Komuro Koshi, Nomura Takanori, Barbastathis George
Appl Opt. 2020 Apr 10;59(11):3376-3382. doi: 10.1364/AO.390256.
Deep-learning-based single-pixel phase imaging is proposed. The method, termed deep ghost phase imaging (DGPI), succeeds the advantages of computational ghost imaging, i.e., has the phase imaging quality with high signal-to-noise ratio derived from the Fellgett's multiplex advantage and the point-like detection of diffracted light from objects. A deep convolutional neural network is learned to output a desired phase distribution from an input of a defocused intensity distribution reconstructed by the single-pixel imaging theory. Compared to the conventional interferometric and transport-of-intensity approaches to single-pixel phase imaging, the DGPI requires neither additional intensity measurements nor explicit approximations. The effects of defocus distance and light level are investigated by numerical simulation and an optical experiment confirms the feasibility of the DGPI.
提出了基于深度学习的单像素相位成像方法。该方法称为深度鬼成像(DGPI),继承了计算鬼成像的优点,即具有源自费尔盖特多重优势的高信噪比相位成像质量以及对物体衍射光的点状检测。通过学习一个深度卷积神经网络,从单像素成像理论重建的散焦强度分布输入中输出所需的相位分布。与传统的干涉测量和强度传输单像素相位成像方法相比,DGPI既不需要额外的强度测量,也不需要显式近似。通过数值模拟研究了散焦距离和光强的影响,光学实验证实了DGPI的可行性。