This paper presents a statistical model for stationary ergodic point processes, estimated from a single realization observed in a square window. With existing approaches in stochastic geometry, it is very difficult to model processes with complex geometries formed by a large number of particles. Inspired by recent works on gradient descent algorithms for sampling maximum-entropy models, we describe a model that allows for fast sampling of new configurations reproducing the statistics of the given observation. Starting from an initial random configuration, its particles are moved according to the gradient of an energy, in order to match a set of prescribed moments (functionals). Our moments are defined via a phase harmonic operator on the wavelet transform of point patterns. They allow one to capture multi-scale interactions between the particles, while controlling explicitly the number of moments by the scales of the structures to model. We present numerical experiments on point processes with various geometric structures, and assess the quality of the model by spectral and topological data analysis.
翻译:本文介绍了一个固定的垂直点过程的统计模型,该模型是从一个在平方窗口中观测到的单一的实现中估算出来的。利用现有的随机几何测量方法,很难模拟由大量粒子组成的复杂几何过程。在最近为采样最大食植物模型而进行的梯度下行算法研究的启发下,我们描述了一个模型,以便能够快速抽样新的配置,复制给定观测的统计。从最初的随机配置开始,其粒子根据能量的梯度移动,以便匹配一套规定的时间(功能)。我们的时间是通过波粒变形时的相波调操作器来定义的。它们允许一种过程捕捉到粒子之间的多尺度相互作用,同时明确控制按结构的尺度来模型的瞬间数。我们用光谱和表层数据分析来对各种几点过程进行数字实验,并评估模型的质量。