Unofficial implementation of HiFi-GAN+ from the paper "Bandwidth Extension is All You Need" by Su, et al.

Overview

HiFi-GAN+

This project is an unoffical implementation of the HiFi-GAN+ model for audio bandwidth extension, from the paper Bandwidth Extension is All You Need by Jiaqi Su, Yunyun Wang, Adam Finkelstein, and Zeyu Jin.

The model takes a band-limited audio signal (usually 8/16/24kHz) and attempts to reconstruct the high frequency components needed to restore a full-band signal at 48kHz. This is useful for upsampling low-rate outputs from upstream tasks like text-to-speech, voice conversion, etc. or enhancing audio that was filtered to remove high frequency noise. For more information, please see this blog post.

Status

PyPI Tests Coveralls DOI

Wandb Gradio Colab

Usage

The example below uses a pretrained HiFi-GAN+ model to upsample a 1 second 24kHz sawtooth to 48kHz.

import torch
from hifi_gan_bwe import BandwidthExtender

model = BandwidthExtender.from_pretrained("hifi-gan-bwe-10-42890e3-vctk-48kHz")

fs = 24000
x = torch.full([fs], 261.63 / fs).cumsum(-1) % 1.0 - 0.5
y = model(x, fs)

There is a Gradio demo on HugggingFace Spaces where you can upload audio clips and run the model. You can also run the model on Colab with this notebook.

Running with pipx

The HiFi-GAN+ library can be run directly from PyPI if you have the pipx application installed. The following script uses a hosted pretrained model to upsample an MP3 file to 48kHz. The input audio can be in any format supported by the audioread library, and the output can be in any format supported by soundfile.

pipx run --python=python3.9 hifi-gan-bwe \
  hifi-gan-bwe-10-42890e3-vctk-48kHz \
  input.mp3 \
  output.wav

Running in a Virtual Environment

If you have a Python 3.9 virtual environment installed, you can install the HiFi-GAN+ library into it and run synthesis, training, etc. using it.

pip install hifi-gan-bwe

hifi-synth hifi-gan-bwe-10-42890e3-vctk-48kHz input.mp3 output.wav

Pretrained Models

The following models can be loaded with BandwidthExtender.from_pretrained and used for audio upsampling. You can also download the model file from the link and use it offline.

Name Sample Rate Parameters Wandb Metrics Notes
hifi-gan-bwe-10-42890e3-vctk-48kHz 48kHz 1M bwe-10-42890e3 Same as bwe-05, but uses bandlimited interpolation for upsampling, for reduced noise and aliasing. Uses the same parameters as resampy's kaiser_best mode.
hifi-gan-bwe-11-d5f542d-vctk-8kHz-48kHz 48kHz 1M bwe-11-d5f542d Same as bwe-10, but trained only on 8kHz sources, for specialized upsampling.
hifi-gan-bwe-12-b086d8b-vctk-16kHz-48kHz 48kHz 1M bwe-12-b086d8b Same as bwe-10, but trained only on 16kHz sources, for specialized upsampling.
hifi-gan-bwe-13-59f00ca-vctk-24kHz-48kHz 48kHz 1M bwe-13-59f00ca Same as bwe-10, but trained only on 24kHz sources, for specialized upsampling.
hifi-gan-bwe-05-cd9f4ca-vctk-48kHz 48kHz 1M bwe-05-cd9f4ca Trained for 200K iterations on the VCTK speech dataset with noise agumentation from the DNS Challenge dataset.

Training

If you want to train your own model, you can use any of the methods above to install/run the library or fork the repo and run the script commands locally. The following commands are supported:

Name Description
hifi-train Starts a new training run, pass in a name for the run.
hifi-clone Clone an existing training run at a given or the latest checkpoint.
hifi-export Optimize a model for inference and export it to a PyTorch model file (.pt).
hifi-synth Run model inference using a trained model on a source audio file.

For example, you might start a new training run called bwe-01 with the following command:

hifi-train 01

To train a model, you will first need to download the VCTK and DNS Challenge datasets. By default, these datasets are assumed to be in the ./data/vctk and ./data/dns directories. See train.py for how to specify your own training data directories. If you want to use a custom training dataset, you can implement a dataset wrapper in datasets.py.

The training scripts use wandb.ai for experiment tracking and visualization. Wandb metrics can be disabled by passing --no_wandb to the training script. All of my own experiment results are publicly available at wandb.ai/brentspell/hifi-gan-bwe.

Each training run is identified by a name and a git hash (ex: bwe-01-8abbca9). The git hash is used for simple experiment tracking, reproducibility, and model provenance. Using git to manage experiments also makes it easy to change model hyperparameters by simply changing the code, making a commit, and starting the training run. This is why there is no hyperparameter configuration file in the project, since I often end up having to change the code anyway to run interesting experiments.

Development

Setup

The following script creates a virtual environment using pyenv for the project and installs dependencies.

pyenv install 3.9.10
pyenv virtualenv 3.9.10 hifi-gan-bwe
pip install -r requirements.txt

If you want to run the hifi-* scripts described above in development, you can install the package locally:

pip install -e .

You can then run tests, etc. follows:

pytest --cov=hifi_gan_bwe
black .
isort --profile=black .
flake8 .
mypy .

