Yan Zhidan, Chen Guo, Xu Wenyi, Yang Chunmei, Lu Yang
Appl Opt. 2018 Nov 20;57(33):9714-9721. doi: 10.1364/AO.57.009714.
As a key component in optical microscopy imaging systems, autofocus technology has a significant effect on imaging quality. In this paper, an optical microscopy autofocus method that includes a wavelet denoising algorithm based on a power threshold function and a Brenner image quality evaluation algorithm is presented. Experimental results show that the power threshold function wavelet denoising algorithm, which can be adopted to obtain more realistic optical images, is superior to the traditional soft, hard, hyperbolic, and exponential threshold functions in terms of peak signal-to-noise ratio, signal-to-noise ratio, mean squared error, and histogram indicators; moreover, compared to the Roberts, sum modulus difference (SMD), and energy gradient functions, the Brenner image quality evaluation algorithm can be used to quickly and accurately lock onto the focal plane. By integrating and applying these two core algorithms in the autofocus image acquisition system of a microscope, the image sharpness and focusing quality are greatly improved, which benefits the further evaluation of images.
作为光学显微镜成像系统的关键组成部分,自动对焦技术对成像质量有显著影响。本文提出了一种光学显微镜自动对焦方法,该方法包括基于功率阈值函数的小波去噪算法和布伦纳图像质量评估算法。实验结果表明,采用功率阈值函数小波去噪算法可获得更逼真的光学图像,在峰值信噪比、信噪比、均方误差和直方图指标方面优于传统的软、硬、双曲和指数阈值函数;此外,与罗伯茨、和模差(SMD)和能量梯度函数相比,布伦纳图像质量评估算法可用于快速准确地锁定焦平面。通过在显微镜自动对焦图像采集系统中集成和应用这两种核心算法,图像清晰度和对焦质量得到了极大提高,有利于对图像进行进一步评估。