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Peak detection in Python
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import numpy as np | |
from math import pi, log | |
import pylab | |
from scipy import fft, ifft | |
from scipy.optimize import curve_fit | |
i = 10000 | |
x = np.linspace(0, 3.5 * pi, i) | |
y = (0.3*np.sin(x) + np.sin(1.3 * x) + 0.9 * np.sin(4.2 * x) + 0.06 * | |
np.random.randn(i)) | |
def _datacheck_peakdetect(x_axis, y_axis): | |
if x_axis is None: | |
x_axis = range(len(y_axis)) | |
if len(y_axis) != len(x_axis): | |
raise (ValueError, | |
'Input vectors y_axis and x_axis must have same length') | |
#needs to be a numpy array | |
y_axis = np.array(y_axis) | |
x_axis = np.array(x_axis) | |
return x_axis, y_axis | |
def _peakdetect_parabole_fitter(raw_peaks, x_axis, y_axis, points): | |
""" | |
Performs the actual parabole fitting for the peakdetect_parabole function. | |
keyword arguments: | |
raw_peaks -- A list of either the maximium or the minimum peaks, as given | |
by the peakdetect_zero_crossing function, with index used as x-axis | |
x_axis -- A numpy list of all the x values | |
y_axis -- A numpy list of all the y values | |
points -- How many points around the peak should be used during curve | |
fitting, must be odd. | |
return -- A list giving all the peaks and the fitted waveform, format: | |
[[x, y, [fitted_x, fitted_y]]] | |
""" | |
func = lambda x, k, tau, m: k * ((x - tau) ** 2) + m | |
fitted_peaks = [] | |
for peak in raw_peaks: | |
index = peak[0] | |
x_data = x_axis[index - points // 2: index + points // 2 + 1] | |
y_data = y_axis[index - points // 2: index + points // 2 + 1] | |
# get a first approximation of tau (peak position in time) | |
tau = x_axis[index] | |
# get a first approximation of peak amplitude | |
m = peak[1] | |
# build list of approximations | |
# k = -m as first approximation? | |
p0 = (-m, tau, m) | |
popt, pcov = curve_fit(func, x_data, y_data, p0) | |
# retrieve tau and m i.e x and y value of peak | |
x, y = popt[1:3] | |
# create a high resolution data set for the fitted waveform | |
x2 = np.linspace(x_data[0], x_data[-1], points * 10) | |
y2 = func(x2, *popt) | |
fitted_peaks.append([x, y, [x2, y2]]) | |
return fitted_peaks | |
def peakdetect(y_axis, x_axis = None, lookahead = 300, delta=0): | |
""" | |
Converted from/based on a MATLAB script at: | |
http://billauer.co.il/peakdet.html | |
function for detecting local maximas and minmias in a signal. | |
Discovers peaks by searching for values which are surrounded by lower | |
or larger values for maximas and minimas respectively | |
keyword arguments: | |
y_axis -- A list containg the signal over which to find peaks | |
x_axis -- (optional) A x-axis whose values correspond to the y_axis list | |
and is used in the return to specify the postion of the peaks. If | |
omitted an index of the y_axis is used. (default: None) | |
lookahead -- (optional) distance to look ahead from a peak candidate to | |
determine if it is the actual peak (default: 200) | |
'(sample / period) / f' where '4 >= f >= 1.25' might be a good value | |
delta -- (optional) this specifies a minimum difference between a peak and | |
the following points, before a peak may be considered a peak. Useful | |
to hinder the function from picking up false peaks towards to end of | |
the signal. To work well delta should be set to delta >= RMSnoise * 5. | |
(default: 0) | |
delta function causes a 20% decrease in speed, when omitted | |
Correctly used it can double the speed of the function | |
return -- two lists [max_peaks, min_peaks] containing the positive and | |
negative peaks respectively. Each cell of the lists contains a tupple | |
of: (position, peak_value) | |
