Indian Institute of Technology Tirupati
In typical day-to-day scenarios such as classroom lectures and auditorium speeches, we encounter various kinds of noises from appliances like fan and air conditioner and surrounding areas in these speech signals. These noises makes listeners difficult to understand and interpret the information in given audio signals.
Most of the noises in indoor speech signals can be typically categorised into two kinds - additive noises and unwanted frequency noises. Therefore, we design a framework to postprocess these speech signals to suppress the forementioned types of noise without too much degradation of the required information.
We propose a two-block framework to suppress additive noises and unwanted frequencies.
Original Signal | Processed Signal |
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Original Spectrum | Processed Spectrum |
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sample results can be found in samples
directory.
To conclude, these techniques are limited to speech signals with only additive noises and unwanted frequencies with certain valid assumptions. In the future, this project can be extented to real-time processing techniques for noise cancellation.