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Generative Data Augmentation for Learning-based Electrical Impedance Tomography via Variational Autoencoder

机译:通过变化AutiaceCoder的基于学习的电阻断层扫描的生成数据增强

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Electrical Impedance Tomography (EIT) owns lots of potential industrial and biomedical applications due to its high temporal resolution and non-intrusive advantages. To improve the spatial resolution of EIT, a neural network-based image reconstruction method is proposed. Compared with the traditional neural network-based image reconstruction methods, the proposed method is constructed by the variational auto-encoder. To improve the generalization ability of the proposed network, a data generation strategy is proposed. Artificial conductivity images can be automatically generated following the same manifold of the preset image set. Numerical results proved that the proposed generation model can generate a desirable dataset for significantly improving the accuracy and generalization of the neural network.
机译:由于其高颞分辨率和非侵入性优势,电阻断层扫描(EIT)拥有大量潜在的工业和生物医学应用。 为了提高EIT的空间分辨率,提出了一种基于神经网络的图像重建方法。 与传统的基于神经网络的图像重建方法相比,所提出的方法由变形自动编码器构成。 为了提高所提出的网络的泛化能力,提出了一种数据生成策略。 可以在预设图像集的相同歧管之后自动生成人工导电图像。 数值结果证明,所提出的生成模型可以产生期望的数据集,用于显着提高神经网络的准确性和泛化。

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