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Audio Slicer that uses silence detection to split .wav audio files into several .wav samples.

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AudioSlicer

A simple Audio Slicer in Python which can split .wav audio files into multiple .wav samples, based on silence detection. Also, it dumps a .json that contains the periods of time in which the slice occours, in the following format:

{sample nº : [cut start, cut end]}. Ex.:

{"0": ["0:0:0", "0:0:3"], "1": ["0:0:3", "0:0:10"], "2": ["0:10:0", "0:0:22"], "3": ["0:0:22", "0:0:32"]}

The code was taken from /andrewphillipdoss. Thanks!

The filename will also contains the parts when the video were sliced, ex.: sample01_0349_0401.wav

AI Adaptation

This project will turn into a neural network which can detect audio silence and split the files. It will also needs to learn to detect 'breathing noises' from the dictator and remove from it.

Python 3.11.0

numpy (1.24.1)

scypi (1.10.0)

tqdm (4.64.1)

Usage

To run this code, just change the path of the input_file and output_dir inside the code.

❗Ps: Please note that in order for your audio file to be cut into samples, it should contain periods of "silence". If you are trying to extract voice samples from a song, for example, it may not work as expected.

Depending on the level of noise in your audio, the algorithm may skip the silence windows, resulting in missed cuts. Ensure that your audio is free from unwanted noise and that the silences are clearly defined. You can adjust the parameters of min_silence_length, silence_threshold, and step_duration to modify the length, amplitude, and duration of the silence window in order to better match your audio

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Audio Slicer that uses silence detection to split .wav audio files into several .wav samples.

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