Docker_v / README.md
XDHDD's picture
Update README.md
0e2f4aa verified
---
title: DockerFRN
emoji: 📉
colorFrom: gray
colorTo: red
app_file: app.py
sdk: docker
app_port: 8501
pinned: false
---
# FRN - Full-band Recurrent Network Official Implementation
**Improving performance of real-time full-band blind packet-loss concealment with predictive network - ICASSP 2023**
[![Generic badge](https://img.shields.io/badge/arXiv-2211.04071-brightgreen.svg?style=flat-square)](https://arxiv.org/abs/2211.04071)
[![Generic badge](https://img.shields.io/github/stars/Crystalsound/FRN?color=yellow&label=FRN&logo=github&style=flat-square)](https://github.com/Crystalsound/FRN/)
[![Generic badge](https://img.shields.io/github/last-commit/Crystalsound/FRN?color=blue&label=last%20commit&style=flat-square)](https://github.com/Crystalsound/FRN/commits)
## License and citation
This repository is released under the CC-BY-NC 4.0. license as found in the LICENSE file.
If you use our software, please cite as below.
For future queries, please contact [anh.nguyen@namitech.io](mailto:anh.nguyen@namitech.io).
Copyright © 2022 NAMI TECHNOLOGY JSC, Inc. All rights reserved.
```
@misc{Nguyen2022ImprovingPO,
title={Improving performance of real-time full-band blind packet-loss concealment with predictive network},
author={Viet-Anh Nguyen and Anh H. T. Nguyen and Andy W. H. Khong},
year={2022},
eprint={2211.04071},
archivePrefix={arXiv},
primaryClass={cs.LG}
}
```
# 1. Results
Our model achieved a significant gain over baselines. Here, we include the predicted packet loss concealment
mean-opinion-score (PLCMOS) using Microsoft's [PLCMOS](https://github.com/microsoft/PLC-Challenge/tree/main/PLCMOS)
service. Please refer to our paper for more benchmarks.
| Model | PLCMOS |
|---------|-----------|
| Input | 3.517 |
| tPLC | 3.463 |
| TFGAN | 3.645 |
| **FRN** | **3.655** |
We also provide several audio samples in [https://crystalsound.github.io/FRN/](https://crystalsound.github.io/FRN/) for
comparison.
# 2. Installation
## Setup
### Clone the repo
```
$ git clone https://github.com/Crystalsound/FRN.git
$ cd FRN
```
### Install dependencies
* Our implementation requires the `libsndfile` libraries for the Python packages `soundfile`. On Ubuntu, they can be
easily installed using `apt-get`:
```
$ apt-get update && apt-get install libsndfile-dev
```
* Create a Python 3.8 environment. Conda is recommended:
```
$ conda create -n frn python=3.8
$ conda activate frn
```
* Install the requirements:
```
$ pip install -r requirements.txt
```
# 3. Data preparation
In our paper, we conduct experiments on the [VCTK](https://datashare.ed.ac.uk/handle/10283/3443) dataset.
* Download and extract the datasets:
```
$ wget http://www.udialogue.org/download/VCTK-Corpus.tar.gz -O data/vctk/VCTK-Corpus.tar.gz
$ tar -zxvf data/vctk/VCTK-Corpus.tar.gz -C data/vctk/ --strip-components=1
```
After extracting the datasets, your `./data` directory should look like this:
```
.
|--data
|--vctk
|--wav48
|--p225
|--p225_001.wav
...
|--train.txt
|--test.txt
```
* In order to load the datasets, text files that contain training and testing audio paths are required. We have
prepared `train.txt` and `test.txt` files in `./data/vctk` directory.
# 4. Run the code
## Configuration
`config.py` is the most important file. Here, you can find all the configurations related to experiment setups,
datasets, models, training, testing, etc. Although the config file has been explained thoroughly, we recommend reading
our paper to fully understand each parameter.
## Training
* Adjust training hyperparameters in `config.py`. We provide the pretrained predictor in `lightning_logs/predictor` as stated in our paper. The FRN model can be trained entirely from scratch and will work as well. In this case, initiate `PLCModel(..., pred_ckpt_path=None)`.
* Run `main.py`:
```
$ python main.py --mode train
```
* Each run will create a version in `./lightning_logs`, where the model checkpoint and hyperparameters are saved. In
case you want to continue training from one of these versions, just set the argument `--version` of the above command
to your desired version number. For example:
```
# resume from version 0
$ python main.py --mode train --version 0
```
* To monitor the training curves as well as inspect model output visualization, run the tensorboard:
```
$ tensorboard --logdir=./lightning_logs --bind_all
```
![image.png](https://images.viblo.asia/eb2246f9-2747-43b9-8f78-d6c154144716.png)
## Evaluation
In our paper, we evaluated with 2 masking methods: simulation using Markov Chain and employing real traces in PLC
Challenge.
* Get the blind test set with loss traces:
```
$ wget http://plcchallenge2022pub.blob.core.windows.net/plcchallengearchive/blind.tar.gz
$ tar -xvf blind.tar.gz -C test_samples
```
* Modify `config.py` to change evaluation setup if necessary.
* Run `main.py` with a version number to be evaluated:
```
$ python main.py --mode eval --version 0
```
During the evaluation, several output samples are saved to `CONFIG.LOG.sample_path` for sanity testing.
## Configure a new dataset
Our implementation currently works with the VCTK dataset but can be easily extensible to a new one.
* Firstly, you need to prepare `train.txt` and `test.txt`. See `./data/vctk/train.txt` and `./data/vctk/test.txt` for
example.
* Secondly, add a new dictionary to `CONFIG.DATA.data_dir`:
```
{
'root': 'path/to/data/directory',
'train': 'path/to/train.txt',
'test': 'path/to/test.txt'
}
```
**Important:** Make sure each line in `train.txt` and `test.txt` joining with `'root'` is a valid path to its
corresponding audio file.
# 5. Audio generation
* In order to generate output audios, you need to modify `CONFIG.TEST.in_dir` to your input directory.
* Run `main.py`:
```
python main.py --mode test --version 0
```
The generated audios are saved to `CONFIG.TEST.out_dir`.
## ONNX inferencing
We provide ONNX inferencing scripts and the best ONNX model (converted from the best checkpoint)
at `lightning_logs/best_model.onnx`.
* Convert a checkpoint to an ONNX model:
```
python main.py --mode onnx --version 0
```
The converted ONNX model will be saved to `lightning_logs/version_0/checkpoints`.
* Put test audios in `test_samples` and inference with the converted ONNX model (see `inference_onnx.py` for more
details):
```
python inference_onnx.py --onnx_path lightning_logs/version_0/frn.onnx
```