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https://gitlab.science.ru.nl/mthesis-edeboone/m-thesis-introduction.git
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97 lines
2.8 KiB
Python
97 lines
2.8 KiB
Python
import numpy as np
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from collections import namedtuple
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from lib import direct_fourier_transform as dtft
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import matplotlib.pyplot as plt # for debug plotting
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passband = namedtuple("passband", ['low', 'high'], defaults=[0, np.inf])
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def get_freq_spec(val,dt):
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"""From earsim/tools.py"""
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fval = np.fft.fft(val)[:len(val)//2]
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freq = np.fft.fftfreq(len(val),dt)[:len(val)//2]
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return fval, freq
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def bandpass_samples(samples, samplerate, band=passband()):
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"""
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Bandpass the samples with this passband.
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This is a hard filter.
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"""
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fft, freqs = get_freq_spec(samples, samplerate)
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fft[ ~ self.freq_mask(freqs) ] = 0
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return np.fft.irfft(fft)
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def bandpass_mask(freqs, band=passband()):
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low_pass = abs(freqs) <= band[1]
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high_pass = abs(freqs) >= band[0]
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return low_pass & high_pass
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def bandpower(samples, samplerate=1, band=passband(), normalise_bandsize=True, debug_ax=False):
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bins = 0
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fft, freqs = get_freq_spec(samples, 1/samplerate)
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bandmask = [False]*len(freqs)
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if band[1] is None:
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# Only a single frequency given
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# use a DTFT for finding the power
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time = np.arange(0, len(samples), 1/samplerate)
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real, imag = dtft(band[0], time, samples)
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power = np.sum(np.abs(real**2 + imag**2))
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else:
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bandmask = bandpass_mask(freqs, band=band)
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if normalise_bandsize:
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bins = np.count_nonzero(bandmask, axis=-1)
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else:
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bins = 1
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bins = max(1, bins)
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power = 1/bins * np.sum(np.abs(fft[bandmask])**2)
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# Prepare plotting variables if an Axes is supplied
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if debug_ax:
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if any(bandmask):
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min_f, max_f = min(freqs[bandmask]), max(freqs[bandmask])
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else:
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min_f, max_f = 0, 0
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if band[1] is None:
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min_f, max_f = band[0], band[0]
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if debug_ax is True:
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debug_ax = plt.gca()
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l = debug_ax.plot(freqs, np.abs(fft), alpha=0.9)
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amp = np.sqrt(power)
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if min_f != max_f:
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debug_ax.plot( [min_f, max_f], [amp, amp], alpha=0.7, color=l[0].get_color(), ls='dashed')
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debug_ax.axvspan(min_f, max_f, color=l[0].get_color(), alpha=0.2)
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else:
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debug_ax.plot( min_f, amp, '4', alpha=0.7, color=l[0].get_color(), ms=10)
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return power
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def signal_to_noise(samples, noise, samplerate=1, signal_band=passband(), noise_band=None, debug_ax=False):
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if noise_band is None:
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noise_band = signal_band
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if noise is None:
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noise = samples
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if debug_ax is True:
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debug_ax = plt.gca()
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noise_power = bandpower(noise, samplerate, noise_band, debug_ax=debug_ax)
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signal_power = bandpower(samples, samplerate, signal_band, debug_ax=debug_ax)
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return (signal_power/noise_power)**0.5
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