Repository for the paper: VoiceMe: Personalized voice generation in TTS

Overview

๐Ÿ—ฃ VoiceMe: Personalized voice generation in TTS

arXiv

Abstract

Novel text-to-speech systems can generate entirely new voices that were not seen during training. However, it remains a difficult task to efficiently create personalized voices from a high dimensional speaker space. In this work, we use speaker embeddings from a state-of-the-art speaker verification model (SpeakerNet) trained on thousands of speakers to condition a TTS model. We employ a human sampling paradigm to explore this speaker latent space. We show that users can create voices that fit well to photos of faces, art portraits, and cartoons. We recruit online participants to collectively manipulate the voice of a speaking face. We show that (1) a separate group of human raters confirms that the created voices match the faces, (2) speaker gender apparent from the face is well-recovered in the voice, and (3) people are consistently moving towards the real voice prototype for the given face. Our results demonstrate that this technology can be applied in a wide number of applications including character voice development in audiobooks and games, personalized speech assistants, and individual voices for people with speech impairment.

Demos

  • ๐Ÿ“ข Demo website
  • ๐Ÿ”‡ Unmute to listen to the videos on Github:
Examples-for-art-works.mp4
Example-chain.mp4

Preprocessing

Setup the repository

git clone https://github.com/polvanrijn/VoiceMe.git
cd VoiceMe
main_dir=$PWD

preprocessing_env="$main_dir/preprocessing-env"
conda create --prefix $preprocessing_env python=3.7
conda activate $preprocessing_env
pip install Cython
pip install git+https://github.com/NVIDIA/[email protected]#egg=nemo_toolkit[all]
pip install requests

Create face styles

We used the same sentence ("Kids are talking by the door", neutral recording) from the RAVDESS corpus from all 24 speakers. You can download all videos by running download_RAVDESS.sh. However, the stills used in the paper are also part of the repository (stills). We can create the AI Gahaku styles by running python ai_gahaku.py and the toonified version by running python toonify.py (you need to add your API key).

Obtain the PCA space

The model used in the paper was trained on SpeakerNet embeddings, so we to extract the embeddings from a dataset. Here we use the commonvoice data. To download it, run: python preprocess_commonvoice.py --language en

To extract the principal components, run compute_pca.py.

Synthesis

Setup

We'll assume, you'll setup a remote instance for synthesis. Clone the repo and setup the virtual environment:

git clone https://github.com/polvanrijn/VoiceMe.git
cd VoiceMe
main_dir=$PWD

synthesis_env="$main_dir/synthesis-env"
conda create --prefix $synthesis_env python=3.7
conda activate $synthesis_env

##############
# Setup Wav2Lip
##############
git clone https://github.com/Rudrabha/Wav2Lip.git
cd Wav2Lip

# Install Requirements
pip install -r requirements.txt
pip install opencv-python-headless==4.1.2.30
wget "https://www.adrianbulat.com/downloads/python-fan/s3fd-619a316812.pth" -O "face_detection/detection/sfd/s3fd.pth"  --no-check-certificate

# Install as package
mv ../setup_wav2lip.py setup.py
pip install -e .
cd ..


##############
# Setup VITS
##############
git clone https://github.com/jaywalnut310/vits
cd vits

# Install Requirements
pip install -r requirements.txt

# Install monotonic_align
mv monotonic_align ../monotonic_align

# Download the VCTK checkpoint
pip install gdown
gdown https://drive.google.com/uc?id=11aHOlhnxzjpdWDpsz1vFDCzbeEfoIxru

# Install as package
mv ../setup_vits.py setup.py
pip install -e .

cd ../monotonic_align
python setup.py build_ext --inplace
cd ..


pip install flask
pip install wget

You'll need to do the last step manually (let me know if you know an automatic way). Download the checkpoint wav2lip_gan.pth from here and put it in Wav2Lip/checkpoints. Make sure you have espeak installed and it is in PATH.

Running

Start the remote service (I used port 31337)

python server.py --port 31337

You can send an example request locally, by running (don't forget to change host and port accordingly):

python request_demo.py

We also made a small 'playground' so you can see how slider values will influence the voice. Start the local flask app called client.py.

Experiment

The GSP experiment cannot be shared at this moment, as PsyNet is still under development.

Owner
Pol van Rijn
PhD student at Max Planck Institute for Empirical Aesthetics
Pol van Rijn
Code associated with the Don't Stop Pretraining ACL 2020 paper

dont-stop-pretraining Code associated with the Don't Stop Pretraining ACL 2020 paper Citation @inproceedings{dontstoppretraining2020, author = {Suchi

AI2 449 Jan 04, 2023
A PyTorch implementation of the Transformer model in "Attention is All You Need".

