An official reimplementation of the method described in the INTERSPEECH 2021 paper - Speech Resynthesis from Discrete Disentangled Self-Supervised Representations.

Overview

Speech Resynthesis from Discrete Disentangled Self-Supervised Representations

Implementation of the method described in the Speech Resynthesis from Discrete Disentangled Self-Supervised Representations.

Abstract: We propose using self-supervised discrete representations for the task of speech resynthesis. To generate disentangled representation, we separately extract low-bitrate representations for speech content, prosodic information, and speaker identity. This allows to synthesize speech in a controllable manner. We analyze various state-of-the-art, self-supervised representation learning methods and shed light on the advantages of each method while considering reconstruction quality and disentanglement properties. Specifically, we evaluate the F0 reconstruction, speaker identification performance (for both resynthesis and voice conversion), recordings' intelligibility, and overall quality using subjective human evaluation. Lastly, we demonstrate how these representations can be used for an ultra-lightweight speech codec. Using the obtained representations, we can get to a rate of 365 bits per second while providing better speech quality than the baseline methods.

Quick Links

Setup

Software

Requirements:

  • Python >= 3.6
  • PyTorch v1.8
  • Install dependencies
    git clone https://github.com/facebookresearch/speech-resynthesis.git
    cd speech-resynthesis
    pip install -r requirements.txt

Data

For LJSpeech:

  1. Download LJSpeech dataset from here into data/LJSpeech-1.1 folder.
  2. Downsample audio from 22.05 kHz to 16 kHz and pad
    bash
    python ./scripts/preprocess.py \
    --srcdir data/LJSpeech-1.1/wavs \
    --outdir data/LJSpeech-1.1/wavs_16khz \
    --pad
    

For VCTK:

  1. Download VCTK dataset from here into data/VCTK-Corpus folder.
  2. Downsample audio from 48 kHz to 16 kHz, trim trailing silences and pad
    python ./scripts/preprocess.py \
    --srcdir data/VCTK-Corpus/wav48 \
    --outdir data/VCTK-Corpus/wav16 \
    --trim --pad

Training

F0 Quantizer Model

To train F0 quantizer model, use the following command:

python -m torch.distributed.launch --nproc_per_node 8 train_f0_vq.py \
--checkpoint_path checkpoints/lj_f0_vq \
--config configs/LJSpeech/f0_vqvae.json

Set <NUM_GPUS> to the number of availalbe GPUs on your machine.

Resynthesis Model

To train a resynthesis model, use the following command:

python -m torch.distributed.launch --nproc_per_node <NUM_GPUS> train.py \
--checkpoint_path checkpoints/lj_vqvae \
--config configs/LJSpeech/vqvae256_lut.json

Supported Configurations

Currently, we support the following training schemes:

Dataset SSL Method Dictionary Size Config Path
LJSpeech HuBERT 100 configs/LJSpeech/hubert100_lut.json
LJSpeech CPC 100 configs/LJSpeech/cpc100_lut.json
LJSpeech VQVAE 256 configs/LJSpeech/vqvae256_lut.json
VCTK HuBERT 100 configs/VCTK/hubert100_lut.json
VCTK CPC 100 configs/VCTK/cpc100_lut.json
VCTK VQVAE 256 configs/VCTK/vqvae256_lut.json

Inference

To generate, simply run:

python inference.py \
--checkpoint_file checkpoints/0 \
-n 10 \
--output_dir generations

To synthesize multiple speakers:

python inference.py \
--checkpoint_file checkpoints/vctk_cpc100 \
-n 10 \
--vc \
--input_code_file datasets/VCTK/cpc100/test.txt \
--output_dir generations_multispkr

You can also generate with codes from a different dataset:

python inference.py \
--checkpoint_file checkpoints/lj_cpc100 \
-n 10 \
--input_code_file datasets/VCTK/cpc100/test.txt \
--output_dir generations_vctk_to_lj

Preprocessing New Datasets

CPC / HuBERT Coding

To quantize new datasets with CPC or HuBERT follow the instructions described in the GSLM code.

To parse CPC output:

python scripts/parse_cpc_codes.py \
--manifest cpc_output_file \
--wav-root wav_root_dir \
--outdir parsed_cpc

To parse HuBERT output:

python parse_hubert_codes.py \
--codes hubert_output_file \
--manifest hubert_tsv_file \
--outdir parsed_hubert 

VQVAE Coding

First, you will need to download LibriLight dataset and move it to data/LibriLight.

For VQVAE, train a vqvae model using the following command:

python -m torch.distributed.launch --nproc_per_node <NUM_GPUS> train.py \
--checkpoint_path checkpoints/ll_vq \
--config configs/LibriLight/vqvae256.json

To extract VQVAE codes:

python infer_vqvae_codes.py \
--input_dir folder_with_wavs_to_code \
--output_dir vqvae_output_folder \
--checkpoint_file checkpoints/ll_vq

To parse VQVAE output:

 python parse_vqvae_codes.py \
 --manifest vqvae_output_file \
 --outdir parsed_vqvae

License

You may find out more about the license here.

Citation

@inproceedings{polyak21_interspeech,
  author={Adam Polyak and Yossi Adi and Jade Copet and 
          Eugene Kharitonov and Kushal Lakhotia and 
          Wei-Ning Hsu and Abdelrahman Mohamed and Emmanuel Dupoux},
  title={{Speech Resynthesis from Discrete Disentangled Self-Supervised Representations}},
  year=2021,
  booktitle={Proc. Interspeech 2021},
}

Acknowledgements

This implementation uses code from the following repos: HiFi-GAN and Jukebox, as described in our code.