to get the average peak value do: np.mean(max_peaks, 0)[1] on the | |
results to unpack one of the lists into x, y coordinates do: | |
x, y = zip(*tab) | |
""" | |
max_peaks = [] | |
min_peaks = [] | |
dump = [] #Used to pop the first hit which almost always is false | |
# check input data | |
x_axis, y_axis = _datacheck_peakdetect(x_axis, y_axis) | |
# store data length for later use | |
length = len(y_axis) | |
#perform some checks | |
if lookahead < 1: | |
raise ValueError, "Lookahead must be '1' or above in value" | |
if not (np.isscalar(delta) and delta >= 0): | |
raise ValueError, "delta must be a positive number" | |
#maxima and minima candidates are temporarily stored in | |
#mx and mn respectively | |
mn, mx = np.Inf, -np.Inf | |
#Only detect peak if there is 'lookahead' amount of points after it | |
for index, (x, y) in enumerate(zip(x_axis[:-lookahead], | |
y_axis[:-lookahead])): | |
if y > mx: | |
mx = y | |
mxpos = x | |
if y < mn: | |
mn = y | |
mnpos = x | |
####look for max#### | |
if y < mx-delta and mx != np.Inf: | |
#Maxima peak candidate found | |
#look ahead in signal to ensure that this is a peak and not jitter | |
if y_axis[index:index+lookahead].max() < mx: | |
max_peaks.append([mxpos, mx]) | |
dump.append(True) | |
#set algorithm to only find minima now | |
mx = np.Inf | |
mn = np.Inf | |
if index+lookahead >= length: | |
#end is within lookahead no more peaks can be found | |
break | |
continue | |
#else: #slows shit down this does | |
# mx = ahead | |
# mxpos = x_axis[np.where(y_axis[index:index+lookahead]==mx)] | |
####look for min#### | |
if y > mn+delta and mn != -np.Inf: | |
#Minima peak candidate found | |
#look ahead in signal to ensure that this is a peak and not jitter | |
if y_axis[index:index+lookahead].min() > mn: | |
min_peaks.append([mnpos, mn]) | |
dump.append(False) | |
#set algorithm to only find maxima now | |
mn = -np.Inf | |
mx = -np.Inf | |
if index+lookahead >= length: | |
#end is within lookahead no more peaks can be found | |
break | |
#else: #slows shit down this does | |
# mn = ahead | |
# mnpos = x_axis[np.where(y_axis[index:index+lookahead]==mn)] | |
#Remove the false hit on the first value of the y_axis | |
try: | |
if dump[0]: | |
max_peaks.pop(0) | |
else: | |
min_peaks.pop(0) | |
del dump | |
except IndexError: | |
#no peaks were found, should the function return empty lists? | |
pass | |
return [max_peaks, min_peaks] | |
def peakdetect_fft(y_axis, x_axis, pad_len = 5): | |
""" | |
Performs a FFT calculation on the data and zero-pads the results to | |
increase the time domain resolution after performing the inverse fft and | |
send the data to the 'peakdetect' function for peak | |
detection. | |
Omitting the x_axis is forbidden as it would make the resulting x_axis | |
value silly if it was returned as the index 50.234 or similar. | |
Will find at least 1 less peak then the 'peakdetect_zero_crossing' | |
function, but should result in a more precise value of the peak as | |
resolution has been increased. Some peaks are lost in an attempt to | |
minimize spectral leakage by calculating the fft between two zero | |
crossings for n amount of signal periods. | |
The biggest time eater in this function is the ifft and thereafter it's | |
the 'peakdetect' function which takes only half the time of the ifft. | |
Speed improvementd could include to check if 2**n points could be used for | |
fft and ifft or change the 'peakdetect' to the 'peakdetect_zero_crossing', | |
which is maybe 10 times faster than 'peakdetct'. The pro of 'peakdetect' | |
is that it resutls in one less lost peak. It should also be noted that the | |
time used by the ifft function can change greatly depending on the input. | |
keyword arguments: | |
y_axis -- A list containg the signal over which to find peaks | |
