Luo Haixin, Xu Jie, Zhong Liyun, Lu Xiaoxu, Tian Jindong
Opt Express. 2022 Nov 7;30(23):41724-41740. doi: 10.1364/OE.472658.
Digital holography based on lensless imaging is a developing method adopted in microscopy and micro-scale measurement. To retrieve complex-amplitude on the sample surface, multiple images are required for common reconstruction methods. A promising single-shot approach points to deep learning, which has been used in lensless imaging but suffering from the unsatisfied generalization ability and stability. Here, we propose and construct a diffraction network (Diff-Net) to connect diffraction images at different distances, which breaks through the limitations of physical devices. The Diff-Net based single-shot holography is robust as there is no practical errors between the multiple images. An iterative complex-amplitude retrieval approach based on light transfer function through the Diff-Net generated multiple images is used for complex-amplitude recovery. This process indicates a hybrid-driven method including both physical model and deep learning, and the experimental results demonstrate that the Diff-Net possesses qualified generalization ability for samples with significantly different morphologies.
基于无透镜成像的数字全息术是一种在显微镜和微尺度测量中采用的发展中的方法。对于常见的重建方法,需要多个图像来检索样品表面的复振幅。一种有前景的单次拍摄方法指向深度学习,其已被用于无透镜成像,但存在泛化能力和稳定性不令人满意的问题。在这里,我们提出并构建了一个衍射网络(Diff-Net)来连接不同距离处的衍射图像,这突破了物理设备的限制。基于Diff-Net的单次全息术具有鲁棒性,因为多个图像之间不存在实际误差。一种基于通过Diff-Net生成的多个图像的光传递函数的迭代复振幅检索方法用于复振幅恢复。这个过程表明了一种包括物理模型和深度学习的混合驱动方法,实验结果表明Diff-Net对于具有显著不同形态的样品具有合格的泛化能力。