Skip to content

PARCnet: Hybrid Packet Loss Concealment for Real-Time Networked Music Applications.

Notifications You must be signed in to change notification settings

polimi-ispl/PARCnet

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

65 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

PARCnet: Hybrid Packet Loss Concealment for Real-Time Networked Music Applications

This repository will contain the accompanying code for

A. I. Mezza, M. Amerena, A. Bernardini, and A. Sarti, "Hybrid Packet Loss Concealment for Real-Time Networked Music Applications," in IEEE Open Journal of Signal Processing, 2023, doi: 10.1109/OJSP.2023.3343318.

🆕 Update (May 20, 2024)

A new, updated version of PARCnet named PARCnet-IS² has been released!

PARCnet-IS² was trained on 44.1 kHz single-instrument audio clips, works with packets of size 512 samples (11.6 ms), and features an improved inference mechanism that fixes cross-fading in case of a burst packet loss.

PARCnet-IS² is the baseline model for the IEEE-IS² 2024 Music Packet Loss Concealment Challenge, which will be part of the 2nd IEEE International Workshop on Networked Immersive Audio (IEEE IWNIA 2024), a satellite event of the 5th IEEE International Symposium on the Internet of Sounds (IEEE IS² 2024).

Model weights, as well as tranining and inference code for PARCnet-IS² are available at the official GitHub repo!

Model Inference ✔️

In this repository, we provide all the necessary code to run a pretrained PARCnet model.


⚠️ Note: The inference code in this repo contains a known bug related to the cross-fade between consecutive missing packets. While we work on solving the issue, please check out PARCnet-IS², which correctly deals with burst losses.


To test PARCnet using our piano example, simply run example_parcnet_inference.py. This will create two audio files in the predictions folder.

To test PARCnet using your own audio files,

  • Place your files in test_data/audio
  • Update audio_test_path in the config.yaml file
  • Run create_default_trace.py to create a trace in test_data/traces/default
  • Run example_parcnet_inference.py

Make sure all test files are in WAV format.

Model Training ⚠️


🔍 Note: Training code for PARCnet-IS² is now available. To train the original PARCnet model from scratch, please refer to the updated implementation available here.


The PARCnet's neural branch provided in this repository was trained on 1000 tracks taken from the MAESTRO Dataset V3.0.0, a large corpus of virtuoso piano recordings. The training hyperparameters are reported in parcnet/config.yaml. For further details, please refer to our paper.

The current version of PARCnet was trained with

  • A sampling rate of 32 kHz. We encourage you not to change sr in config.yaml.
  • Packets of 10 ms (320 samples at 32 kHz). We encourage you not to change packet_dim in config.yaml.

Nevertheless, the code will not break if a different sampling rate or packet size is chosen. Whereas other inference scenarios have not been tested, it seems that PARCnet is somehow still able to work at 16 kHz with packets of 10 ms and, to some extent, 20 ms.

Packet Traces 📦

To generalize the inference mechanism, we use traces. A trace is a np.ndarray containing a binary sequence of 1s and 0s. A 1 indicate a packet loss, whereas a 0 indicate that the corresponding packet was correctly received (valid packet). We provide a script to create default traces, i.e., traces with evenly-spaced losses; see parcnet/create_default_trace.py.

Traces depend on the chosen sampling frequency and packet size.

If you wish to modify global or path parameters in config.yaml, please run create_default_trace.py after the changes have been made.

Audio Examples 🎧

Audio examples are available at our GitHub demo page.

About

PARCnet: Hybrid Packet Loss Concealment for Real-Time Networked Music Applications.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages