Due to the rapid growth of Electrical Capacitance Tomography (ECT) applications in several industrial fields, there is a crucial need for developing high quality, yet fast, methodologies of image reconstruction from raw capacitance measurements. Deep learning, as an effective non-linear mapping tool for complicated functions, has been going viral in many fields including electrical tomography. In this paper, we propose a Conditional Generative Adversarial Network (CGAN) model for reconstructing ECT images from capacitance measurements. The initial image of the CGAN model is constructed from the capacitance measurement. To our knowledge, this is the first time to represent the capacitance measurements in an image form. We have created a new massive ECT dataset of 320K synthetic image measurements pairs for training, and testing the proposed model. The feasibility and generalization ability of the proposed CGAN-ECT model are evaluated using testing dataset, contaminated data and flow patterns that are not exposed to the model during the training phase. The evaluation results prove that the proposed CGAN-ECT model can efficiently create more accurate ECT images than traditional and other deep learning-based image reconstruction algorithms. CGAN-ECT achieved an average image correlation coefficient of more than 99.3% and an average relative image error about 0.07.
翻译:由于在若干工业领域电气能力地形学应用的迅速增长,迫切需要从原始能力测量中制定高质量的、但又快速的图像重建方法。深层次的学习,作为复杂功能的有效非线性绘图工具,在许多领域,包括电磁摄影学,已经进入了病毒传播。在本文中,我们提出一个条件性基因对流网络模型,用于从能力测量中重建电磁图像。CGAN模型的最初图像是从能力测量中构建的。据我们所知,这是首次以图像形式代表能力测量的图像重建方法。我们创建了一个新的大型的ECT数据集,包括320K合成图像测量配对,用于培训,并测试拟议的模型。正在使用测试数据集、受污染的数据和在培训阶段未接触到模型的流模式来评估拟议的CGAN模型的可行性和普及能力。评价结果证明,拟议的CGAN模型能够有效地创造比传统和低比其他平均的C-C-C-C-C-C-C-C-CRECT-imal-imationalimational imational 10 重建一个比传统和低比平均的C-C-C-C-CAL-CAL-CAL-C-C-G-C-M-C-C-C-C-C-C-C-C-C-C-CAAR3平均的图像/ASG-C-C-CAR-CAR-CAR-C-C-C-CAR-AAR-C-C-AAR-AAR3的模型有效)。