This paper introduces a generative model for planar point processes in a square window, built upon a single realization of a stationary, ergodic point process observed in this window. Inspired by recent advances in gradient descent methods for maximum entropy models, we propose a method to generate similar point patterns by jointly moving particles of an initial Poisson configuration towards a target counting measure. The target measure is generated via a deterministic gradient descent algorithm, so as to match a set of statistics of the given, observed realization. Our statistics are estimators of the multi-scale wavelet phase harmonic covariance, recently proposed in image modeling. They allow one to capture geometric structures through multi-scale interactions between wavelet coefficients. Both our statistics and the gradient descent algorithm scale better with the number of observed points than the classical k-nearest neighbour distances previously used in generative models for point processes, based on the rejection sampling or simulated-annealing. The overall quality of our model is evaluated on point processes with various geometric structures through spectral and topological data analysis.
翻译:本文介绍了一个方形窗口中平点过程的基因模型,该模型以在这一窗口中观察到的固定、垂直点过程的单一实现为基础。受最近最大恒星模型梯度下降方法的进展的启发,我们建议了一种方法,通过将初始Poisson配置的粒子联合移动到一个目标计数测量中来产生类似点模式。目标量是通过确定性梯度下降算法生成的,以便匹配一组既定的、观察到的实现统计数据。我们的统计数据是图象建模中最近提议的多尺度波盘相位相位相位变化的估测器。它们允许人们通过波子系数之间的多尺度相互作用来捕捉几何结构。我们的统计数据和梯度下降算算算法都比以前用于点谱模型的典型 k- 近距离的典型相邻点数要好。我们模型的总体质量是通过光谱和地形数据分析,通过不同几点结构来评估点结构的全质量。