Implementation of "Slow-Fast Auditory Streams for Audio Recognition, ICASSP, 2021" in PyTorch

Overview

Auditory Slow-Fast

This repository implements the model proposed in the paper:

Evangelos Kazakos, Arsha Nagrani, Andrew Zisserman, Dima Damen, Slow-Fast Auditory Streams for Audio Recognition, ICASSP, 2021

Project's webpage

arXiv paper

Citing

When using this code, kindly reference:

@ARTICLE{Kazakos2021SlowFastAuditory,
   title={Slow-Fast Auditory Streams For Audio Recognition},
   author={Kazakos, Evangelos and Nagrani, Arsha and Zisserman, Andrew and Damen, Dima},
           journal   = {CoRR},
           volume    = {abs/2103.03516},
           year      = {2021},
           ee        = {https://arxiv.org/abs/2103.03516},
}

Pretrained models

You can download our pretrained models on VGG-Sound and EPIC-KITCHENS-100:

  • Slow-Fast (EPIC-KITCHENS-100) link
  • Slow (EPIC-KITCHENS-100) link
  • Fast (EPIC-KITCHENS-100) link
  • Slow-Fast (VGG-Sound) link
  • Slow (VGG-Sound) link
  • Fast (VGG-Sound) link

Preparation

  • Requirements:
    • PyTorch 1.7.1
    • librosa: conda install -c conda-forge librosa
    • h5py: conda install h5py
    • wandb: pip install wandb
    • fvcore: pip install 'git+https://github.com/facebookresearch/fvcore'
    • simplejson: pip install simplejson
    • psutil: pip install psutil
    • tensorboard: pip install tensorboard
  • Add this repository to $PYTHONPATH.
export PYTHONPATH=/path/to/auditory-slow-fast/slowfast:$PYTHONPATH
  • VGG-Sound:
    1. Download the audio. For instructions see here
    2. Download train.pkl (link) and test.pkl (link). I converted the original train.csv and test.csv (found here) to pickle files with column names for easier use
  • EPIC-KITCHENS:
    1. From the annotation repository of EPIC-KITCHENS-100 (link), download: EPIC_100_train.pkl, EPIC_100_validation.pkl, and EPIC_100_test_timestamps.pkl. EPIC_100_train.pkl and EPIC_100_validation.pkl will be used for training/validation, while EPIC_100_test_timestamps.pkl can be used to obtain the scores to submit in the AR challenge.
    2. Download all the videos of EPIC-KITCHENS-100 using the download scripts found here, where you can also find detailed instructions on using the scripts.
    3. Extract audio from the videos by running:
    python audio_extraction/extract_audio.py /path/to/videos /output/path 
    
    1. Save audio in HDF5 format by running:
    python audio_extraction/wav_to_hdf5.py /path/to/audio /output/hdf5/EPIC-KITCHENS-100_audio.hdf5
    

Training/validation on EPIC-KITCHENS-100

To train the model run (fine-tuning from VGG-Sound pretrained model):

python tools/run_net.py --cfg configs/EPIC-KITCHENS/SLOWFAST_R50.yaml NUM_GPUS num_gpus 
OUTPUT_DIR /path/to/output_dir EPICKITCHENS.AUDIO_DATA_FILE /path/to/EPIC-KITCHENS-100_audio.hdf5 
EPICKITCHENS.ANNOTATIONS_DIR /path/to/annotations TRAIN.CHECKPOINT_FILE_PATH /path/to/VGG-Sound/pretrained/model

To train from scratch remove TRAIN.CHECKPOINT_FILE_PATH /path/to/VGG-Sound/pretrained/model.

You can also train the individual streams. For example, for training Slow run:

python tools/run_net.py --cfg configs/EPIC-KITCHENS/SLOW_R50.yaml NUM_GPUS num_gpus 
OUTPUT_DIR /path/to/output_dir EPICKITCHENS.AUDIO_DATA_FILE /path/to/EPIC-KITCHENS-100_audio.hdf5 
EPICKITCHENS.ANNOTATIONS_DIR /path/to/annotations TRAIN.CHECKPOINT_FILE_PATH /path/to/VGG-Sound/pretrained/model

To validate the model run:

python tools/run_net.py --cfg configs/EPIC-KITCHENS/SLOWFAST_R50.yaml NUM_GPUS num_gpus 
OUTPUT_DIR /path/to/experiment_dir EPICKITCHENS.AUDIO_DATA_FILE /path/to/EPIC-KITCHENS-100_audio.hdf5 
EPICKITCHENS.ANNOTATIONS_DIR /path/to/annotations TRAIN.ENABLE False TEST.ENABLE True 
TEST.CHECKPOINT_FILE_PATH /path/to/experiment_dir/checkpoints/checkpoint_best.pyth