Attention is all you need: A Pytorch Implementation This is a PyTorch implementation of the Transformer model in "Attention is All You Need" (Ashish V

Yu-Hsiang Huang 7.1k Jan 05, 2023
GVT is a generic translation tool for parts of text on the PC screen with Text to Speak functionality.

GVT is a generic translation tool for parts of text on the PC screen with Text to Speech functionality. I wanted to create it because the existing tools that I experimented with did not satisfy me in

Nuked 1 Aug 21, 2022
Download videos from YouTube/Twitch/Twitter right in the Windows Explorer, without installing any shady shareware apps

youtube-dl and ffmpeg Windows Explorer Integration Download videos from YouTube/Twitch/Twitter and more (any platform that is supported by youtube-dl)

Wolfgang 226 Dec 30, 2022
IMDB film review sentiment classification based on BERT's supervised learning model.

IMDB film review sentiment classification based on BERT's supervised learning model. On the other hand, the model can be extended to other natural language multi-classification tasks.

Paris 1 Apr 17, 2022
Creating a chess engine using GPT-3

GPT3Chess Creating a chess engine using GPT-3 Code for my article : https://towardsdatascience.com/gpt-3-play-chess-d123a96096a9 My game (white) vs GP

19 Dec 17, 2022
FedNLP: A Benchmarking Framework for Federated Learning in Natural Language Processing

FedNLP is a research-oriented benchmarking framework for advancing federated learning (FL) in natural language processing (NLP). It uses FedML repository as the git submodule. In other words, FedNLP

FedML-AI 216 Nov 27, 2022
Simple GUI where you can enter an article and get a crisp summarized version.

Text-Summarization-using-TextRank-BART Simple GUI where you can enter an article and get a crisp summarized version. How to run: Clone the repo Instal

Rohit P 4 Sep 28, 2022
DziriBERT: a Pre-trained Language Model for the Algerian Dialect

DziriBERT is the first Transformer-based Language Model that has been pre-trained specifically for the Algerian Dialect.

117 Jan 07, 2023
Universal Adversarial Triggers for Attacking and Analyzing NLP (EMNLP 2019)

Universal Adversarial Triggers for Attacking and Analyzing NLP This is the official code for the EMNLP 2019 paper, Universal Adversarial Triggers for

Eric Wallace 248 Dec 17, 2022
Tools for curating biomedical training data for large-scale language modeling

Tools for curating biomedical training data for large-scale language modeling

BigScience Workshop 242 Dec 25, 2022
Tools to download and cleanup Common Crawl data

cc_net Tools to download and clean Common Crawl as introduced in our paper CCNet. If you found these resources useful, please consider citing: @inproc

Meta Research 483 Jan 02, 2023
A simple recipe for training and inferencing Transformer architecture for Multi-Task Learning on custom datasets. You can find two approaches for achieving this in this repo.

multitask-learning-transformers A simple recipe for training and inferencing Transformer architecture for Multi-Task Learning on custom datasets. You

Shahrukh Khan 48 Jan 02, 2023
Code for "Finetuning Pretrained Transformers into Variational Autoencoders"

transformers-into-vaes Code for Finetuning Pretrained Transformers into Variational Autoencoders (our submission to NLP Insights Workshop 2021). Gathe

Seongmin Park 22 Nov 26, 2022
A framework for training and evaluating AI models on a variety of openly available dialogue datasets.

ParlAI (pronounced โ€œpar-layโ€) is a python framework for sharing, training and testing dialogue models, from open-domain chitchat, to task-oriented dia

Facebook Research 9.7k Jan 09, 2023
PyTorch original implementation of Cross-lingual Language Model Pretraining.

XLM NEW: Added XLM-R model. PyTorch original implementation of Cross-lingual Language Model Pretraining. Includes: Monolingual language model pretrain

Facebook Research 2.7k Dec 27, 2022
Learning General Purpose Distributed Sentence Representations via Large Scale Multi-task Learning

GenSen Learning General Purpose Distributed Sentence Representations via Large Scale Multi-task Learning Sandeep Subramanian, Adam Trischler, Yoshua B

Maluuba Inc. 309 Oct 19, 2022
Free and Open Source Machine Translation API. 100% self-hosted, offline capable and easy to setup.

LibreTranslate Try it online! | API Docs | Community Forum Free and Open Source Machine Translation API, entirely self-hosted. Unlike other APIs, it d

3.4k Dec 27, 2022
TFPNER: Exploration on the Named Entity Recognition of Token Fused with Part-of-Speech

TFPNER TFPNER: Exploration on the Named Entity Recognition of Token Fused with Part-of-Speech Named entity recognition (NER), which aims at identifyin

1 Feb 07, 2022
Sequence-to-Sequence learning using PyTorch

Seq2Seq in PyTorch This is a complete suite for training sequence-to-sequence models in PyTorch. It consists of several models and code to both train

Elad Hoffer 514 Nov 17, 2022