thus, our method can achieve high-quality interpolation at speeds that are usually associated with spatial filters of far lower quality.
机译:重采样是可视化和医学成像中的常见任务。每当图像或体积被放大,旋转,平移或扭曲时,就会发生这种情况。重采样也是多模态数据集(例如CT,PET和MRI)的注册,MRI的运动伪影的校正以及fMRI的时间体积序列的对齐中的必不可少的过程。众所周知,重采样结果的质量在很大程度上取决于所使用的插值滤波器的质量。但是,由于其较大的空间范围,实际上很少使用高质量的过滤器。在本文中,我们探索了一种新的重采样技术,该技术在可行的高质量滤波的频域中工作。此外,与以前的此类方法不同,我们的技术不仅限于整数比例缩放因子,而且可以任何速率对图像和体积数据集进行重采样。这通常需要应用慢速离散傅立叶变换(DFT)将数据返回到空间域。我们研究了两种成功避免这些延迟的方法:线性调频z变换和FFTW包。我们还概述了避免在频域滤波中可能出现的振铃伪影的技术。因此,我们的方法可以以通常与质量低得多的空间滤波器关联的速度实现高质量插值。

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