x_axis -- A x-axis whose values correspond to the y_axis list and is used | |
in the return to specify the postion of the peaks. | |
pad_len -- (optional) By how many times the time resolution should be | |
increased by, e.g. 1 doubles the resolution. The amount is rounded up | |
to the nearest 2 ** n amount (default: 5) | |
return -- two lists [max_peaks, min_peaks] containing the positive and | |
negative peaks respectively. Each cell of the lists contains a tupple | |
of: (position, peak_value) | |
to get the average peak value do: np.mean(max_peaks, 0)[1] on the | |
results to unpack one of the lists into x, y coordinates do: | |
x, y = zip(*tab) | |
""" | |
# check input data | |
x_axis, y_axis = _datacheck_peakdetect(x_axis, y_axis) | |
zero_indices = zero_crossings(y_axis, window = 11) | |
#select a n amount of periods | |
last_indice = - 1 - (1 - len(zero_indices) & 1) | |
# Calculate the fft between the first and last zero crossing | |
# this method could be ignored if the begining and the end of the signal | |
# are discardable as any errors induced from not using whole periods | |
# should mainly manifest in the beginning and the end of the signal, but | |
# not in the rest of the signal | |
fft_data = fft(y_axis[zero_indices[0]:zero_indices[last_indice]]) | |
padd = lambda x, c: x[:len(x) // 2] + [0] * c + x[len(x) // 2:] | |
n = lambda x: int(log(x)/log(2)) + 1 | |
# padds to 2**n amount of samples | |
fft_padded = padd(list(fft_data), 2 ** | |
n(len(fft_data) * pad_len) - len(fft_data)) | |
# There is amplitude decrease directly proportional to the sample increase | |
sf = len(fft_padded) / float(len(fft_data)) | |
# There might be a leakage giving the result an imaginary component | |
# Return only the real component | |
y_axis_ifft = ifft(fft_padded).real * sf #(pad_len + 1) | |
x_axis_ifft = np.linspace( | |
x_axis[zero_indices[0]], x_axis[zero_indices[last_indice]], | |
len(y_axis_ifft)) | |
# get the peaks to the interpolated waveform | |
max_peaks, min_peaks = peakdetect(y_axis_ifft, x_axis_ifft, 500, | |
delta = abs(np.diff(y_axis).max() * 2)) | |
#max_peaks, min_peaks = peakdetect_zero_crossing(y_axis_ifft, x_axis_ifft) | |
# store one 20th of a period as waveform data | |
data_len = int(np.diff(zero_indices).mean()) / 10 | |
data_len += 1 - data_len & 1 | |
fitted_wave = [] | |
for peaks in [max_peaks, min_peaks]: | |
peak_fit_tmp = [] | |
index = 0 | |
for peak in peaks: | |
index = np.where(x_axis_ifft[index:]==peak[0])[0][0] + index | |
x_fit_lim = x_axis_ifft[index - data_len // 2: | |
index + data_len // 2 + 1] | |
y_fit_lim = y_axis_ifft[index - data_len // 2: | |
index + data_len // 2 + 1] | |
peak_fit_tmp.append([x_fit_lim, y_fit_lim]) | |
fitted_wave.append(peak_fit_tmp) | |
#pylab.plot(range(len(fft_data)), fft_data) | |
#pylab.show() | |
pylab.plot(x_axis, y_axis) | |
pylab.hold(True) | |
pylab.plot(x_axis_ifft, y_axis_ifft) | |
#for max_p in max_peaks: | |
# pylab.plot(max_p[0], max_p[1], 'xr') | |
pylab.show() | |
return [max_peaks, min_peaks] | |
def peakdetect_parabole(y_axis, x_axis, points = 9): | |
""" | |
Function for detecting local maximas and minmias in a signal. | |
Discovers peaks by fitting the model function: y = k (x - tau) ** 2 + m | |
to the peaks. The amount of points used in the fitting is set by the | |
points argument. | |
Omitting the x_axis is forbidden as it would make the resulting x_axis | |
value silly if it was returned as index 50.234 or similar. | |
will find the same amount of peaks as the 'peakdetect_zero_crossing' | |
function, but might result in a more precise value of the peak. | |
keyword arguments: | |
y_axis -- A list containg the signal over which to find peaks | |
