Lai X, Lin Zhiping, Ward E S, Ober R J
Center for Immunology, University of Texas Southwestern Medical Center, Dallas, TX 75390, USA.
J Microsc. 2005 Jan;217(Pt 1):93-108. doi: 10.1111/j.0022-2720.2005.01440.x.
The point spread function (PSF) is of central importance in the image restoration of three-dimensional image sets acquired by an epifluorescent microscope. Even though it is well known that an experimental PSF is typically more accurate than a theoretical one, the noise content of the experimental PSF is often an obstacle to its use in deconvolution algorithms. In this paper we apply a recently introduced noise suppression method to achieve an effective noise reduction in experimental PSFs. We show with both simulated and experimental three-dimensional image sets that a PSF that is smoothed with this method leads to a significant improvement in the performance of deconvolution algorithms, such as the regularized least-squares algorithm and the accelerated Richardson-Lucy algorithm.
点扩散函数(PSF)在通过落射荧光显微镜获取的三维图像集的图像恢复中至关重要。尽管众所周知,实验性PSF通常比理论性PSF更准确,但实验性PSF的噪声含量常常阻碍其在反卷积算法中的应用。在本文中,我们应用一种最近引入的噪声抑制方法,以实现实验性PSF的有效降噪。我们通过模拟和实验三维图像集表明,用此方法平滑处理后的PSF能显著提高反卷积算法(如正则化最小二乘算法和加速理查森- Lucy算法)的性能。