I don't understand why the ifft(fft(myFunction)) is not the same as my function. It seems to be the same shape but a factor of 2 out (ignoring the constant y-offset). All the documentation I can see ...
If I have a waveform x such as x = [math.sin(W*t + Ph) for t in range(16)] with arbitrary W and Ph, and I calculate its (Real) FFT f with f = numpy.fft.rfft(x) I can get the original x with ...
whether i just nest them (iff(fft(audio))) or try window-by-window (window the audio, do the fft, do the ifft, then invert the window, replacing zero with eps, then merge the samples back (trying abs ...
I perform an iFFT on a complex-valued spectrum and change the corresponding time domain-signal by lets say nulling the first sample. Finally I transform it back to frequency domain via FFT. I wonder ...
I perform the iFFT on a symmetric spectrum (using Python). Why is the result not an real-valued signal but contains complex values? # My symmetric spectrum spectrum = numpy.array( ...