基于圆柱隐马尔可夫模型的海流场分割:一种复合似然方法

Segmentation of Sea Current Fields by Cylindrical Hidden Markov Models: A Composite Likelihood Approach

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2017
被引 34 · 同刊同年前 9%
ABS 3

中文导读

针对海流循环中的分割问题,提出一种圆柱隐马尔可夫随机场模型,用于分析角度和强度的空间双变量序列,通过复合似然方法实现参数估计,并在那不勒斯湾海面数据上识别有意义的环流模式。

Abstract

Summary Motivated by segmentation issues in studies of sea current circulation, we describe a hidden Markov random field for the analysis of spatial cylindrical data, i.e. bivariate spatial series of angles and intensities. The model is based on a mixture of cylindrical densities, whose parameters vary across space according to a latent Markov field. It enables segmentation of the data within a finite number of latent classes that represent the conditional distributions of the data under specific environmental conditions, simultaneously accounting for unobserved heterogeneity and spatial auto-correlation. Further, it parsimoniously accommodates specific features of environmental cylindrical data, such as circular–linear correlation, multimodality and skewness. Because of the numerical intractability of the likelihood function, estimation of the parameters is based on composite likelihood methods and essentially reduces to a computationally efficient expectation–maximization algorithm that iteratively alternates the maximization of a weighted composite likelihood function with weights updating. These methods are tested on simulations and exploited to segment the sea surface of the Gulf of Naples by means of meaningful circulation regimes.

海洋学空间统计图像分割隐马尔可夫模型复合似然