探索性光谱分析在三维空间点模式

Edmary Silveira Barreto Araújo, J. D. Scalon, L. S. Batista
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引用次数: 2

摘要

空间点模式是由某种形式的随机机制产生的不规则地位于有界区域(2D)或空间(3D)内的点的集合。点图案的实例包括森林中树木的位置、某一地区的疾病病例的位置或复合材料微观部分中的颗粒位置。空间点模式分析主要用于确定地点空间依赖结构的不存在(完全的空间随机性)或存在(规律性和聚类性)。基于空间域的方法被广泛使用,而在频域(频谱分析)的方法仍为大多数研究人员所知。光谱分析是研究空间点模式的强大工具,因为它不假设数据的任何结构特征(例如各向同性),并且只使用自协方差函数及其傅里叶变换。目前已有一些基于光谱框架的二维空间点图分析方法。目前还没有这样的方法可用于三维情况,因此,这项工作的目的是开发基于光谱框架的新方法,用于分析三维点模式。重点是将周期图结构与可能产生三维观测模式的随机过程类型联系起来。结果表明,基于光谱分析的方法能够识别三种典型的三维点过程模式,并且可以与空间域的分析同时使用,以更好地表征空间点模式。
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EXPLORATORY SPECTRAL ANALYSIS IN THREE-DIMENSIONAL SPATIAL POINT PATTERNS
A spatial point pattern is a collection of points irregularly located within a bounded area (2D) or space (3D) that have been generated by some form of stochastic mechanism. Examples of point patterns include locations of trees in a forest, of cases of a disease in a region, or of particles in a microscopic section of a composite material. Spatial Point pattern analysis is used mostly to determine the absence (completely spatial randomness) or presence (regularity and clustering) of spatial dependence structure of the locations. Methods based on the space domain are widely used for this purpose, while methods conducted in the frequency domain (spectral analysis) are still unknown to most researchers. Spectral analysis is a powerful tool to investigate spatial point patterns, since it does not assume any structural characteristics of the data (ex. isotropy), and uses only the autocovariance function, and its Fourier transform. There are some methods based on the spectral frameworks for analyzing 2D spatial point patterns. There is no such methods available for the 3D situation and, therefore, the aim of this work is to develop new methods based on spectral framework for the analysis of three-dimensional point patterns. The emphasis is on relating periodogram structure to the type of stochastic process which could have generated a 3D observed pattern. The results show that the methods based on spectral analysis developed in this work are able to identify patterns of three typical three-dimensional point processes, and can be used, concurrently, with analyzes in the space domain for a better characterization of spatial point patterns.
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来源期刊
Revista Brasileira de Biometria
Revista Brasileira de Biometria Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
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