Гаусовский фильтр позволяет сглаживать картинки:
In [89]: a
Out[89]:
array([[0., 0., 0., 0., 0.],
[0., 0., 0., 0., 0.],
[0., 1., 0., 1., 0.],
[0., 0., 0., 0., 0.],
[0., 0., 0., 0., 0.]])
In [90]: from scipy.ndimage.filters import gaussian_filter
In [91]: gaussian_filter(a, sigma=(.8,.8), mode='nearest')
Out[91]:
array([[0.00501202, 0.01140622, 0.01000472, 0.01140622, 0.00501202],
[0.05222641, 0.11885554, 0.10425157, 0.11885554, 0.05222641],
[0.11407297, 0.25960436, 0.22770636, 0.25960436, 0.11407297],
[0.05222641, 0.11885554, 0.10425157, 0.11885554, 0.05222641],
[0.00501202, 0.01140622, 0.01000472, 0.01140622, 0.00501202]])
Исходный массив:
In [92]: plt.imshow(a, cmap='Blues')
Out[92]: <matplotlib.image.AxesImage at 0x23cb2ec3390>

сглаженный:
In [94]: plt.imshow(gaussian_filter(a, sigma=(.8,.8)), cmap='Blues')
Out[94]: <matplotlib.image.AxesImage at 0x23cb7e7b9e8>

А можно как-то чтоб единицы сохранились?
In [113]: r = gaussian_filter(a, sigma=.8)
In [114]: r
Out[114]:
array([[0.00560256, 0.01164552, 0.01020597, 0.01164552, 0.00560256],
[0.05722877, 0.11895616, 0.10425157, 0.11895616, 0.05722877],
[0.12499912, 0.25982415, 0.22770636, 0.25982415, 0.12499912],
[0.05722877, 0.11895616, 0.10425157, 0.11895616, 0.05722877],
[0.00560256, 0.01164552, 0.01020597, 0.01164552, 0.00560256]])
In [115]: r[a==1] = 1
In [116]: r
Out[116]:
array([[0.00560256, 0.01164552, 0.01020597, 0.01164552, 0.00560256],
[0.05722877, 0.11895616, 0.10425157, 0.11895616, 0.05722877],
[0.12499912, 1. , 0.22770636, 1. , 0.12499912],
[0.05722877, 0.11895616, 0.10425157, 0.11895616, 0.05722877],
[0.00560256, 0.01164552, 0.01020597, 0.01164552, 0.00560256]])