计算机科学 ›› 2021, Vol. 48 ›› Issue (11A): 644-647.doi: 10.11896/jsjkx.210200025

• 交叉& 应用 • 上一篇    下一篇

基于改进Marching Tetrahedra算法的锥体气象数据三维重建

马俊成, 蒋慕蓉, 房素芹   

  1. 云南大学信息学院 昆明650500
  • 出版日期:2021-11-10 发布日期:2021-11-12
  • 通讯作者: 蒋慕蓉(jiangmr@ynu.edu.cn)
  • 作者简介:ma.jc@foxmail.com

Three-dimensional Reconstruction of Cone Meteorological Data Based on Improved MarchingTetrahedra Algorithm

MA Jun-cheng, JIANG Mu-rong, FANG Su-qin   

  1. School of Information Science and Engineering,Yunnan University,Kunming 650500,China
  • Online:2021-11-10 Published:2021-11-12
  • About author:MA Jun-cheng,born in 1995,postgraduate.His main research interests include 3D visualization and so on.
    JIANG Mu-rong,born in 1963,professor.Her main research interests include mathematical method of image processing and its intelligent calculation

摘要: 在气象领域中,多普勒雷达探测的气象数据采用空间极坐标的方式进行存储,探测到的气象目标具有分布不均匀、区域分散、形状不规则等特征。为了满足气象目标三维重建的需求,针对雷达数据特征对Marching Tetrahedra三维重建算法进行一定的改进。首先采用Barnes插值方法和傅里叶谱分析原理的插值方法分别在雷达锥体数据的垂直方向及径向之间进行回波强度值的加密,对加密后的回波极坐标数据构成的新的六面体进行基本四面体单元的剖分,并利用线性插值得到各顶点的具体位置,绘制时结合多层次面绘制技术渲染三维图,该算法避免了对高仰角以及距离远而没有回波数据区域的重建。实验表明,改进算法能更好更快地实现三维重建,并且能观测分析云层的内部细节信息,为气象的准确预报提供了一定的参考依据。

关键词: Marching Tetrahedra算法, 多层次三维重建, 雷达数据插值, 气象雷达

Abstract: In the field of meteorology,the meteorological data detected by Doppler radar is stored in the form of spatial polar coordinates,and the detected meteorological targets have the characteristics of uneven distribution,scattered regions,and irregular shapes.In order to meet the needs of 3D reconstruction of meteorological targets,the Marching Tetrahedra 3D reconstruction algorithm is improved according to the characteristics of radar data.First,the Barnes interpolation method and the interpolation method of the Fourier spectrum analysis principle are used in the vertical direction and radius of the radar cone data.This algorithm encrypts the echo intensity value between the two directions,divides the new hexahedron formed by the encrypted echo polar coordinate data into basic tetrahedral units,and uses linear interpolation to obtain the specific position of each vertex,and combines the multi-level surface when drawing.The rendering technology renders 3D images.The algorithm avoids the reconstruction of areas with high elevation angles and long distances without echo data.Experiments show that the improved algorithm can not only achieve better and faster three-dimensional reconstruction,but also observe and analyze the internal details of the cloud layer,which provides a certain reference basis for accurate weather forecasting.

Key words: Marching Tetrahedra algorithm, Multi-level 3D reconstruction, Radar data interpolation, Weather radar

中图分类号: 

  • TP391
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