Python 沿坐标表给出的路径矢量化哈弗线距离计算

Python 沿坐标表给出的路径矢量化哈弗线距离计算,python,numpy,vectorization,distance,haversine,Python,Numpy,Vectorization,Distance,Haversine,我有一个坐标列表,可以使用度量计算所有点之间的距离矩阵 坐标以numpy.数组的形式出现(n,2)的(纬度,经度)对: [[ 16.34576887 -107.90942116] [ 12.49474931 -107.76030036] [ 27.79461514 -107.98607881] ... [ 12.90258404 -107.96786569] [ -6.29109889 -107.88681145] [ -2.68531605 -107.72796034]

我有一个坐标列表,可以使用度量计算所有点之间的距离矩阵

坐标以
numpy.数组的形式出现
(n,2)
(纬度,经度)
对:

[[  16.34576887 -107.90942116]
 [  12.49474931 -107.76030036]
 [  27.79461514 -107.98607881]
 ...
 [  12.90258404 -107.96786569]
 [  -6.29109889 -107.88681145]
 [  -2.68531605 -107.72796034]]
我还可以提取沿路径的距离,如坐标序列所示:

coordinates = np.deg2rad(coordinates)
lat, lng = coordinates[:, 0], coordinates[:, 1]
diff_lat = lat[:, None] - lat
diff_lng = lng[:, None] - lng

d = np.sin(diff_lat / 2) ** 2 + np.cos(lat[:, None]) * np.cos(lat) * np.sin(diff_lng / 2) ** 2
dist_matrix = 2 * 6371 * np.arcsin(np.sqrt(d))
np.diagonal(dist_matrix, offset=1)

[   428.51472359   1701.42935402   1849.52714339  12707.47743385
  13723.9087041    4521.8250695    2134.258953      401.33113696
   4571.69119707     73.82631307   6078.48898641   9870.17140175
                               ...
   2109.57319898  12959.56540448  16680.64546196   3050.96912506
   3419.95053226   4209.71641445   9467.85523888   2805.65191129
   4120.18701177]

我只想计算距离向量,而不是整个矩阵,然后选择相关的对角线。

这里有一种方法可以将该计算矢量化,而无需创建大矩阵
coslat
是纬度的余弦数组,
coslat[:-1]*coslat[1:][/code>是哈弗斯公式中表达式cos(ν1)cos(ν2)的矢量化版本

from __future__ import division, print_function

import numpy as np


def hav(theta):
    return np.sin(theta/2)**2


coords = [[  16.34576887, -107.90942116],
          [  12.49474931, -107.76030036],
          [  27.79461514, -107.98607881],
          [  12.90258404, -107.96786569],
          [  -6.29109889, -107.88681145],
          [  -2.68531605, -107.72796034]]
r = 6371

coordinates = np.deg2rad(coords)
lat = coordinates[:, 0]
lng = coordinates[:, 1]
coslat = np.cos(lat)
t = hav(np.diff(lat)) + coslat[:-1]*coslat[1:]*hav(np.diff(lng))
d = 2*r*np.arcsin(np.sqrt(t))

print(d)
输出:

[  428.51472353  1701.42935412  1655.91938575  2134.25895299   401.33113696]