I have a set of vectors with which I want to create a vector field with a specific resolution. My vectors are defined by their x,y positions and their lengths and angles.

```
import numpy as np
import scipy as sp
from matplotlib.mlab import griddata
import pylab as pl
theta_array = [3,5,7,1]
length_array = [4,6,7,8]
x_array = [4,7,8,9]
y_array = [7,3,5,8]
x = np.linspace(1,10,10)
y = np.linspace(1,10,10)
new_theta = griddata(x_array,y_array,theta_array,x,y,interp='linear')
new_length = griddata(x_array,y_array,length_array,x,y,interp='linear')
```

I want to create a `(10x10)`

vector field from the interpolation of these vectors. Above I used `griddata`

from matplotlib.

While it returns a 10x10 array with interpolated values, it only creates an island of data and `--`

values for the other array elements.

```
masked_array(data =
[[-- -- -- -- -- -- -- -- -- --]
[-- -- -- -- -- -- -- -- -- --]
[-- -- -- -- -- -- 5.0 -- -- --]
[-- -- -- -- -- -- 5.4 -- -- --]
[-- -- -- -- -- 4.6 5.8 7.0 -- --]
[-- -- -- -- 3.8 5.0 5.0 5.0 -- --]
[-- -- -- 3.0 3.0 3.0 3.0 3.0 -- --]
[-- -- -- -- -- -- -- -- 1.0 --]
[-- -- -- -- -- -- -- -- -- --]
[-- -- -- -- -- -- -- -- -- --]],
mask =
[[ True True True True True True True True True True]
[ True True True True True True True True True True]
[ True True True True True True False True True True]
[ True True True True True True False True True True]
[ True True True True True False False False True True]
[ True True True True False False False False True True]
[ True True True False False False False False True True]
[ True True True True True True True True False True]
[ True True True True True True True True True True]
[ True True True True True True True True True True]],
fill_value = 1e+20)
```

I would have wanted all elements to have values, fading/decreasing in value as it goes away from the elements which have values. Much like this:

A followup question to this would be how do I apply this to another image and morph it using the vector field?

Thank you very much!