Hechenblaikner Gerald
J Opt Soc Am A Opt Image Sci Vis. 2024 Feb 1;41(2):195-206. doi: 10.1364/JOSAA.507588.
Systematic errors affecting center-of-gravity (CoG) measurements may occur from coarse sampling of the point-spread-function (PSF) or from signal truncation at the boundaries of the region-of-interest (ROI). For small ROI and PSF widths, these effects are shown to become dominant, but this can be mitigated by introducing novel unbiased estimators that are largely free of systematic error and perform particularly well for low photon numbers. Analytical expressions for the estimator variances, comprising contributions from photon shot noise, random pixel noise, and residual systematic error, are derived and verified by Monte Carlo simulations. The accuracy and computational speed of the unbiased estimators are compared to those of other common estimators, including iteratively weighted CoG, thresholded CoG, iterative least squares fitting, and two-dimensional Gaussian regression. Each estimator is optimized with respect to ROI size and PSF radius and its error compared to the theoretical limit defined by the Cramer Rao lower bound (CRLB). The unbiased estimator with full systematic error correction operating on a small ROI [3×3] emerges as one of the most accurate estimators while requiring significantly less computing effort than alternative algorithms.
影响重心(CoG)测量的系统误差可能源于点扩散函数(PSF)的粗略采样或感兴趣区域(ROI)边界处的信号截断。对于较小的ROI和PSF宽度,这些影响被证明会变得很显著,但可以通过引入新型无偏估计器来减轻这种情况,这些估计器在很大程度上没有系统误差,并且在低光子数情况下表现特别出色。推导了估计器方差的解析表达式,其中包括光子散粒噪声、随机像素噪声和残余系统误差的贡献,并通过蒙特卡罗模拟进行了验证。将无偏估计器的准确性和计算速度与其他常见估计器进行了比较,包括迭代加权CoG、阈值化CoG、迭代最小二乘拟合和二维高斯回归。每个估计器都针对ROI大小和PSF半径进行了优化,并将其误差与由克拉美罗下界(CRLB)定义的理论极限进行了比较。在小ROI [3×3]上运行的具有完全系统误差校正的无偏估计器成为最准确的估计器之一,同时所需的计算量比替代算法少得多。