Find large number of consecutive values fulfilling condition in a numpy array
There is a very convenient solution to this using scipy.ndimage
. For an array:
a = np.array([1, 1, 1, 1, 0, 0, 0, 1, 1, 1, 0])
which can be the result of a condition applied to another array, finding the contiguous regions is as simple as:
regions = scipy.ndimage.find_objects(scipy.ndimage.label(a)[0])
Then, applying any function to those regions can be done e.g. like:
[np.sum(a[r]) for r in regions]
Here's a numpy-based solution.
I think (?) it should be faster than the other options. Hopefully it's fairly clear.
However, it does require a twice as much memory as the various generator-based solutions. As long as you can hold a single temporary copy of your data in memory (for the diff), and a boolean array of the same length as your data (1-bit-per-element), it should be pretty efficient...
import numpy as np
def main():
# Generate some random data
x = np.cumsum(np.random.random(1000) - 0.5)
condition = np.abs(x) < 1
# Print the start and stop indices of each region where the absolute
# values of x are below 1, and the min and max of each of these regions
for start, stop in contiguous_regions(condition):
segment = x[start:stop]
print start, stop
print segment.min(), segment.max()
def contiguous_regions(condition):
"""Finds contiguous True regions of the boolean array "condition". Returns
a 2D array where the first column is the start index of the region and the
second column is the end index."""
# Find the indicies of changes in "condition"
d = np.diff(condition)
idx, = d.nonzero()
# We need to start things after the change in "condition". Therefore,
# we'll shift the index by 1 to the right.
idx += 1
if condition[0]:
# If the start of condition is True prepend a 0
idx = np.r_[0, idx]
if condition[-1]:
# If the end of condition is True, append the length of the array
idx = np.r_[idx, condition.size] # Edit
# Reshape the result into two columns
idx.shape = (-1,2)
return idx
main()
Slightly sloppy, but simple and fast-ish, if you don't mind using scipy:
from scipy.ndimage import gaussian_filter
sigma = 3
threshold = 1
above_threshold = gaussian_filter(data, sigma=sigma) > threshold
The idea is that quiet portions of the data will smooth down to low amplitude, and loud regions won't. Tune 'sigma' to affect how long a 'quiet' region must be; tune 'threshold' to affect how quiet it must be. This slows down for large sigma, at which point using FFT-based smoothing might be faster.
This has the added benefit that single 'hot pixels' won't disrupt your silence-finding, so you're a little less sensitive to certain types of noise.