A Sensorless Adaptive Optics Control System for Microscopy Based on Extreme Learning Machine

Yuncheng Jin, Zhaowei Cheng, Zhihong Chen, Chao Chen, Xinyu Jin, Bin Sun
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Abstract

Imaging in vivo is of great significance in the field of biological research. Since the 21st century, adaptive optics (AO) technology has made great progress in improving the imaging quality of biological fluorescence microscopy. AO system analyzes the aberrations and outputting control parameters to the controller and then controls the modulator to compensate distortion. Nevertheless, the complicated and time-consuming conventional systems will not be applicable to deep imaging in vivo. With the development of machine learning, the convolutional neural network (CNN) has been introduced to build a rapid parametric prediction model. However, due to the nonnegligible distribution discrepancy of biological tissue, it is impossible to generalize the CNN model, which must be trained separately for different samples. To circumvent heavy calculation and long training time of CNN, in this paper, a wavefront reconstruction and correction control module based on the Extreme Learning Machine (ELM) is designed for image analysis and calculate control parameters for the spatial light modulators controller. To further demonstrate the effectiveness of our method, we compare the time consumption of model training and prediction accuracy of the trained model between ELM and CNN. The experimental results show that our proposed method improves the training speed by 13.4 times compared with CNN and achieves 87% accuracy which is the same level as CNN. The proposed sensorless AO system is of great significance for real-time in-vivo microscopy imaging.
基于极限学习机的显微镜无传感器自适应光学控制系统
活体成像在生物学研究领域具有重要意义。21世纪以来,自适应光学(AO)技术在提高生物荧光显微镜成像质量方面取得了很大进展。AO系统对畸变进行分析,并向控制器输出控制参数,控制调制器对畸变进行补偿。然而,复杂且耗时的传统系统不适用于体内深部成像。随着机器学习的发展,引入卷积神经网络(CNN)来建立快速的参数预测模型。然而,由于生物组织的分布差异不可忽略,CNN模型无法泛化,必须针对不同的样本分别进行训练。为了避免CNN计算量大、训练时间长,本文设计了基于极限学习机(Extreme Learning Machine, ELM)的波前重构校正控制模块,对图像进行分析,并计算空间光调制器控制器的控制参数。为了进一步证明我们方法的有效性,我们比较了ELM和CNN的模型训练时间和训练模型的预测精度。实验结果表明,该方法的训练速度比CNN提高了13.4倍,准确率达到87%,与CNN相当。所提出的无传感器AO系统对实时活体显微成像具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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