Xie Hui, Rong Weibin, Sun Lining
Robotic Institute, Harbin Institute of Technology, Harbin 150001, Heilongjiang, People's Republic of China.
Microsc Res Tech. 2007 Nov;70(11):987-95. doi: 10.1002/jemt.20506.
Microscopy imaging can not achieve both high resolution and wide image space simultaneously. Autofocusing is of fundamental importance to automated micromanipulation. This article proposes a new wavelet-based focus measure, which is defined as a ratio of high frequency coefficients and low frequency coefficients. 8 series of 49 microscope images each acquired under five magnifications are used to comprehensively compare the performance of our focus measure with the classic and popular focus measures, including Normalized Variance, Entropy, Energy Laplace and wavelet-based high frequency focus measures. The robustness of these focus measures is evaluated using noisy image sequences corrupted by Gaussian white noise with standard deviations (STD) 5 and 15. An evaluation methodology is proposed, based on which these 5 focus measures are ranked. Experimental results show that the proposed focus measure can provide significantly the best overall performance and robustness. This focus measure can be widely applied to the automated biological and biomedical applications.
显微成像无法同时实现高分辨率和宽图像空间。自动聚焦对于自动化显微操作至关重要。本文提出了一种基于小波的新聚焦度量,它被定义为高频系数与低频系数之比。使用8组、每组49张在五种放大倍数下采集的显微镜图像,将我们的聚焦度量的性能与经典且常用的聚焦度量进行全面比较,这些经典聚焦度量包括归一化方差、熵、能量拉普拉斯以及基于小波的高频聚焦度量。使用标准差(STD)为5和15的高斯白噪声破坏的噪声图像序列来评估这些聚焦度量的鲁棒性。提出了一种评估方法,基于该方法对这5种聚焦度量进行排名。实验结果表明,所提出的聚焦度量能够显著提供最佳的整体性能和鲁棒性。这种聚焦度量可广泛应用于自动化生物和生物医学应用中。