Official pytorch implementation for Learning to Listen: Modeling Non-Deterministic Dyadic Facial Motion (CVPR 2022)

Overview

Learning to Listen: Modeling Non-Deterministic Dyadic Facial Motion

This repository contains a pytorch implementation of "Learning to Listen: Modeling Non-Deterministic Dyadic Facial Motion"

report

This codebase provides:

  • train code
  • test code
  • dataset
  • pretrained motion models

The main sections are:

  • Overview
  • Instalation
  • Download Data and Models
  • Training from Scratch
  • Testing with Pretrained Models

Please note, we will not be providing visualization code for the photorealistic rendering.

Overview:

We provide models and code to train and test our listener motion models.

See below for sections:

  • Installation: environment setup and installation for visualization
  • Download data and models: download annotations and pre-trained models
  • Training from scratch: scripts to get the training pipeline running from scratch
  • Testing with pretrianed models: scripts to test pretrained models and save output motion parameters

Installation:

Tested with cuda/9.0, cudnn/v7.0-cuda.9.0, and python 3.6.11

git clone [email protected]:evonneng/learning2listen.git

cd learning2listen/src/
conda create -n venv_l2l python=3.6
conda activate venv_l2l
pip install -r requirements.txt

export L2L_PATH=`pwd`

IMPORTANT: After installing torch, please make sure to modify the site-packages/torch/nn/modules/conv.py file by commenting out the self.padding_mode != 'zeros' line to allow for replicated padding for ConvTranspose1d as shown here.

Download Data and Models:

Download Data:

Please first download the dataset for the corresponding individual with google drive.

Make sure all downloaded .tar files are moved to the directory $L2L_PATH/data/ (e.g. $L2L_PATH/data/conan_data.tar)

Then run the following script.

./scripts/unpack_data.sh

The downloaded data will unpack into the following directory structure as viewed from $L2L_PATH:

|-- data/
    |-- conan/
        |-- test/
            |-- p0_list_faces_clean_deca.npy
            |-- p0_speak_audio_clean_deca.npy
            |-- p0_speak_faces_clean_deca.npy
            |-- p0_speak_files_clean_deca.npy
            |-- p1_list_faces_clean_deca.npy
            |-- p1_speak_audio_clean_deca.npy
            |-- p1_speak_faces_clean_deca.npy
            |-- p1_speak_files_clean_deca.npy
        |-- train/
    |-- devi2/
    |-- fallon/
    |-- kimmel/
    |-- stephen/
    |-- trevor/

Our dataset consists of 6 different youtube channels named accordingly. Please see comments in $L2L_PATH/scripts/download_models.sh for more details.

Data Format:

The data format is as described below:

We denote p0 as the person on the left side of the video, and p1 as the right side.

  • p0_list_faces_clean_deca.npy - face features (N x 64 x 184) for when p0 is listener
    • N sequences of length 64. Features of size 184, which includes the deca parameter set of expression (50D), pose (6D), and details (128D).
  • p0_speak_audio_clean_deca.npy - audio features (N x 256 x 128) for when p0 is speaking
    • N sequences of length 256. Features of size 128 mel features
  • p0_speak_faces_clean_deca.npy - face features (N x 64 x 184) for when p0 is speaking
  • p0_speak_files_clean_deca.npy - file names of the format (N x 64 x 3) for when p0 is speaking

Using Your Own Data:

To train and test on your own videos, please follow this process to convert your data into a compatible format:

(Optional) In our paper, we ran preprocessing to figure out when a each person is speaking or listening. We used this information to segment/chunk up our data. We then extracted speaker-only audio by removing listener back-channels.

  1. Run SyncNet on the video to determine who is speaking when.
  2. Then run Multi Sensory to obtain speaker's audio with all the listener backchannels removed.

For the main processing, we assuming there are 2 people in the video - one speaker and one listener...

  1. Run DECA to extract the facial expression and pose details of the two faces for each frame in the video. For each person combine the extracted features across the video into a (1 x T x (50+6)) matrix and save to p0_list_faces_clean_deca.npy or p0_speak_faces_clean_deca.npy files respectively. Note, in concatenating the features, expression comes first.

