基于大数据驱动的U-Net电容图像重构算法

Xinmeng Yang, Chaojie Zhao, Bing Chen, Maomao Zhang, Yi Li
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引用次数: 5

摘要

本文首次在电容层析成像(ECT)领域提出了一种将全连接神经网络与U-Net结构相结合的高效电容图像重建方法。由于电痉挛图像重建的目标也可以看作是一个图像分割问题,而U-Net结构就是为这个问题而设计的。本文采用基于卷积神经网络(CNN)的U-Net结构来提高电痉挛重建图像的质量。首先,通过COMSOL multiphysics和MATLAB的联合仿真,生成了约6万个具有不同模式的数据样本;然后利用全连接神经网络(FC)对这些样本进行预处理,得到精度不够高的初始重构结果。最后,利用U-Net结构对预训练后的图像进行进一步处理,输出高速度、高质量的重建图像。验证了U-Net结构的鲁棒性、通用性和实用性。如第2节所述,它说明了U-Net结构由于其反编码器结构而与ECT图像重建问题相匹配。初步结果表明,U-Net网络获得的图像重建效果明显优于全连接神经网络算法、传统的线性反投影(LBP)算法和Landweber迭代法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Big Data driven U-Net based Electrical Capacitance Image Reconstruction Algorithm
An efficiency electrical capacitance image reconstruction method which combines fully connected neural network and U-Net structure, is put forward for the first time in electrical capacitance tomography (ECT) area in this paper. Since the target of ECT image reconstruction can also be considered as an image segmentation problem-which U-Net structure is designed for. In this paper, the Convolutional Neural Network (CNN) based U-Net structure is used to improve the quality of images reconstructed by ECT. Firstly, about 60,000 data samples with different patterns are generated by the cosimulation of COMSOL Multiphysic and MATLAB. Then a fully connected neural network (FC) is used to pre-process these samples to get initial reconstructions which are not accurate enough. Finally, U-Net structure is used to further process those pre-trained images and will output reconstructed images with both high speed and quality. The robustness, generalization and practicability ability of the U-Net structure is proved. As stated in Section2, it illustrates that U-Net structure matches properly with ECT image reconstruction problems due to its antoencoder strcture. The preliminary results show that the image reconstruction results obtained by the U-Net network are much better than that of the fully connected neural network algorithm, the traditional Linear back projection (LBP) algorithm and the Landweber iteration method.
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