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Improving image reconstruction in electrical capacitance tomography based on deep learning

机译:基于深度学习的电容断层扫描中改善图像重建

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Electrical capacitance tomography (ECT) has been developed for many years and made great progresses. Successful applications of ECT depend on the accuracy and speed of image reconstruction. In this paper, we propose a new method to enhance the quality of reconstructed image based on deep learning. Our method mainly applies to the images that have been reconstructed by conventional methods, such as Landweber iteration. In order to better measure the image quality, we introduce a set of evaluation criteria, including pixel accuracy, mean pixel accuracy, mean intersection over union and frequency weighted intersection over union. In test study, 5000 frames of simulation data containing three typical flow patterns were used. Results show that our method can give more accurate ECT images.
机译:电容断层扫描(ECT)已开发多年,并取得了很大的进展。 ECT的成功应用取决于图像重建的准确性和速度。在本文中,我们提出了一种新方法,以提高基于深度学习的重建图像的质量。我们的方法主要适用于通过传统方法重建的图像,例如Landweber迭代。为了更好地测量图像质量,我们介绍了一系列评估标准,包括像素精度,平均像素精度,均值与联盟的频率加权交叉口相交。在测试研究中,使用了包含三种典型流动模式的5000帧的模拟数据。结果表明,我们的方法可以提供更准确的ect图像。

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