Deep learning-based image reconstruction methods have achieved remarkable success in phase recovery and holographic imaging. However, the generalization of their image reconstruction performance to new types of samples never seen by the network remains a challenge. Here we introduce a deep learning framework, termed Fourier Imager Network (FIN), that can perform end-to-end phase recovery and image reconstruction from raw holograms of new types of samples, exhibiting unprecedented success in external generalization. FIN architecture is based on spatial Fourier transform modules that process the spatial frequencies of its inputs using learnable filters and a global receptive field. Compared with existing convolutional deep neural networks used for hologram reconstruction, FIN exhibits superior generalization to new types of samples, while also being much faster in its image inference speed, completing the hologram reconstruction task in ~0.04 s per 1 mm^2 of the sample area. We experimentally validated the performance of FIN by training it using human lung tissue samples and blindly testing it on human prostate, salivary gland tissue and Pap smear samples, proving its superior external generalization and image reconstruction speed. Beyond holographic microscopy and quantitative phase imaging, FIN and the underlying neural network architecture might open up various new opportunities to design broadly generalizable deep learning models in computational imaging and machine vision fields.
翻译:深层学习的图像重建方法在阶段恢复和全息成像方面取得了显著的成功,然而,将图像重建性能推广到网络从未见过的新型样本,这仍然是一个挑战。在这里,我们引入了一个深层次学习框架,称为Fourier成像器网络(FIN),可以从新型样本的原始全息图进行端到端的恢复和图像重建,在外部一般化方面表现出前所未有的成功。FIN的架构基于空间四面形变换模块,该模块利用可学习的过滤器和全球可接受场处理其投入的空间频率。与用于全息图重建的现有革命性深层神经网络相比,FIN展示了对新类型样本的高级超深层神经网络的普及性,同时在图像推断速度上也快得多,完成了全息图重建任务,在样本区域每1毫米2英寸0.04秒左右完成。我们试验性地验证了FIN的绩效,方法是通过培训它使用人类肺组织样本和盲目测试其投入的空间频率,在人类前列腺、盐状腺组织和涂片样品上进行处理。证明,证明了它的高级外部一般和图像重建结构结构,在广泛的成像学阶段学习中,并学习各种成像学成像学阶段可能学习。