Owner
Facebook Research
Facebook Research
A font family with a great monospaced variant for programmers.

Fantasque Sans Mono A programming font, designed with functionality in mind, and with some wibbly-wobbly handwriting-like fuzziness that makes it unas

Jany Belluz 6.3k Jan 08, 2023
Efficient and intelligent interactive segmentation annotation software

Efficient and intelligent interactive segmentation annotation software

294 Dec 30, 2022
EfficientNetV2-with-TPU - Cifar-10 case study

EfficientNetV2-with-TPU EfficientNet EfficientNetV2 adalah jenis jaringan saraf convolutional yang memiliki kecepatan pelatihan lebih cepat dan efisie

Sultan syach 1 Dec 28, 2021
Robbing the FED: Directly Obtaining Private Data in Federated Learning with Modified Models

Robbing the FED: Directly Obtaining Private Data in Federated Learning with Modified Models This repo contains a barebones implementation for the atta

16 Dec 04, 2022
This framework implements the data poisoning method found in the paper Adversarial Examples Make Strong Poisons

Adversarial poison generation and evaluation. This framework implements the data poisoning method found in the paper Adversarial Examples Make Strong

31 Nov 01, 2022
Skipgram Negative Sampling in PyTorch

PyTorch SGNS Word2Vec's SkipGramNegativeSampling in Python. Yet another but quite general negative sampling loss implemented in PyTorch. It can be use

Jamie J. Seol 287 Dec 14, 2022
CoRe: Contrastive Recurrent State-Space Models

CoRe: Contrastive Recurrent State-Space Models This code implements the CoRe model and reproduces experimental results found in Robust Robotic Control

Apple 21 Aug 11, 2022
Official Implementation of DAFormer: Improving Network Architectures and Training Strategies for Domain-Adaptive Semantic Segmentation

DAFormer: Improving Network Architectures and Training Strategies for Domain-Adaptive Semantic Segmentation [Arxiv] [Paper] As acquiring pixel-wise an

Lukas Hoyer 305 Dec 29, 2022
Python scripts for performing road segemtnation and car detection using the HybridNets multitask model in ONNX.

ONNX-HybridNets-Multitask-Road-Detection Python scripts for performing road segemtnation and car detection using the HybridNets multitask model in ONN

Ibai Gorordo 45 Jan 01, 2023
Perform zero-order Hankel Transform for an 1D array (float or real valued).

perform zero-order Hankel Transform for an 1D array (float or real valued). An discrete form of Parseval theorem is guaranteed. Suit for iterative problems.

1 Jan 17, 2022
Code for Overinterpretation paper Overinterpretation reveals image classification model pathologies

Overinterpretation This repository contains the code for the paper: Overinterpretation reveals image classification model pathologies Authors: Brandon

Gifford Lab, MIT CSAIL 17 Dec 10, 2022
Video-Music Transformer

VMT Video-Music Transformer (VMT) is an attention-based multi-modal model, which generates piano music for a given video. Paper https://arxiv.org/abs/

Chin-Tung Lin 5 Jul 13, 2022
PyTorch implementation of ECCV 2020 paper "Foley Music: Learning to Generate Music from Videos "

Foley Music: Learning to Generate Music from Videos This repo holds the code for the framework presented on ECCV 2020. Foley Music: Learning to Genera

Chuang Gan 30 Nov 03, 2022
Learning Optical Flow from a Few Matches (CVPR 2021)

Learning Optical Flow from a Few Matches This repository contains the source code for our paper: Learning Optical Flow from a Few Matches CVPR 2021 Sh

Shihao Jiang (Zac) 159 Dec 16, 2022
Reproduce partial features of DeePMD-kit using PyTorch.

DeePMD-kit on PyTorch For better understand DeePMD-kit, we implement its partial features using PyTorch and expose interface consuing descriptors. Tec

Shaochen Shi 8 Dec 17, 2022
Pytorch implementation of "M-LSD: Towards Light-weight and Real-time Line Segment Detection"

M-LSD: Towards Light-weight and Real-time Line Segment Detection Pytorch implementation of "M-LSD: Towards Light-weight and Real-time Line Segment Det

123 Jan 04, 2023
Mip-NeRF: A Multiscale Representation for Anti-Aliasing Neural Radiance Fields.

This repository contains the code release for Mip-NeRF: A Multiscale Representation for Anti-Aliasing Neural Radiance Fields. This implementation is written in JAX, and is a fork of Google's JaxNeRF

Google 625 Dec 30, 2022
NALSM: Neuron-Astrocyte Liquid State Machine

NALSM: Neuron-Astrocyte Liquid State Machine This package is a Tensorflow implementation of the Neuron-Astrocyte Liquid State Machine (NALSM) that int

Computational Brain Lab 4 Nov 28, 2022
End-To-End Memory Network using Tensorflow

MemN2N Implementation of End-To-End Memory Networks with sklearn-like interface using Tensorflow. Tasks are from the bAbl dataset. Get Started git clo

Dominique Luna 339 Oct 27, 2022
This repository is for DSA and CP scripts for reference.

dsa-script-collections This Repo is the collection of DSA and CP scripts for reference. Contents Python Bubble Sort Insertion Sort Merge Sort Quick So

Aditya Kumar Pandey 9 Nov 22, 2022