Hello I new with python and also with sound signal analysis. I am trying to get the envelope of a birth song (zebra finch). It has a very rapid signal fluctuations and I tried with different approach. For instance I tried to plot the signal and get the envelope with the following code base on other examples that I found (I added comments on the code to understand it):

```
#Import the libraries
from pylab import *
import numpy
import scipy.signal.signaltools as sigtool
import scipy, pylab
from scipy.io import wavfile
import wave, struct
import scipy.signal as signal
#Open the txt file and read the wave file (also save it as txt file)
f_out = open('mike_1_44100_.txt', 'w')
w = scipy.io.wavfile.read("mike_1_44100_.wav") #here your sound file
a=w[1]
f_out.write('#time #z' + '\n')
#I print to check
print 'vector w'
print w[0],w[1]
print w
i=w[1].size
p=numpy.arange(i)*0.0000226 #to properly define the time signal with the sample rate
print 'vector p:'
print p
x=numpy.dstack([p,a])
print 'vector x:'
print x[0]
#saving file
numpy.savetxt('mike_1_44100_.txt',x[0])
f_out.close()
print 'i:'
print i
# num is the number of samples in the resampled signal.
num= np.ceil(float(i*0.0000226)/0.0015)
print num
y_resample, x_resample = scipy.signal.resample(numpy.abs(a),num, p,axis=0, window=('gaussian',150))
#y_resample, x_resample = scipy.signal.resample(numpy.abs(a), num, p,axis=-1, window=0)
#Aplaying a filter
W1=float(5000)/(float(44100)/2) #the frequency for the cut over the sample frequency
(b, a1) = signal.butter(4, W1, btype='lowpass')
aaa=a
slp =1* signal.filtfilt(b, a1, aaa)
#Taking the abs value of the signal the resample and finaly aplying the hilbert transform
y_resample2 =numpy.sqrt(numpy.abs(np.imag(sigtool.hilbert(slp, axis=-1)))**2+numpy.abs(np.real(sigtool.hilbert(slp, axis=-1)))**2)
print 'x sampled'
#print x_resample
print 'y sampled'
#print y_resample
xx=x_resample #[0]
yy=y_resample #[1]
#ploting with some style
plot(p,a,label='Time Signal') #to plot amplitud vs time
#plot(p,numpy.abs(a),label='Time signal')
plot(xx,yy,label='Resampled time signal Fourier technique Gauss window 1.5 ms ', linewidth=3)
#plot(ww,label='Window', linewidth=3)
#plot(p,y_resample2,label='Hilbert transformed sime signal', linewidth=3)
grid(True)
pylab.xlabel("time [s]")
pylab.ylabel("Amplitde")
legend()
show()
```

Here I tried two things, the first is use the resample function from scipy to get the envelope, but I have some problem with the signal amplitude that I don't understand yet (I uploaded the image obtained with the fourier technique but system does not allow me):

The second is to use the hilbert transform to get the envelope (now I uploaded the image with the hilbert transform again the system does not allow me) It is possible to run my code and obtain the two images. But ill put the with this link http://ceciliajarne.web.unq.edu.ar/?page_id=92&preview=true

Now the "envelope" fails again. I tried filtering the signal as i saw in some examples, but my signal is attenuated and i am not able to obtain the envelope. **Could anybody help my with my code or with a better idea to get the envelope?** It is possible to use as example any bird song (I can give you mine), but i need to see what happen with complex sounds not simple signals, because it is very different (with simple sounds both techniques are ok).

I also tried to adap the code that I found in: http://nipy.org/nitime/examples/mtm_baseband_power.html

But I am not able to get the proper parameters for my signal, and i don't understand the modulation part. I already ask to the code developers, and til waiting the answer.