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首页> 外文期刊>Journal of synchrotron radiation >A convolutional neural network for fast upsampling of undersampled tomograms in X-ray CT time-series using a representative highly sampled tomogram
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A convolutional neural network for fast upsampling of undersampled tomograms in X-ray CT time-series using a representative highly sampled tomogram

机译:一种卷积神经网络,用于使用代表高度采样断层图像快速上采样的X射线CT时间序列中的欠采样断层图像

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摘要

X-ray computed tomography and, specifically, time-resolved volumetric tomography data collections (4D datasets) routinely produce terabytes of data, which need to be effectively processed after capture. This is often complicated due to the high rate of data collection required to capture at sufficient time-resolution events of interest in a time-series, compelling the researchers to perform data collection with a low number of projections for each tomogram in order to achieve the desired `frame rate'. It is common practice to collect a representative tomogram with many projections, after or before the time-critical portion of the experiment without detrimentally affecting the time-series to aid the analysis process. For this paper these highly sampled data are used to aid feature detection in the rapidly collected tomograms by assisting with the upsampling of their projections, which is equivalent to upscaling the g-axis of the sinograms. In this paper, a super-resolution approach is proposed based on deep learning (termed an upscaling Deep Neural Network, or UDNN) that aims to upscale the sinogram space of individual tomograms in a 4D dataset of a sample. This is done using learned behaviour from a dataset containing a high number of projections, taken of the same sample and occurring at the beginning or the end of the data collection. The prior provided by the highly sampled tomogram allows the application of an upscaling process with better accuracy than existing interpolation techniques. This upscaling process subsequently permits an increase in the quality of the tomogram's reconstruction, especially in situations that require capture of only a limited number of projections, as is the case in high-frequency time-series capture. The increase in quality can prove very helpful for researchers, as downstream it enables easier segmentation of the tomograms in areas of interest, for example. The method itself comprises a convolutional neural network which through tra
机译:X射线计算断层扫描,具体而言,时间分辨的体积断层扫描数据集合(4D数据集)经常产生数据的Tberabytes,需要在捕获后有效地处理。由于在时间序列中足够的时间分辨率事件所需的数据收集率高,这往往是复杂的,这迫使研究人员对每个断层照片的每个断层照片进行数据收集,以实现每个断层照片的预测期望的“帧速率”。通常的做法是通过实验的时关,之后或之前的许多预测,之后或之前收集具有许多预测的代表性断层照片,而不会影响时间序列以帮助分析过程。对于本文,这些高度采样的数据用于通过协助它们的突起的上采样来帮助特征检测,这相当于升高了中央图的G轴。本文基于深度学习(称为升高的深神经网络,或UDNN)提出了一种超级分辨率方法,该方法旨在在样本的4D数据集中高度升级单个断层图像的Scogram空间。这是使用包含大量投影的数据集的学习行为完成的,采用相同的样本并在数据收集的开头或末尾发生。由高度采样的断层图像提供的先前提供了比现有的插值技术更好地应用上升过程。该提升过程随后允许增加断层图像的重建质量,特别是在需要仅捕获有限数量的投影的情况下,就是高频时间序列捕获的情况。例如,质量的增加可以对研究人员来说非常有帮助,例如下游,例如,它可以更容易地在感兴趣的区域中分割断层图像。该方法本身包括卷积神经网络,通过TRA

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