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Audio Reverb Removal with Pytorch

Code to train a custom time-domain autoencoder to dereverb audio. The SOX reverb algorithm was used to explore as a baseline before moving to impulse responses.

Will not run on windows, as its not SOX compatible. Linux only

Trained using pytorch 1.10.1 on a single RTX 3090 in a Ubuntu Workstation.

Examples can be heard at the bottom of this README

Designed for Speech, CD-Quality (44.1khz)

Install dependencies

Import the conda env file to a new environment

conda env create -f deverb-env.yml -n envName

Download dataset

Dataset used to train this model was the Divide and Remaster dataset introduced by Mistubishi.

Can download here https://zenodo.org/record/5574713

Model Architecture

Model architecture can be found in dereverb/auto_verb.py. It is a custom time domain denoising autoencoder inspired by Demucs and ConvTasNet

Training

use train_reverb.py to train a model. You can configure hyperparemeters like epochs, sample rate, etc using parser arguments

//example
python trainReverb.py modelName --epochs 1000000 -lr .0001 -b 16 -sec 2

Model was optimized using a L1 loss, along with a Multi-res STFT adapted from the CleanUNET paper

CleanUnet

A trainConfig will be generated in the configs folder saving various hyperparameters. This is to continue training in the event of a crash or to explore hyperparameters of trained models

Tensorboard is utilized to view model outputs during training and inspect train/test losses

Evaluate

metrics.py is used to generate metrics relating to the L1 delta and SI-SNR of the output and ground truth audio file

Test set METRICS

Average L1 Delta = .005
Average SISNR = 11.68db

Visualization

dereverb_webapp.py is a streamlit website to evaluate model outputs in real time with the ability to configure reverb parameters.