探索球面数据结构的尺度空间方法

A scale space approach for exploring structure in spherical data

Computational Statistics and Data Analysis · 2018
被引 9
ABS 3

中文导读

提出SphereSiZer方法,用于分析球面上的方向数据,通过平滑和自助法找出概率密度函数的显著梯度,并用平面图展示,帮助识别婴儿头骨变形或地震分布等模式。

Abstract

A novel scale space approach, SphereSiZer, is proposed for exploring structure in spherical data, that is, directional data on the unit sphere of the three-dimensional Euclidean space. The method finds statistically significant gradients of the smooths of the probability density function underlying the observed data. Bootstrap is used to establish significance and inference is summarized with planar maps of contour plots of smooths of the data, overlaid with arrows that indicate the directions and magnitudes of the significant gradients. An effective way to explore such maps is a movie where each frame corresponds to a fixed level of smoothing, that is, a particular spatial scale on the sphere. The SphereSiZer is demonstrated using simulated data as well as two real-data examples. The first example examines the distribution of infant head normal vector directions. The presence of local maxima in the normal vector distribution may indicate head deformity, such as severe flatness or asymmetry. The second example considers the distribution of earthquakes in the Northern Hemisphere.

统计学数据分析空间统计图像处理