To obtain scores on the test set run:

python tools/run_net.py --cfg configs/EPIC-KITCHENS/SLOWFAST_R50.yaml NUM_GPUS num_gpus 
OUTPUT_DIR /path/to/experiment_dir EPICKITCHENS.AUDIO_DATA_FILE /path/to/EPIC-KITCHENS-100_audio.hdf5 
EPICKITCHENS.ANNOTATIONS_DIR /path/to/annotations TRAIN.ENABLE False TEST.ENABLE True 
TEST.CHECKPOINT_FILE_PATH /path/to/experiment_dir/checkpoints/checkpoint_best.pyth 
EPICKITCHENS.TEST_LIST EPIC_100_test_timestamps.pkl EPICKITCHENS.TEST_SPLIT test

Training/validation on VGG-Sound

To train the model run:

python tools/run_net.py --cfg configs/VGG-Sound/SLOWFAST_R50.yaml NUM_GPUS num_gpus 
OUTPUT_DIR /path/to/output_dir VGGSOUND.AUDIO_DATA_DIR /path/to/dataset 
VGGSOUND.ANNOTATIONS_DIR /path/to/annotations 

To validate the model run:

python tools/run_net.py --cfg configs/VGG-Sound/SLOWFAST_R50.yaml NUM_GPUS num_gpus 
OUTPUT_DIR /path/to/experiment_dir VGGSOUND.AUDIO_DATA_DIR /path/to/dataset 
VGGSOUND.ANNOTATIONS_DIR /path/to/annotations TRAIN.ENABLE False TEST.ENABLE True 
TEST.CHECKPOINT_FILE_PATH /path/to/experiment_dir/checkpoints/checkpoint_best.pyth

License

The code is published under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License, found here.

Owner
Evangelos Kazakos
Evangelos Kazakos
๐™ฐ ๐™ผ๐šž๐šœ๐š’๐šŒ ๐™ฑ๐š˜๐š ๐™ฒ๐š›๐šŽ๐šŠ๐š๐šŽ๐š ๐™ฑ๐šข ๐šƒ๐šŽ๐šŠ๐š–๐™ณ๐š•๐š ๐Ÿ’–

TeamDltmusic ๐™ฐ ๐™ผ๐šž๐šœ๐š’๐šŒ ๐™ฑ๐š˜๐š ๐™ฒ๐š›๐šŽ๐šŠ๐š๐šŽ๐š ๐™ฑ๐šข ๐šƒ๐šŽ๐šŠ๐š–๐™ณ๐š•๐š ๐Ÿ’– Deploy String Session String Click hear you can find string session OR join He

TeamDlt 5 Jan 18, 2022
Speech recognition module for Python, supporting several engines and APIs, online and offline.

SpeechRecognition Library for performing speech recognition, with support for several engines and APIs, online and offline. Speech recognition engine/

Anthony Zhang 6.7k Jan 08, 2023
Voice package for Pycord adding extra features.

VoiceIO Voice package for Pycord adding extra features. Example Down bellow is an example of what you can currently do. import voiceio process = voic

pycord 1 Dec 24, 2021
Supysonic is a Python implementation of the Subsonic server API.

Supysonic Supysonic is a Python implementation of the Subsonic server API. Current supported features are: browsing (by folders or tags) streaming of

Alban 228 Nov 19, 2022
Minimal command-line music player written in Python

pyms Minimal command-line music player written in Python. Designed with elegance and minimalism. Resizes dynamically with your terminal. Dependencies

12 Sep 23, 2022
Real-Time Spherical Microphone Renderer for binaural reproduction in Python

ReTiSAR Implementation of the Real-Time Spherical Microphone Renderer for binaural reproduction in Python [1][2]. Contents: | Requirements | Setup | Q

Division of Applied Acoustics at Chalmers University of Technology 51 Dec 17, 2022
Stream Music ๐ŸŽต ๐˜ผ ๐™—๐™ค๐™ฉ ๐™ฉ๐™๐™–๐™ฉ ๐™˜๐™–๐™ฃ ๐™ฅ๐™ก๐™–๐™ฎ ๐™ข๐™ช๐™จ๐™ž๐™˜ ๐™ค๐™ฃ ๐™๐™š๐™ก๐™š๐™œ๐™ง๐™–๐™ข ๐™‚๐™ง๐™ค๐™ช๐™ฅ ๐™–๐™ฃ๐™™ ๐˜พ๐™๐™–๐™ฃ๐™ฃ๐™š๐™ก ๐™‘๐™ค๐™ž๐™˜๐™š ๐˜พ๐™๐™–๐™ฉ๐™จ ๐˜ผ๐™ซ๐™–๐™ž๐™ก?

