A residual-based deep learning approach for ghost imaging

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作者
Tong Bian
Yuxuan Yi
Jiale Hu
Yin Zhang
Yide Wang
Lu Gao
机构
[1] China University of Geosciences,School of Science
[2] China University of Geosciences,School of Information Engineering
[3] Wuhan University,School of Remote Sensing and Information Engineering
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摘要
Ghost imaging using deep learning (GIDL) is a kind of computational quantum imaging method devised to improve the imaging efficiency. However, among most proposals of GIDL so far, the same set of random patterns were used in both the training and test set, leading to a decrease of the generalization ability of networks. Thus, the GIDL technique can only reconstruct the profile of the image of the object, losing most of the details. Here we optimize the simulation algorithm of ghost imaging (GI) by introducing the concept of “batch” into the pre-processing stage. It can significantly reduce the data acquisition time and create reliable simulation data. The generalization ability of GIDL has been appreciably enhanced. Furthermore, we develop a residual-based framework for the GI system, namely the double residual U-Net (DRU-Net). The imaging quality of GI has been tripled in the evaluation of the structural similarity index by our proposed DRU-Net.
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