  2. Use librosa.feature.melspectrogram(...) to process the speaker's audio into a (1 x 4T x 128) feature. Save to p0_speak_audio_clean_deca.npy.

Download Model:

Please first download the models for the corresponding individual with google drive.

Make sure all downloaded .tar files are moved to the directory $L2L_PATH/models/ (e.g. $L2L_PATH/models/conan_models.tar)

Once downloaded, you can run the follow script to unpack all of the models.

cd $L2L_PATH
./scripts/unpack_models.sh

We provide person-specific models trained for Conan, Fallon, Stephen, and Trevor. Each person-specific model consists of 2 models: 1) VQ-VAE pre-trained codebook of motion in $L2L_PATH/vqgan/models/ and 2) predictor model for listener motion prediction in $L2L_PATH/models/. It is important that the models are paired correctly during test time.

In addition to the models, we also provide the corresponding config files that were used to define the models/listener training setup.

Please see comments in $L2L_PATH/scripts/unpack_models.sh for more details.

Training from Scratch:

Training a model from scratch follows a 2-step process.

  1. Train the VQ-VAE codebook of listener motion:
# --config: the config file associated with training the codebook
# Includes network setup information and listener information
# See provided config: configs/l2_32_smoothSS.json

cd $L2L_PATH/vqgan/
python train_vq_transformer.py --config <path_to_config_file>

Please note, during training of the codebook, it is normal for the loss to increase before decreasing. Typical training was ~2 days on 4 GPUs.

  1. After training of the VQ-VAE has converged, we can begin training the predictor model that uses this codebook.
# --config: the config file associated with training the predictor
# Includes network setup information and codebook information
# Note, you will have to update this config to point to the correct codebook.
# See provided config: configs/vq/delta_v6.json

cd $L2L_PATH
python -u train_vq_decoder.py --config <path_to_config_file>

Training the predictor model should have a much faster convergance. Typical training was ~half a day on 4 GPUs.

Testing with Pretrained Models:

# --config: the config file associated with training the predictor 
# --checkpoint: the path to the pretrained model
# --speaker: can specify which speaker you want to test on (conan, trevor, stephen, fallon, kimmel)

cd $L2L_PATH
python test_vq_decoder.py --config <path_to_config> --checkpoint <path_to_pretrained_model> --speaker <optional>

For our provided models and configs you can run:

python test_vq_decoder.py --config configs/vq/delta_v6.json --checkpoint models/delta_v6_er2er_best.pth --speaker 'conan'

Visualization

As part of responsible practices, we will not be releasing code for the photorealistic visualization pipeline. However, the raw 3D meshes can be rendered using the DECA renderer.

Potentially Coming Soon

  • Visualization of 3D meshes code from saved output
Official implement of Evo-ViT: Slow-Fast Token Evolution for Dynamic Vision Transformer

Evo-ViT: Slow-Fast Token Evolution for Dynamic Vision Transformer This repository contains the PyTorch code for Evo-ViT. This work proposes a slow-fas

YifanXu 53 Dec 05, 2022
Source code for CVPR 2021 paper "Riggable 3D Face Reconstruction via In-Network Optimization"

Riggable 3D Face Reconstruction via In-Network Optimization Source code for CVPR 2021 paper "Riggable 3D Face Reconstruction via In-Network Optimizati

130 Jan 02, 2023
CAUSE: Causality from AttribUtions on Sequence of Events

CAUSE: Causality from AttribUtions on Sequence of Events

Wei Zhang 21 Dec 01, 2022
This is the official code release for the paper Shape and Material Capture at Home

This is the official code release for the paper Shape and Material Capture at Home. The code enables you to reconstruct a 3D mesh and Cook-Torrance BRDF from one or more images captured with a flashl

89 Dec 10, 2022
This is the repo for the paper "Improving the Accuracy-Memory Trade-Off of Random Forests Via Leaf-Refinement".

