Face Synthetics dataset is a collection of diverse synthetic face images with ground truth labels.

Overview

alt text

The Face Synthetics dataset

Face Synthetics dataset is a collection of diverse synthetic face images with ground truth labels.

It was introduced in our paper Fake It Till You Make It: Face analysis in the wild using synthetic data alone.

Our dataset contains:

  • 100,000 images of faces at 512 x 512 pixel resolution
  • 70 standard facial landmark annotations
  • per-pixel semantic class anotations

It can be used to train machine learning systems for face-related tasks such as landmark localization and face parsing, showing that synthetic data can both match real data in accuracy as well as open up new approaches where manual labelling would be impossible.

Some images also include hands and off-center distractor faces in addition to primary faces centered in the image.

The Face Synthetics dataset can be used for non-commercial research, and is licensed under the license found in LICENSE.txt.

Downloading the dataset

A sample dataset with 100 images (34MB) can be downloaded from here

A sample dataset with 1000 images (320MB) can be downloaded from here

A full dataset of 100,000 images (32GB) can be downloaded from here

Dataset layout

The Face Synthetics dataset is a single .zip file containing color images, segmentation images, and 2D landmark coordinates in a text file.

dataset.zip
├── {frame_id}.png        # Rendered image of a face
├── {frame_id}_seg.png    # Segmentation image, where each pixel has an integer value mapping to the categories below
├── {frame_id}_ldmks.txt  # Landmark annotations for 70 facial landmarks (x, y) coordinates for every row

Our landmark annotations follow the 68 landmark scheme from iBUG with two additional points for the pupil centers. Please note that our 2D landmarks are projections of 3D points and do not follow the outline of the face/lips/eyebrows in the way that is common from manually annotated landmarks. They can be thought of as an "x-ray" version of 2D landmarks.

Each pixel in the segmentation image will belong to one of the following classes:

BACKGROUND = 0
SKIN = 1
NOSE = 2
RIGHT_EYE = 3
LEFT_EYE = 4
RIGHT_BROW = 5
LEFT_BROW = 6
RIGHT_EAR = 7
LEFT_EAR = 8
MOUTH_INTERIOR = 9
TOP_LIP = 10
BOTTOM_LIP = 11
NECK = 12
HAIR = 13
BEARD = 14
CLOTHING = 15
GLASSES = 16
HEADWEAR = 17
FACEWEAR = 18
IGNORE = 255

Pixels marked as IGNORE should be ignored during training.

Notes:

  • Opaque eyeglass lenses are labeled as GLASSES, while transparent lenses as the class behind them.
  • For bushy eyebrows, a few eyebrow pixels may extend beyond the boundary of the face. These pixels are labelled as IGNORE.

Disclaimer

Some of our rendered faces may be close in appearance to the faces of real people. Any such similarity is naturally unintentional, as it would be in a dataset of real images, where people may appear similar to others unknown to them.

Generalization to real data

For best results, we suggest you follow the methodology described in our paper (citation below). Especially note the need for 1) data augmentation; 2) use of a translation layer if evaluating on real data benchmarks that contain different types of annotations.

Our dataset strives to be as diverse as possible and generalizes to real test data as described in the paper. However, you may encounter situations that it does not cover and/or where generalization is less successful. We recommend that machine learning practitioners always test models on real data that is representative of the target deployment scenario.

Citation

If you use the Face Synthetics Dataset your research, please cite the following paper:

@misc{wood2021fake,
    title={Fake It Till You Make It: Face analysis in the wild using synthetic data alone},
    author={Erroll Wood and Tadas Baltru\v{s}aitis and Charlie Hewitt and Sebastian Dziadzio and Matthew Johnson and Virginia Estellers and Thomas J. Cashman and Jamie Shotton},
    year={2021},
    eprint={2109.15102},
    archivePrefix={arXiv},
    primaryClass={cs.CV}
}
Owner
Microsoft
Open source projects and samples from Microsoft
Microsoft
Research shows Google collects 20x more data from Android than Apple collects from iOS. Block this non-consensual telemetry using pihole blocklists.

pihole-antitelemetry Research shows Google collects 20x more data from Android than Apple collects from iOS. Block both using these pihole lists. Proj

Adrian Edwards 290 Jan 09, 2023
PyTorch code for 'Efficient Single Image Super-Resolution Using Dual Path Connections with Multiple Scale Learning'

Efficient Single Image Super-Resolution Using Dual Path Connections with Multiple Scale Learning This repository is for EMSRDPN introduced in the foll