These checks are also included in the pre-commit configuration for the project, so you can set them up to run automatically on commit by running

pre-commit install

Acknowledgements

The original research on the HiFi-GAN+ model is not my own, and all credit goes to the paper's authors. I also referred to kan-bayashi's excellent Parallel WaveGAN implementation, specifically the WaveNet module. If you use this code, please cite the original paper:

@inproceedings{su2021bandwidth,
  title={Bandwidth extension is all you need},
  author={Su, Jiaqi and Wang, Yunyun and Finkelstein, Adam and Jin, Zeyu},
  booktitle={ICASSP 2021-2021 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)},
  pages={696--700},
  year={2021},
  organization={IEEE},
  url={https://doi.org/10.1109/ICASSP39728.2021.9413575},
}

License

Copyright © 2022 Brent M. Spell

Licensed under the MIT License (the "License"). You may not use this package except in compliance with the License. You may obtain a copy of the License at

https://opensource.org/licenses/MIT

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.

Owner
Brent M. Spell
Brent M. Spell
PanopticBEV - Bird's-Eye-View Panoptic Segmentation Using Monocular Frontal View Images

Bird's-Eye-View Panoptic Segmentation Using Monocular Frontal View Images This r

63 Dec 16, 2022
A research toolkit for particle swarm optimization in Python

PySwarms is an extensible research toolkit for particle swarm optimization (PSO) in Python. It is intended for swarm intelligence researchers, practit

Lj Miranda 1k Dec 30, 2022
Deeprl - Standard DQN and dueling network for simple games

DeepRL This code implements the standard deep Q-learning and dueling network with experience replay (memory buffer) for playing simple games. DQN algo

Yao Zhou 6 Apr 12, 2020
Empowering journalists and whistleblowers

Onymochat Empowering journalists and whistleblowers Onymochat is an end-to-end encrypted, decentralized, anonymous chat application. You can also host

Samrat Dutta 19 Sep 02, 2022
Locationinfo - A script helps the user to show network information such as ip address

Description This script helps the user to show network information such as ip ad

Roxcoder 1 Dec 30, 2021
The Official PyTorch Implementation of DiscoBox.

DiscoBox: Weakly Supervised Instance Segmentation and Semantic Correspondence from Box Supervision Paper | Project page | Demo (Youtube) | Demo (Bilib

NVIDIA Research Projects 89 Jan 09, 2023
🤖 A Python library for learning and evaluating knowledge graph embeddings

PyKEEN PyKEEN (Python KnowlEdge EmbeddiNgs) is a Python package designed to train and evaluate knowledge graph embedding models (incorporating multi-m

PyKEEN 1.1k Jan 09, 2023
Computing Shapley values using VAEAC

Shapley values and the VAEAC method In this GitHub repository, we present the implementation of the VAEAC approach from our paper "Using Shapley Value

3 Nov 23, 2022
Landmarks Recogntion Web application using Streamlit.

Landmark Recognition Web-App using Streamlit Watch Tutorial for this project Source Trained model landmarks_classifier_asia_V1/1 is taken from the Ten

Kushal Bhavsar 5 Dec 12, 2022
Generative Flow Networks

Flow Network based Generative Models for Non-Iterative Diverse Candidate Generation Implementation for our paper, submitted to NeurIPS 2021 (also chec

Emmanuel Bengio 381 Jan 04, 2023
This repository contains the code for TABS, a 3D CNN-Transformer hybrid automated brain tissue segmentation algorithm using T1w structural MRI scans

This repository contains the code for TABS, a 3D CNN-Transformer hybrid automated brain tissue segmentation algorithm using T1w structural MRI scans. TABS relies on a Res-Unet backbone, with a Vision

6 Nov 07, 2022
Moer Grounded Image Captioning by Distilling Image-Text Matching Model

Moer Grounded Image Captioning by Distilling Image-Text Matching Model Requirements Python 3.7 Pytorch 1.2 Prepare data Please use git clone --recurse

YE Zhou 60 Dec 16, 2022
Vision Deep-Learning using Tensorflow, Keras.

Welcome! I am a computer vision deep learning developer working in Korea. This is my blog, and you can see everything I've studied here. https://www.n

kimminjun 6 Dec 14, 2022
PINN(s): Physics-Informed Neural Network(s) for von Karman vortex street

PINN(s): Physics-Informed Neural Network(s) for von Karman vortex street This is

ShotaDEGUCHI 2 Apr 18, 2022
paper list in the area of reinforcenment learning for recommendation systems

paper list in the area of reinforcenment learning for recommendation systems

HenryZhao 23 Jun 09, 2022
Implementation of Squeezenet in pytorch, pretrained models on Cifar 10 data to come

Pytorch Squeeznet Pytorch implementation of Squeezenet model as described in https://arxiv.org/abs/1602.07360 on cifar-10 Data. The definition of Sque

gaurav pathak 86 Oct 28, 2022
Locally Constrained Self-Attentive Sequential Recommendation

LOCKER This is the pytorch implementation of this paper: Locally Constrained Self-Attentive Sequential Recommendation. Zhankui He, Handong Zhao, Zhe L

Zhankui (Aaron) He 8 Jul 30, 2022
Code for "Human Pose Regression with Residual Log-likelihood Estimation", ICCV 2021 Oral

Human Pose Regression with Residual Log-likelihood Estimation [Paper] [arXiv] [Project Page] Human Pose Regression with Residual Log-likelihood Estima

JeffLi 347 Dec 24, 2022
Drone detection using YOLOv5

This drone detection system uses YOLOv5 which is a family of object detection architectures and we have trained the model on Drone Dataset. Overview I

Tushar Sarkar 27 Dec 20, 2022
Streamlit component for TensorBoard, TensorFlow's visualization toolkit

streamlit-tensorboard This is a work-in-progress, providing a function to embed TensorBoard, TensorFlow's visualization toolkit, in Streamlit apps. In

Snehan Kekre 27 Nov 13, 2022