Jeon Hosung, Jung Minwoo, Lee Gunhee, Hahn Joonku
School of Electronic and Electrical Engineering, Kyungpook National University, Daegu 41566, Republic of Korea.
Sensors (Basel). 2023 Nov 20;23(22):9278. doi: 10.3390/s23229278.
Digital holographic microscopy (DHM) is a valuable technique for investigating the optical properties of samples through the measurement of intensity and phase of diffracted beams. However, DHMs are constrained by Lagrange invariance, compromising the spatial bandwidth product (SBP) which relates resolution and field of view. Synthetic aperture DHM (SA-DHM) was introduced to overcome this limitation, but it faces significant challenges such as aberrations in synthesizing the optical information corresponding to the steering angle of incident wave. This paper proposes a novel approach utilizing deep neural networks (DNNs) for compensating aberrations in SA-DHM, extending the compensation scope beyond the numerical aperture (NA) of the objective lens. The method involves training a DNN from diffraction patterns and Zernike coefficients through a circular aperture, enabling effective aberration compensation in the illumination beam. This method makes it possible to estimate aberration coefficients from the only part of the diffracted beam cutoff by the circular aperture mask. With the proposed technique, the simulation results present improved resolution and quality of sample images. The integration of deep neural networks with SA-DHM holds promise for advancing microscopy capabilities and overcoming existing limitations.
数字全息显微镜(DHM)是一种通过测量衍射光束的强度和相位来研究样品光学特性的重要技术。然而,数字全息显微镜受到拉格朗日不变性的限制,这会影响与分辨率和视场相关的空间带宽积(SBP)。合成孔径数字全息显微镜(SA-DHM)的引入是为了克服这一限制,但它面临着重大挑战,比如在合成与入射波转向角对应的光学信息时会出现像差。本文提出了一种利用深度神经网络(DNN)来补偿合成孔径数字全息显微镜中像差的新方法,将补偿范围扩展到物镜数值孔径(NA)之外。该方法包括通过一个圆孔从衍射图案和泽尼克系数训练一个深度神经网络,从而在照明光束中实现有效的像差补偿。这种方法使得仅从被圆孔光阑截断的衍射光束部分来估计像差系数成为可能。利用所提出的技术,模拟结果显示样品图像的分辨率和质量得到了提高。深度神经网络与合成孔径数字全息显微镜的结合有望提升显微镜性能并克服现有局限性。