Simulation-Training-Based Deep Learning Approach to Microscopic Ghost Imaging

IF 3.7 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY
Binyu Li, Yueshu Feng, Cheng Zhou, Siyi Hu, Chunwa Jiang, Feng Yang, Lijun Song, Xue Hou
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引用次数: 0

Abstract

Herein, deep learning-ghost imaging (DLGI) based on a digital micromirror device is realized to avoid the difficulties of a charge-coupled device (CCD) scientific camera being unable to obtain the sample images in extremely weak illumination conditions and to solve the problem of the inverse relationship between imaging quality and imaging time in practical applications. Deep learning for computational ghost imaging typically requires the collection of a large set of labeled experimental data to train a neural network. Herein, we demonstrate that a practically usable neural network can be prepared based on the simulation results. The acquisition results of the CCD scientific camera and the simulation results with low sampling are used as the training set (1000 observations) and we can complete the data acquisition process within one hour. The results show that the proposed DLGI method can be used to significantly improve the quality of the reconstructed images when the sampling rate is 60%. This method also reduces the imaging time and the memory usage, while simultaneously improving the imaging quality. The imaging results of the proposed DLGI method have great significance for application in clinical diagnosis.

Abstract Image

基于模拟训练的微观鬼影成像深度学习方法
为了避免电荷耦合器件(CCD)科学相机在极弱光照条件下无法获得样品图像的困难,解决实际应用中成像质量与成像时间呈反比关系的问题,实现了基于数字微镜器件的深度学习-幽灵成像(DLGI)。用于计算鬼影成像的深度学习通常需要收集大量标记实验数据来训练神经网络。在此,我们证明了基于仿真结果可以制备出实际可用的神经网络。采用CCD科学相机采集结果和低采样模拟结果作为训练集(1000个观测值),在1小时内完成数据采集过程。结果表明,当采样率为60%时,所提出的DLGI方法可以显著提高重构图像的质量。该方法还减少了成像时间和内存的使用,同时提高了成像质量。该方法的成像结果对临床诊断具有重要意义。
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