x_axis -- A x-axis whose values correspond to the y_axis list and is used | |
in the return to specify the postion of the peaks. | |
points -- (optional) How many points around the peak should be used during | |
curve fitting, must be odd (default: 9) | |
return -- two lists [max_peaks, min_peaks] containing the positive and | |
negative peaks respectively. Each cell of the lists contains a list | |
of: (position, peak_value) | |
to get the average peak value do: np.mean(max_peaks, 0)[1] on the | |
results to unpack one of the lists into x, y coordinates do: | |
x, y = zip(*max_peaks) | |
""" | |
# check input data | |
x_axis, y_axis = _datacheck_peakdetect(x_axis, y_axis) | |
# make the points argument odd | |
points += 1 - points % 2 | |
#points += 1 - int(points) & 1 slower when int conversion needed | |
# get raw peaks | |
max_raw, min_raw = peakdetect_zero_crossing(y_axis) | |
# define output variable | |
max_peaks = [] | |
min_peaks = [] | |
max_ = _peakdetect_parabole_fitter(max_raw, x_axis, y_axis, points) | |
min_ = _peakdetect_parabole_fitter(min_raw, x_axis, y_axis, points) | |
max_peaks = map(lambda x: [x[0], x[1]], max_) | |
max_fitted = map(lambda x: x[-1], max_) | |
min_peaks = map(lambda x: [x[0], x[1]], min_) | |
min_fitted = map(lambda x: x[-1], min_) | |
#pylab.plot(x_axis, y_axis) | |
#pylab.hold(True) | |
#for max_p, max_f in zip(max_peaks, max_fitted): | |
# pylab.plot(max_p[0], max_p[1], 'x') | |
# pylab.plot(max_f[0], max_f[1], 'o', markersize = 2) | |
#for min_p, min_f in zip(min_peaks, min_fitted): | |
# pylab.plot(min_p[0], min_p[1], 'x') | |
# pylab.plot(min_f[0], min_f[1], 'o', markersize = 2) | |
#pylab.show() | |
return [max_peaks, min_peaks] | |
def peakdetect_sine(y_axis, x_axis, points = 9, lock_frequency = False): | |
""" | |
Function for detecting local maximas and minmias in a signal. | |
Discovers peaks by fitting the model function: | |
y = A * sin(2 * pi * f * x - tau) to the peaks. The amount of points used | |
in the fitting is set by the points argument. | |
Omitting the x_axis is forbidden as it would make the resulting x_axis | |
value silly if it was returned as index 50.234 or similar. | |
will find the same amount of peaks as the 'peakdetect_zero_crossing' | |
function, but might result in a more precise value of the peak. | |
The function might have some problems if the sine wave has a | |
non-negligible total angle i.e. a k*x component, as this messes with the | |
internal offset calculation of the peaks, might be fixed by fitting a | |
k * x + m function to the peaks for offset calculation. | |
keyword arguments: | |
y_axis -- A list containg the signal over which to find peaks | |
x_axis -- A x-axis whose values correspond to the y_axis list and is used | |
in the return to specify the postion of the peaks. | |
points -- (optional) How many points around the peak should be used during | |
curve fitting, must be odd (default: 9) | |
lock_frequency -- (optional) Specifies if the frequency argument of the | |
model function should be locked to the value calculated from the raw | |
peaks or if optimization process may tinker with it. (default: False) | |
return -- two lists [max_peaks, min_peaks] containing the positive and | |
negative peaks respectively. Each cell of the lists contains a tupple | |
of: (position, peak_value) | |
to get the average peak value do: np.mean(max_peaks, 0)[1] on the | |
results to unpack one of the lists into x, y coordinates do: | |
x, y = zip(*tab) | |
""" | |
# check input data | |
x_axis, y_axis = _datacheck_peakdetect(x_axis, y_axis) | |
# make the points argument odd | |
points += 1 - points % 2 | |
#points += 1 - int(points) & 1 slower when int conversion needed | |
# get raw peaks | |
max_raw, min_raw = peakdetect_zero_crossing(y_axis) | |
