# How to find the local minima of a smooth multidimensional array in NumPy efficiently?

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Say I have an array in NumPy containing evaluations of a continuous differentiable function, and I want to find the local minima. There is no noise, so every point whose value is lower than the values of all its neighbors meets my criterion for a local minimum.

I have the following list comprehension which works for a two-dimensional array, ignoring potential minima on the boundaries:

``````import numpy as N

def local_minima(array2d):
local_minima = [ index
for index in N.ndindex(array2d.shape)
if index[0] > 0
if index[1] > 0
if index[0] < array2d.shape[0] - 1
if index[1] < array2d.shape[1] - 1
if array2d[index] < array2d[index[0] - 1, index[1] - 1]
if array2d[index] < array2d[index[0] - 1, index[1]]
if array2d[index] < array2d[index[0] - 1, index[1] + 1]
if array2d[index] < array2d[index[0], index[1] - 1]
if array2d[index] < array2d[index[0], index[1] + 1]
if array2d[index] < array2d[index[0] + 1, index[1] - 1]
if array2d[index] < array2d[index[0] + 1, index[1]]
if array2d[index] < array2d[index[0] + 1, index[1] + 1]
]
return local_minima
``````

However, this is quite slow. I would also like to get this to work for any number of dimensions. For example, is there an easy way to get all the neighbors of a point in an array of any dimensions? Or am I approaching this problem the wrong way altogether? Should I be using `numpy.gradient()` instead?

-
 Finding the global maxima: stackoverflow.com/questions/3584243/… – endolith Oct 6 '11 at 3:45

The location of the local minima can be found for an array of arbitrary dimension using Ivan's detect_peaks function, with minor modifications:

``````import numpy as np
import scipy.ndimage.filters as filters
import scipy.ndimage.morphology as morphology

def detect_local_minima(arr):
# http://stackoverflow.com/questions/3684484/peak-detection-in-a-2d-array/3689710#3689710
"""
Takes an array and detects the troughs using the local maximum filter.
Returns a boolean mask of the troughs (i.e. 1 when
the pixel's value is the neighborhood maximum, 0 otherwise)
"""
# define an connected neighborhood
# http://www.scipy.org/doc/api_docs/SciPy.ndimage.morphology.html#generate_binary_structure
neighborhood = morphology.generate_binary_structure(len(arr.shape),2)
# apply the local minimum filter; all locations of minimum value
# in their neighborhood are set to 1
# http://www.scipy.org/doc/api_docs/SciPy.ndimage.filters.html#minimum_filter
local_min = (filters.minimum_filter(arr, footprint=neighborhood)==arr)
# local_min is a mask that contains the peaks we are
# looking for, but also the background.
# In order to isolate the peaks we must remove the background from the mask.
#
# we create the mask of the background
background = (arr==0)
#
# a little technicality: we must erode the background in order to
# successfully subtract it from local_min, otherwise a line will
# appear along the background border (artifact of the local minimum filter)
# http://www.scipy.org/doc/api_docs/SciPy.ndimage.morphology.html#binary_erosion
eroded_background = morphology.binary_erosion(
background, structure=neighborhood, border_value=1)
#
# we obtain the final mask, containing only peaks,
# by removing the background from the local_min mask
detected_minima = local_min - eroded_background
return np.where(detected_minima)
``````

which you can use like this:

``````arr=np.array([[[0,0,0,-1],[0,0,0,0],[0,0,0,0],[0,0,0,0],[-1,0,0,0]],
[[0,0,0,0],[0,-1,0,0],[0,0,0,0],[0,0,0,-1],[0,0,0,0]]])
local_minima_locations = detect_local_minima(arr)
print(arr)
# [[[ 0  0  0 -1]
#   [ 0  0  0  0]
#   [ 0  0  0  0]
#   [ 0  0  0  0]
#   [-1  0  0  0]]

#  [[ 0  0  0  0]
#   [ 0 -1  0  0]
#   [ 0  0  0  0]
#   [ 0  0  0 -1]
#   [ 0  0  0  0]]]
``````

This says the minima occur at indices [0,0,3], [0,4,0], [1,1,1] and [1,3,3]:

``````print(local_minima_locations)
# (array([0, 0, 1, 1]), array([0, 4, 1, 3]), array([3, 0, 1, 3]))
print(arr[local_minima_locations])
# [-1 -1 -1 -1]
``````
-
 Nice! It runs about 65 times as fast as my original, and works for any number of dimensions. – ptomato Oct 21 '10 at 14:22

Try this for 2D:

``````import numpy as N

def local_minima(array2d):
return ((array2d <= N.roll(array2d,  1, 0)) &
(array2d <= N.roll(array2d, -1, 0)) &
(array2d <= N.roll(array2d,  1, 1)) &
(array2d <= N.roll(array2d, -1, 1)))
``````

This will return you an array2d-like array with True/False where local minima (four neighbors) are located.

-
 Well, this actually finds local maxima, and needs `&`'s instead of `&&`'s, and requires parentheses around the comparisons, but it runs thirty times faster than my original. – ptomato Oct 21 '10 at 14:17 @ptomato - you're right, corrected now, thank you. – eumiro Oct 21 '10 at 14:19