Chai Changchun, Chen Cheng, Liu Xiaojun, Lei ZiLi
Opt Express. 2021 Feb 1;29(3):4010-4021. doi: 10.1364/OE.415210.
Optically-sectioned structured illumination microscopy (OS-SIM) is broadly used for biological imaging and engineering surface measurement owing to its simple, low-cost, scanning-free experimental setup and excellent optical sectioning capability. However, the efficiency of current optically-sectioned methods in OS-SIM is yet limited for surface measurement because a set of wide-field images under uniform or structured illumination are needed to derive an optical section at each scanning height. In this paper, a deep-learning-based one-shot optically-sectioned method, called Deep-OS-SIM, is proposed to improve the efficiency of OS-SIM for surface measurement. Specifically, we develop a convolutional neural network (CNN) to learn the statistical invariance of optical sectioning across structured illumination images. By taking full advantage of the high entropy properties of structured illumination images to train the CNN, fast convergence and low training error are achieved in our method even for low-textured surfaces. The well-trained CNN is then applied to a plane mirror for testing, demonstrating the ability of the method to reconstruct high-quality optical sectioning from only one instead of two or three raw structured illumination frames. Further measurement experiments on a standard step and milled surface show that the proposed method has similar accuracy to OS-SIM techniques but with higher imaging speed.
光学切片结构照明显微镜(OS-SIM)因其简单、低成本、无需扫描的实验装置以及出色的光学切片能力,被广泛应用于生物成像和工程表面测量。然而,由于在每个扫描高度都需要一组均匀或结构照明下的宽场图像来获取光学切片,目前OS-SIM中的光学切片方法在表面测量方面的效率仍然有限。在本文中,提出了一种基于深度学习的单次光学切片方法,称为深度OS-SIM,以提高OS-SIM在表面测量中的效率。具体而言,我们开发了一种卷积神经网络(CNN)来学习跨结构照明图像的光学切片统计不变性。通过充分利用结构照明图像的高熵特性来训练CNN,即使对于低纹理表面,我们的方法也能实现快速收敛和低训练误差。然后将训练良好的CNN应用于平面镜进行测试,证明了该方法能够仅从一帧而不是两帧或三帧原始结构照明帧重建高质量的光学切片。在标准台阶和铣削表面上的进一步测量实验表明,该方法与OS-SIM技术具有相似的精度,但成像速度更高。