Stream Music ๐ŸŽต ๐˜ผ ๐™—๐™ค๐™ฉ ๐™ฉ๐™๐™–๐™ฉ ๐™˜๐™–๐™ฃ ๐™ฅ๐™ก๐™–๐™ฎ ๐™ข๐™ช๐™จ๐™ž๐™˜ ๐™ค๐™ฃ ๐™๐™š๐™ก๐™š๐™œ๐™ง๐™–๐™ข ๐™‚๐™ง๐™ค๐™ช๐™ฅ ๐™–๐™ฃ๐™™ ๐˜พ๐™๐™–๐™ฃ๐™ฃ๐™š๐™ก ๐™‘๐™ค๐™ž๐™˜๐™š ๐˜พ๐™๐™–๐™ฉ๐™จ ๐˜ผ๐™ซ๐™–๐™ž๐™ก?

Sadew Jayasekara 15 Nov 12, 2022
live coding in python + supercollider

live coding in python + supercollider

Zack 6 Feb 06, 2022
Omniscient Mozart, being able to transcribe everything in the music, including vocal, drum, chord, beat, instruments, and more.

OMNIZART Omnizart is a Python library that aims for democratizing automatic music transcription. Given polyphonic music, it is able to transcribe pitc

MCTLab 1.3k Jan 08, 2023
Accompanying code for our paper "Point Cloud Audio Processing"

Point Cloud Audio Processing Krishna Subramani1, Paris Smaragdis1 1UIUC Paper For the necessary libraries/prerequisites, please use conda/anaconda to

Krishna Subramani 17 Nov 17, 2022
Spotifyd - An open source Spotify client running as a UNIX daemon.

Spotifyd An open source Spotify client running as a UNIX daemon. Spotifyd streams music just like the official client, but is more lightweight and sup

8.5k Jan 09, 2023
XA Music Player - Telegram Music Bot

XA Music Player Requirements ๐Ÿ“ FFmpeg (Latest) NodeJS nodesource.com (NodeJS 17+) Python (3.10+) PyTgCalls (Lastest) MongoDB (3.12.1) 2nd Telegram Ac

RexAshh 3 Jun 30, 2022
Tune in is a Collaborative Music Playing Systems where multiple guests can join a room and enjoy the song being played

โœจA collaborative music playing systems๐ŸŽถ where multiple guests can join a room โžก๐Ÿšช and enjoy the song๐ŸŽง being played.

Vedansh Vijaywargiya 8 Nov 05, 2022
Graphical interface to control granular sound synthesis.

Granular sound synthesis interface SoundGrain is a graphical interface where users can draw and edit trajectories to control granular sound synthesis

Olivier Bรฉlanger 122 Dec 10, 2022
A python program for visualizing MIDI files, and displaying them in a spiral layout

SpiralMusic_python A python program for visualizing MIDI files, and displaying them in a spiral layout For a hardware version using Teensy & LED displ

Gavin 6 Nov 23, 2022
Neural building blocks for speaker diarization: speech activity detection, speaker change detection, overlapped speech detection, speaker embedding

โš ๏ธ Checkout develop branch to see what is coming in pyannote.audio 2.0: a much smaller and cleaner codebase Python-first API (the good old pyannote-au

pyannote 2.1k Dec 31, 2022
Library for working with sound files of the format: .ogg, .mp3, .wav

Library for working with sound files of the format: .ogg, .mp3, .wav. By work is meant - playing sound files in a straight line and in the background, obtaining information about the sound file (auth

Romanin 2 Dec 15, 2022
Simple, hackable offline speech to text - using the VOSK-API.

Nerd Dictation Offline Speech to Text for Desktop Linux. This is a utility that provides simple access speech to text for using in Linux without being

Campbell Barton 844 Jan 07, 2023
A collection of python scripts for extracting and analyzing acoustics from audio files.

pyAcoustics A collection of python scripts for extracting and analyzing acoustics from audio files. Contents 1 Common Use Cases 2 Major revisions 3 Fe

Tim 74 Dec 26, 2022
A collection of free MIDI chords and progressions ready to be used in your DAW, Akai MPC, or Roland MC-707/101

A collection of free MIDI chords and progressions ready to be used in your DAW, Akai MPC, or Roland MC-707/101

921 Jan 05, 2023