# define output variable | |
max_peaks = [] | |
min_peaks = [] | |
# get global offset | |
offset = np.mean([np.mean(max_raw, 0)[1], np.mean(min_raw, 0)[1]]) | |
# fitting a k * x + m function to the peaks might be better | |
#offset_func = lambda x, k, m: k * x + m | |
# calculate an approximate frequenzy of the signal | |
Hz = [] | |
for raw in [max_raw, min_raw]: | |
if len(raw) > 1: | |
peak_pos = [x_axis[index] for index in zip(*raw)[0]] | |
Hz.append(np.mean(np.diff(peak_pos))) | |
Hz = 1 / np.mean(Hz) | |
# model function | |
# if cosine is used then tau could equal the x position of the peak | |
# if sine were to be used then tau would be the first zero crossing | |
if lock_frequency: | |
func = lambda x, A, tau: A * np.sin(2 * pi * Hz * (x - tau) + pi / 2) | |
else: | |
func = lambda x, A, Hz, tau: A * np.sin(2 * pi * Hz * (x - tau) + | |
pi / 2) | |
#func = lambda x, A, Hz, tau: A * np.cos(2 * pi * Hz * (x - tau)) | |
#get peaks | |
fitted_peaks = [] | |
for raw_peaks in [max_raw, min_raw]: | |
peak_data = [] | |
for peak in raw_peaks: | |
index = peak[0] | |
x_data = x_axis[index - points // 2: index + points // 2 + 1] | |
y_data = y_axis[index - points // 2: index + points // 2 + 1] | |
# get a first approximation of tau (peak position in time) | |
tau = x_axis[index] | |
# get a first approximation of peak amplitude | |
A = peak[1] | |
# build list of approximations | |
if lock_frequency: | |
p0 = (A, tau) | |
else: | |
p0 = (A, Hz, tau) | |
# subtract offset from waveshape | |
y_data -= offset | |
popt, pcov = curve_fit(func, x_data, y_data, p0) | |
# retrieve tau and A i.e x and y value of peak | |
x = popt[-1] | |
y = popt[0] | |
# create a high resolution data set for the fitted waveform | |
x2 = np.linspace(x_data[0], x_data[-1], points * 10) | |
y2 = func(x2, *popt) | |
# add the offset to the results | |
y += offset | |
y2 += offset | |
y_data += offset | |
peak_data.append([x, y, [x2, y2]]) | |
fitted_peaks.append(peak_data) | |
# structure date for output | |
max_peaks = map(lambda x: [x[0], x[1]], fitted_peaks[0]) | |
max_fitted = map(lambda x: x[-1], fitted_peaks[0]) | |
min_peaks = map(lambda x: [x[0], x[1]], fitted_peaks[1]) | |
min_fitted = map(lambda x: x[-1], fitted_peaks[1]) | |
#pylab.plot(x_axis, y_axis) | |
#pylab.hold(True) | |
#for max_p, max_f in zip(max_peaks, max_fitted): | |
# pylab.plot(max_p[0], max_p[1], 'x') | |
# pylab.plot(max_f[0], max_f[1], 'o', markersize = 2) | |
#for min_p, min_f in zip(min_peaks, min_fitted): | |
# pylab.plot(min_p[0], min_p[1], 'x') | |
# pylab.plot(min_f[0], min_f[1], 'o', markersize = 2) | |
#pylab.show() | |
return [max_peaks, min_peaks] | |
def peakdetect_sine_locked(y_axis, x_axis, points = 9): | |
""" | |
Convinience function for calling the 'peakdetect_sine' function with | |
the lock_frequency argument as True. | |
keyword arguments: | |
y_axis -- A list containg the signal over which to find peaks | |
x_axis -- A x-axis whose values correspond to the y_axis list and is used | |
in the return to specify the postion of the peaks. | |
points -- (optional) How many points around the peak should be used during | |
curve fitting, must be odd (default: 9) | |
return -- see 'peakdetect_sine' | |
""" | |
return peakdetect_sine(y_axis, x_axis, points, True) | |
def peakdetect_zero_crossing(y_axis, x_axis = None, window = 11): | |
""" | |
Function for detecting local maximas and minmias in a signal. | |
Discovers peaks by dividing the signal into bins and retrieving the | |
maximum and minimum value of each the even and odd bins respectively. | |
Division into bins is performed by smoothing the curve and finding the | |
zero crossings. | |
Suitable for repeatable signals, where some noise is tolerated. Excecutes | |
faster than 'peakdetect', although this function will break if the offset | |
of the signal is too large. It should also be noted that the first and | |
last peak will probably not be found, as this function only can find peaks | |
between the first and last zero crossing. | |
keyword arguments: | |
y_axis -- A list containg the signal over which to find peaks | |
x_axis -- (optional) A x-axis whose values correspond to the y_axis list | |
and is used in the return to specify the postion of the peaks. If | |
omitted an index of the y_axis is used. (default: None) | |
window -- the dimension of the smoothing window; should be an odd integer | |
(default: 11) | |
return -- two lists [max_peaks, min_peaks] containing the positive and | |
negative peaks respectively. Each cell of the lists contains a tupple | |
of: (position, peak_value) | |
to get the average peak value do: np.mean(max_peaks, 0)[1] on the | |
results to unpack one of the lists into x, y coordinates do: | |
x, y = zip(*tab) | |
""" | |
# check input data | |
x_axis, y_axis = _datacheck_peakdetect(x_axis, y_axis) | |
zero_indices = zero_crossings(y_axis, window = window) | |
period_lengths = np.diff(zero_indices) | |
bins_y = [y_axis[index:index + diff] for index, diff in | |
zip(zero_indices, period_lengths)] | |
bins_x = [x_axis[index:index + diff] for index, diff in | |
zip(zero_indices, period_lengths)] | |
even_bins_y = bins_y[::2] | |
odd_bins_y = bins_y[1::2] | |
even_bins_x = bins_x[::2] | |
odd_bins_x = bins_x[1::2] | |
hi_peaks_x = [] | |
lo_peaks_x = [] | |
#check if even bin contains maxima | |
if abs(even_bins_y[0].max()) > abs(even_bins_y[0].min()): | |
hi_peaks = [bin.max() for bin in even_bins_y] | |
lo_peaks = [bin.min() for bin in odd_bins_y] | |
# get x values for peak | |
for bin_x, bin_y, peak in zip(even_bins_x, even_bins_y, hi_peaks): | |
hi_peaks_x.append(bin_x[np.where(bin_y==peak)[0][0]]) | |
for bin_x, bin_y, peak in zip(odd_bins_x, odd_bins_y, lo_peaks): | |
lo_peaks_x.append(bin_x[np.where(bin_y==peak)[0][0]]) | |
else: | |
hi_peaks = [bin.max() for bin in odd_bins_y] | |
lo_peaks = [bin.min() for bin in even_bins_y] | |
# get x values for peak | |
for bin_x, bin_y, peak in zip(odd_bins_x, odd_bins_y, hi_peaks): | |
hi_peaks_x.append(bin_x[np.where(bin_y==peak)[0][0]]) | |
for bin_x, bin_y, peak in zip(even_bins_x, even_bins_y, lo_peaks): | |
lo_peaks_x.append(bin_x[np.where(bin_y==peak)[0][0]]) | |
max_peaks = [[x, y] for x,y in zip(hi_peaks_x, hi_peaks)] | |
min_peaks = [[x, y] for x,y in zip(lo_peaks_x, lo_peaks)] | |
return [max_peaks, min_peaks] | |
def _smooth(x, window_len=11, window='hanning'): | |
""" | |
smooth the data using a window of the requested size. | |
This method is based on the convolution of a scaled window on the signal. | |
The signal is prepared by introducing reflected copies of the signal | |
(with the window size) in both ends so that transient parts are minimized | |
in the begining and end part of the output signal. | |
input: | |
x: the input signal | |
window_len: the dimension of the smoothing window; should be an odd | |
integer | |
window: the type of window from 'flat', 'hanning', 'hamming', | |
'bartlett', 'blackman' | |
flat window will produce a moving average smoothing. | |
output: | |
the smoothed signal | |
example: | |
t = linspace(-2,2,0.1) | |
x = sin(t)+randn(len(t))*0.1 | |
y = _smooth(x) | |
see also: | |
numpy.hanning, numpy.hamming, numpy.bartlett, numpy.blackman, | |
numpy.convolve, scipy.signal.lfilter | |
TODO: the window parameter could be the window itself if a list instead of | |
a string | |
""" | |
if x.ndim != 1: | |
raise ValueError, "smooth only accepts 1 dimension arrays." | |
if x.size < window_len: | |
