I am attempting to do the opposite of this: Given a 2D image of (continuous) intensities, generate a set of irregularly spaced accumulation points, i.e, points that irregularly cover the 2D map, being closer to each other at the areas of high intensities (**but without overlap!**).

My first try was "weighted" k-means. As I didn't find a working implementation of weighted k-means, the way I introduce the weights consists of repeating the points with high intensities. Here is my code:

```
import numpy as np
from sklearn.cluster import KMeans
def accumulation_points_finder(x, y, data, n_points, method, cut_value):
#computing the rms
rms = estimate_rms(data)
#structuring the data
X,Y = np.meshgrid(x, y, sparse=False)
if cut_value > 0.:
mask = data > cut_value
#applying the mask
X = X[mask]; Y = Y[mask]; data = data[mask]
_data = np.array([X, Y, data])
else:
X = X.ravel(); Y = Y.ravel(); data = data.ravel()
_data = np.array([X, Y, data])
if method=='weighted_kmeans':
res = []
for i in range(len(data)):
w = int(ceil(data[i]/rms))
res.extend([[X[i],Y[i]]]*w)
res = np.asarray(res)
#kmeans object instantiation
kmeans = KMeans(init='k-means++', n_clusters=n_points, n_init=25, n_jobs=2)
#performing kmeans clustering
kmeans.fit(res)
#returning just (x,y) positions
return kmeans.cluster_centers_
```

Here are two different results: 1) Making use of all the data pixels. 2) Making use of only pixels above some threshold (RMS).

As you can see the points seems to be more regularly spaced than concentrated at areas of high intensities.

So my **question** is if there exist a (deterministic if possible) better method for computing such accumulation points.