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I want to convolve speech files with the impulse response.

Let say on average the speech files have a duration of ten seconds. I am trying to do the convolution using numpy or scipy libraries.

When I try I am getting memory error! I am sorry that I can't provide the speech file and impulse response here. Please use any audio files to check this.

import numpy as np
convolved_speech_data = np.convolve(speech_data, impulse_response)

I am getting the following error.

return multiarray.correlate(a, v[::-1], mode)
MemoryError

Process finished with exit code 1

I don't know why this throws error, do I need to normalize the audio before convolving or do I have to use windowing?

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    What's the shape of both your speech_data and impulse_response? I.e. the output of speech_data.shape and impulse_response.shape. – blubberdiblub Apr 15 at 14:17
  • @blubberdiblub Thank you, your clue got rid of the above error. But after convolution, the audio is clipped. Do you know how can I get rid of this? – M. Denis Apr 15 at 14:35
  • Um, I wasn't aware that I gave a clue :) I honestly just asked for more information. Depends on what you mean by clipped. Do you mean there's something missing at the beginning or end? Or are you referring to "clipping" where there's audible distortion or crackles? – blubberdiblub Apr 15 at 14:56
  • The problem was the impulse response was saved as a double mono, so there was a mismatch with the shape. What I meant by clipping is, the convoluted audio is having way more amplitude than the original one! It looks like the whole audio is just amplified by a certain target level! But there is no audible distortion. – M. Denis Apr 15 at 15:03
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    Actually, it's likely dividing by impulse_response.sum() instead of the earlier formula. That works when I try it with a sine source signal and actual IR values as opposed to the random values I used earlier. Just dividing by the sum is also consistent with what I've seen done on image filtering convolutions. – blubberdiblub Apr 15 at 16:24

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