raise ValueError, "Input vector needs to be bigger than window size." | |
if window_len<3: | |
return x | |
if not window in ['flat', 'hanning', 'hamming', 'bartlett', 'blackman']: | |
raise(ValueError, | |
"Window is not one of '{0}', '{1}', '{2}', '{3}', '{4}'".format( | |
*('flat', 'hanning', 'hamming', 'bartlett', 'blackman'))) | |
s = np.r_[x[window_len-1:0:-1], x, x[-1:-window_len:-1]] | |
#print(len(s)) | |
if window == 'flat': #moving average | |
w = np.ones(window_len,'d') | |
else: | |
w = eval('np.' + window + '(window_len)') | |
y = np.convolve(w / w.sum(), s, mode = 'valid') | |
return y | |
def zero_crossings(y_axis, window = 11): | |
""" | |
Algorithm to find zero crossings. Smoothens the curve and finds the | |
zero-crossings by looking for a sign change. | |
keyword arguments: | |
y_axis -- A list containg the signal over which to find zero-crossings | |
window -- the dimension of the smoothing window; should be an odd integer | |
(default: 11) | |
return -- the index for each zero-crossing | |
""" | |
# smooth the curve | |
length = len(y_axis) | |
x_axis = np.asarray(range(length), int) | |
# discard tail of smoothed signal | |
y_axis = _smooth(y_axis, window)[:length] | |
zero_crossings = np.where(np.diff(np.sign(y_axis)))[0] | |
indices = [x_axis[index] for index in zero_crossings] | |
# check if zero-crossings are valid | |
diff = np.diff(indices) | |
if diff.std() / diff.mean() > 0.2: | |
print diff.std() / diff.mean() | |
print np.diff(indices) | |
raise(ValueError, | |
"False zero-crossings found, indicates problem {0} or {1}".format( | |
"with smoothing window", "problem with offset")) | |
# check if any zero crossings were found | |
if len(zero_crossings) < 1: | |
raise(ValueError, "No zero crossings found") | |
return indices | |
# used this to test the fft function's sensitivity to spectral leakage | |
#return indices + np.asarray(30 * np.random.randn(len(indices)), int) | |
############################Frequency calculation############################# | |
# diff = np.diff(indices) | |
# time_p_period = diff.mean() | |
# | |
# if diff.std() / time_p_period > 0.1: | |
# raise ValueError, | |
# "smoothing window too small, false zero-crossing found" | |
# | |
# #return frequency | |
# return 1.0 / time_p_period | |
############################################################################## | |
def _test_zero(): | |
_max, _min = peakdetect_zero_crossing(y,x) | |
def _test(): | |
_max, _min = peakdetect(y,x, delta=0.30) | |
def _test_graph(): | |
i = 10000 | |
x = np.linspace(0,3.7*pi,i) | |
y = (0.3*np.sin(x) + np.sin(1.3 * x) + 0.9 * np.sin(4.2 * x) + 0.06 * | |
np.random.randn(i)) | |
y *= -1 | |
x = range(i) | |
_max, _min = peakdetect(y,x,750, 0.30) | |
xm = [p[0] for p in _max] | |
ym = [p[1] for p in _max] | |
xn = [p[0] for p in _min] | |
yn = [p[1] for p in _min] | |
plot = pylab.plot(x,y) | |
pylab.hold(True) | |
pylab.plot(xm, ym, 'r+') | |
pylab.plot(xn, yn, 'g+') | |
_max, _min = peak_det_bad.peakdetect(y, 0.7, x) | |
xm = [p[0] for p in _max] | |
ym = [p[1] for p in _max] | |
xn = [p[0] for p in _min] | |
yn = [p[1] for p in _min] | |
pylab.plot(xm, ym, 'y*') | |
pylab.plot(xn, yn, 'k*') | |
pylab.show() | |
if __name__ == "__main__": | |
from math import pi | |
import pylab | |
i = 10000 | |
x = np.linspace(0,3.7*pi,i) | |
y = (0.3*np.sin(x) + np.sin(1.3 * x) + 0.9 * np.sin(4.2 * x) + 0.06 * | |
np.random.randn(i)) | |
y *= -1 | |
_max, _min = peakdetect(y, x, 750, 0.30) | |
xm = [p[0] for p in _max] | |
ym = [p[1] for p in _max] | |
xn = [p[0] for p in _min] | |
yn = [p[1] for p in _min] | |
plot = pylab.plot(x, y) | |
pylab.hold(True) | |
pylab.plot(xm, ym, 'r+') | |
pylab.plot(xn, yn, 'g+') | |
pylab.show() |
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