Zhao Zhizhen, Liu Lydia T, Singer Amit
IEEE Trans Image Process. 2020 Apr 27. doi: 10.1109/TIP.2020.2988139.
In photon-limited imaging, the pixel intensities are affected by photon count noise. Many applications require an accurate estimation of the covariance of the underlying 2-D clean images. For example, in X-ray free electron laser (XFEL) single molecule imaging, the covariance matrix of 2-D diffraction images is used to reconstruct the 3-D molecular structure. Accurate estimation of the covariance from low-photon-count images must take into account that pixel intensities are Poisson distributed, hence the classical sample covariance estimator is highly biased. Moreover, in single molecule imaging, including in-plane rotated copies of all images could further improve the accuracy of covariance estimation. In this paper we introduce an efficient and accurate algorithm for covariance matrix estimation of count noise 2-D images, including their uniform planar rotations and possibly reflections. Our procedure, steerable ePCA, combines in a novel way two recently introduced innovations. The first is a methodology for principal component analysis (PCA) for Poisson distributions, and more generally, exponential family distributions, called ePCA. The second is steerable PCA, a fast and accurate procedure for including all planar rotations when performing PCA. The resulting principal components are invariant to the rotation and reflection of the input images. We demonstrate the efficiency and accuracy of steerable ePCA in numerical experiments involving simulated XFEL datasets and rotated face images from Yale Face Database B.
在光子受限成像中,像素强度会受到光子计数噪声的影响。许多应用需要准确估计潜在二维清晰图像的协方差。例如,在X射线自由电子激光(XFEL)单分子成像中,二维衍射图像的协方差矩阵用于重建三维分子结构。从低光子计数图像中准确估计协方差必须考虑到像素强度服从泊松分布,因此经典的样本协方差估计器存在高度偏差。此外,在单分子成像中,纳入所有图像的平面旋转副本可以进一步提高协方差估计的准确性。在本文中,我们介绍了一种高效且准确的算法,用于估计计数噪声二维图像的协方差矩阵,包括其均匀平面旋转以及可能的反射。我们的方法,即可控ePCA,以一种新颖的方式结合了最近引入的两项创新。第一项是用于泊松分布以及更一般的指数族分布的主成分分析(PCA)方法,称为ePCA。第二项是可控PCA,这是一种在执行PCA时纳入所有平面旋转的快速且准确的方法。所得的主成分对于输入图像的旋转和反射是不变的。我们在涉及模拟XFEL数据集和来自耶鲁人脸数据库B的旋转人脸图像的数值实验中展示了可控ePCA的效率和准确性。