Improving the Accuracy-Memory Trade-Off of Random Forests Via Leaf-Refinement This is the repository for the paper "Improving the Accuracy-Memory Trad

3 Dec 29, 2022
Waymo motion prediction challenge 2021: 3rd place solution

Waymo motion prediction challenge 2021: 3rd place solution ๐Ÿ“œ Technical report ๐Ÿ—จ๏ธ Presentation ๐ŸŽ‰ Announcement ๐Ÿ›†Motion Prediction Channel Website ๐Ÿ›†

158 Jan 08, 2023
Unsupervised Video Interpolation using Cycle Consistency

Unsupervised Video Interpolation using Cycle Consistency Project | Paper | YouTube Unsupervised Video Interpolation using Cycle Consistency Fitsum A.

NVIDIA Corporation 100 Nov 30, 2022
Direct application of DALLE-2 to video synthesis, using factored space-time Unet and Transformers

DALLE2 Video (wip) ** only to be built after DALLE2 image is done and replicated, and the importance of the prior network is validated ** Direct appli

Phil Wang 105 May 15, 2022
Learning to trade under the reinforcement learning framework

Trading Using Q-Learning In this project, I will present an adaptive learning model to trade a single stock under the reinforcement learning framework

Uirรก Caiado 470 Nov 28, 2022
DeLiGAN - This project is an implementation of the Generative Adversarial Network

This project is an implementation of the Generative Adversarial Network proposed in our CVPR 2017 paper - DeLiGAN : Generative Adversarial Net

Video Analytics Lab -- IISc 110 Sep 13, 2022
Automated detection of anomalous exoplanet transits in light curve data.

Automatically detecting anomalous exoplanet transits This repository contains the source code for the paper "Automatically detecting anomalous exoplan

1 Feb 01, 2022
A Python Reconnection Tool for alt:V

altv-reconnect What? It invokes a reconnect in the altV Client Dev Console. You get to determine when your local client should reconnect when developi

8 Jun 30, 2022
Implement A3C for Mujoco gym envs

pytorch-a3c-mujoco Disclaimer: my implementation right now is unstable (you ca refer to the learning curve below), I'm not sure if it's my problems. A

Andrew 70 Dec 12, 2022
A library for low-memory inferencing in PyTorch.

Pylomin Pylomin (PYtorch LOw-Memory INference) is a library for low-memory inferencing in PyTorch. Installation ... Usage For example, the following c

3 Oct 26, 2022
Source code for the paper "PLOME: Pre-training with Misspelled Knowledge for Chinese Spelling Correction" in ACL2021

PLOME:Pre-training with Misspelled Knowledge for Chinese Spelling Correction (ACL2021) This repository provides the code and data of the work in ACL20

197 Nov 26, 2022
Instance-Dependent Partial Label Learning

Instance-Dependent Partial Label Learning Installation pip install -r requirements.txt Run the Demo benchmark-random mnist python -u main.py --gpu 0 -

17 Dec 29, 2022
Federated_learning codes used for the the paper "Evaluation of Federated Learning Aggregation Algorithms" and "A Federated Learning Aggregation Algorithm for Pervasive Computing: Evaluation and Comparison"

Federated Distance (FedDist) This is the code accompanying the Percom2021 paper "A Federated Learning Aggregation Algorithm for Pervasive Computing: E

GETALP 8 Jan 03, 2023
Code, pre-trained models and saliency results for the paper "Boosting RGB-D Saliency Detection by Leveraging Unlabeled RGB Images".

Boosting RGB-D Saliency Detection by Leveraging Unlabeled RGB This repository is the official implementation of the paper. Our results comming soon in

Xiaoqiang Wang 8 May 22, 2022
A Neural Net Training Interface on TensorFlow, with focus on speed + flexibility

Tensorpack is a neural network training interface based on TensorFlow. Features: It's Yet Another TF high-level API, with speed, and flexibility built

Tensorpack 6.2k Jan 09, 2023
Kaggle: Cell Instance Segmentation

Kaggle: Cell Instance Segmentation The goal of this challenge is to detect cells in microscope images. with simple view on how many cels have been ann

Jirka Borovec 9 Aug 12, 2022