7 Feb 10, 2022
State-Relabeling Adversarial Active Learning

State-Relabeling Adversarial Active Learning Code for SRAAL [2020 CVPR Oral] Requirements torch = 1.6.0 numpy = 1.19.1 tqdm = 4.31.1 AL Results The

10 Jul 14, 2022
Face recognition project by matching the features extracted using SIFT.

MV_FaceDetectionWithSIFT Face recognition project by matching the features extracted using SIFT. By : Aria Radmehr Professor : Ali Amiri Dependencies

Aria Radmehr 4 May 31, 2022
The source codes for ACL 2021 paper 'BoB: BERT Over BERT for Training Persona-based Dialogue Models from Limited Personalized Data'

BoB: BERT Over BERT for Training Persona-based Dialogue Models from Limited Personalized Data This repository provides the implementation details for

124 Dec 27, 2022
Code for the paper "How Attentive are Graph Attention Networks?"

How Attentive are Graph Attention Networks? This repository is the official implementation of How Attentive are Graph Attention Networks?. The PyTorch

175 Dec 29, 2022
Simple improvement of VQVAE that allow to generate x2 sized images compared to baseline

vqvae_dwt_distiller.pytorch Simple improvement of VQVAE that allow to generate x2 sized images compared to baseline. It allows to generate 512x512 ima

Sergei Belousov 25 Jul 19, 2022
AlphaNet Improved Training of Supernet with Alpha-Divergence

AlphaNet: Improved Training of Supernet with Alpha-Divergence This repository contains our PyTorch training code, evaluation code and pretrained model

Facebook Research 87 Oct 10, 2022
A CNN model to detect hand gestures.

Software Used python - programming language used, tested on v3.8 miniconda - for managing virtual environment Libraries Used opencv - pip install open

Shivanshu 6 Jul 14, 2022
3D-CariGAN: An End-to-End Solution to 3D Caricature Generation from Normal Face Photos

3D-CariGAN: An End-to-End Solution to 3D Caricature Generation from Normal Face Photos This repository contains the source code and dataset for the pa

54 Oct 09, 2022
Trajectory Prediction with Graph-based Dual-scale Context Fusion

DSP: Trajectory Prediction with Graph-based Dual-scale Context Fusion Introduction This is the project page of the paper Lu Zhang, Peiliang Li, Jing C

HKUST Aerial Robotics Group 103 Jan 04, 2023
Easily Process a Batch of Cox Models

ezcox: Easily Process a Batch of Cox Models The goal of ezcox is to operate a batch of univariate or multivariate Cox models and return tidy result. ⏬

Shixiang Wang 15 May 23, 2022
DeepSpeed is a deep learning optimization library that makes distributed training easy, efficient, and effective.

DeepSpeed+Megatron trained the world's most powerful language model: MT-530B DeepSpeed is hiring, come join us! DeepSpeed is a deep learning optimizat

Microsoft 8.4k Dec 28, 2022
Mmrotate - OpenMMLab Rotated Object Detection Benchmark

OpenMMLab website HOT OpenMMLab platform TRY IT OUT 📘 Documentation | 🛠️ Insta

OpenMMLab 1.2k Jan 04, 2023
Riemann Noise Injection With PyTorch

Riemann Noise Injection - PyTorch A module for modeling GAN noise injection based on Riemann geometry, as described in Ruili Feng, Deli Zhao, and Zhen

2 May 27, 2022
A fast implementation of bss_eval metrics for blind source separation

fast_bss_eval Do you have a zillion BSS audio files to process and it is taking days ? Is your simulation never ending ? Fear no more! fast_bss_eval i

Robin Scheibler 99 Dec 13, 2022
A copy of Ares that costs 30 fucking dollars.

Finalement, j'ai décidé d'abandonner cette idée, je me suis comporté comme un enfant qui été en colère. Comme m'ont dit certaines personnes j'ai des c

Bleu 24 Apr 14, 2022
Implementation of Bagging and AdaBoost Algorithm

Bagging-and-AdaBoost Implementation of Bagging and AdaBoost Algorithm Dataset Red Wine Quality Data Sets For simplicity, we will have 2 classes of win

Zechen Ma 1 Nov 01, 2021
Pipeline for employing a Lightweight deep learning models for LOW-power systems

PL-LOW A high-performance deep learning model lightweight pipeline that gradually lightens deep neural networks in order to utilize high-performance d

POSTECH Data Intelligence Lab 9 Aug 13, 2022
Code for the paper "There is no Double-Descent in Random Forests"

Code for the paper "There is no Double-Descent in Random Forests" This repository contains the code to run the experiments for our paper called "There

2 Jan 14, 2022