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I make a 2d histogram of some (x, y) data and I get an image like this one:

histogram-2d

I want a way to get the (x, y) coordinates of the point(s) that store the maximum values in H. For example, in the case of the image above it would be two points with the aprox coordinates: (1090, 1040) and (1110, 1090).

This is my code:

import numpy as np
import matplotlib.pyplot as plt
import matplotlib.cm as cm
from os import getcwd
from os.path import join, realpath, dirname

# Path to dir where this code exists.
mypath = realpath(join(getcwd(), dirname(__file__)))
myfile = 'datafile.dat'

x, y = np.loadtxt(join(mypath,myfile), usecols=(1, 2), unpack=True)

fig = plt.figure()
ax = fig.add_subplot(111)

xmin, xmax = min(x), max(x)
ymin, ymax = min(y), max(y)

rang = [[xmin, xmax], [ymin, ymax]]

binsxy = [int((xmax - xmin) / 20), int((ymax - ymin) / 20)]

H, xedges, yedges = np.histogram2d(x, y, range=rang, bins=binsxy)

extent = [yedges[0], yedges[-1], xedges[0], xedges[-1]]
cp = ax.imshow(H.transpose()[::-1], interpolation='nearest', extent=extent, cmap=cm.jet)
fig.colorbar(cp)

plt.show()

Edit

I've tried the solutions posted by Marek and qarma attempting to obtain the coordinates of the bins rather than the index of them, like so:

# Marek's answer
x_cent, y_cent = unravel_index(H.argmax(), H.shape)
print('Marek')
print(x_cent, y_cent)
print(xedges[x_cent], yedges[y_cent])

# qarma's answer
idx = list(H.flatten()).index(H.max())
x_cent2, y_cent2 = idx / H.shape[1], idx % H.shape[1]
local_maxs = np.argwhere(H == H.max())
print('\nqarma')
print(x_cent2, y_cent2)
print(xedges[x_cent2], yedges[y_cent2])
print(xedges[local_maxs[0,0]], yedges[local_maxs[0,1]], xedges[local_maxs[1,0]], yedges[local_maxs[1,1]])

which results in:

Marek
(53, 50)
(1072.7838144329899, 1005.0837113402063)

qarma
(53, 50)
(1072.7838144329899, 1005.0837113402063)
(1072.7838144329899, 1005.0837113402063, 1092.8257731958763, 1065.3611340206187)

So the maximum coordinates are the same which is good! Now I have a small issue because if I zoom in on the 2d plot, I see that the coordinates are a little off-centered for both the global maximum and the local maximum:

enter image description here

Why is this?

share|improve this question
    
scipy.signal.argrelextrema ? stackoverflow.com/a/13491866/624829 –  Boud May 29 '13 at 19:49
3  
Possible solution: Peak detection in a 2d array. Depending on your data, you may have to play with the size of the neighborhood, however. –  unutbu May 29 '13 at 20:17
    
That is an excellent question you point me to, thank you very much! I'll definitely check it out when I have some more time since it's quite long. Cheers. –  Gabriel May 29 '13 at 21:03

2 Answers 2

up vote 1 down vote accepted

Here's how you can find first global maximum

idx = list(H.flatten()).index(H.max())
x, y = idx / H.shape[1], idx % H.shape[1]

Finding coordinate of all maxima was left as exercise to the reader...

numpy.argwhere(H == H.max())

Edit

Your code:

H, xedges, yedges = np.histogram2d(x, y, range=rang, bins=binsxy)

Here H contains histogram values and xedges, yedges boundaries for histogram bins. Note that size of edges arrays is one larger than size of H in corresponding dimension. Thus:

for x, y in numpy.argwhere(H == H.max()):
    # center is between x and x+1
    print numpy.average(xedges[x:x + 2]), numpy.average(yedges[y:y + 2])
share|improve this answer
    
Please take a look at the edit I made and see if you can explain the offset I see? –  Gabriel May 29 '13 at 21:02
    
one moment..... –  qarma May 30 '13 at 14:57
    
Why is it x + 2 and not x + 1 if the edges array is one larger? –  Gabriel May 30 '13 at 20:09
1  
because len(foo[1:1+2]) == 2 –  qarma May 31 '13 at 15:41

This question should help you: Python: get the position of the biggest item in a numpy array

You can use H.max() to get the maximum value and then compare it with H and use numpy.nonzero to find positions of all maximum values: numpy.nonzero(H.max() == H). This is going to be more expensive than just H.argmax() but you will get all maximum values.

share|improve this answer
    
Please take a look at the edit I made and see if you can explain the offset I see? –  Gabriel May 29 '13 at 21:01

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