Official PyTorch implementation of "Improving Face Recognition with Large AgeGaps by Learning to Distinguish Children" (BMVC 2021)

Overview

Inter-Prototype (BMVC 2021): Official Project Webpage

This repository provides the official PyTorch implementation of the following paper:

Improving Face Recognition with Large Age Gaps by Learning to Distinguish Children
Jungsoo Lee* (KAIST AI), Jooyeol Yun* (KAIST AI), Sunghyun Park (KAIST AI),
Yonggyu Kim (Korea Univ.), and Jaegul Choo (KAIST AI) (*: equal contribution)
BMVC 2021

Paper: Arxiv

Abstract: Despite the unprecedented improvement of face recognition, existing face recognition models still show considerably low performances in determining whether a pair of child and adult images belong to the same identity. Previous approaches mainly focused on increasing the similarity between child and adult images of a given identity to overcome the discrepancy of facial appearances due to aging. However, we observe that reducing the similarity between child images of different identities is crucial for learning distinct features among children and thus improving face recognition performance in child-adult pairs. Based on this intuition, we propose a novel loss function called the Inter-Prototype loss which minimizes the similarity between child images. Unlike the previous studies, the Inter-Prototype loss does not require additional child images or training additional learnable parameters. Our extensive experiments and in-depth analyses show that our approach outperforms existing baselines in face recognition with child-adult pairs.

Code Contributors

Jungsoo Lee [Website] [LinkedIn] [Google Scholar] (KAIST AI)
Jooyeol Yun [LinkedIn] [Google Scholar] (KAIST AI)

Pytorch Implementation

Installation

Clone this repository.

git clone https://github.com/leebebeto/Inter-Prototype.git
cd Inter-Prototype
pip install -r requirements.txt
CUDA_VISIBLE_DEVICES=0 python3 train.py --data_mode=casia --exp=interproto_casia --wandb --tensorboard

How to Run

We used two different training datasets: 1) CASIA WebFace and 2) MS1M.

We constructed test sets with child-adult pairs with at least 20 years and 30 years age gaps using AgeDB and FG-NET, termed as AgeDB-C20, AgeDB-C30, FGNET-C20, and FGNET-C30. We also used LAG (Large Age Gap) dataset for the test set. For the age labels, we used the age annotations from MTLFace. The age annotations are available at this link. We provide a script file for downloading the test dataset.

sh scripts/download_test_data.sh

The final structure before training or testing the model should look like this.

train
 └ casia
   └ id1
     └ image1.jpg
     └ image2.jpg
     └ ...
   └ id2
     └ image1.jpg
     └ image2.jpg
     └ ...     
   ...
 └ ms1m
   └ id1
     └ image1.jpg
     └ image2.jpg
     └ ...
   └ id2
     └ image1.jpg
     └ image2.jpg
     └ ...     
   ...
 └ age-label
   └ casia-webface.txt
   └ ms1m.txt    
test
 └ AgeDB-aligned
   └ id1
     └ image1.jpg
     └ image2.jpg
   └ id2
     └ image1.jpg
     └ image2.jpg
   └ ...
 └ FGNET-aligned
   └ image1.jpg
   └ image2.jpg
   └ ...
 └ LAG-aligned
   └ id1
     └ image1.jpg
     └ image2.jpg
   └ id2
     └ image1.jpg
     └ image2.jpg
   └ ...

Pretrained Models

All models trained for our paper

Following are the checkpoints of each test set used in our paper.

Trained with Casia WebFace

AgeDB-C20
AgeDB-C30
FGNET-C20
FGNET-C30
LAG

Trained with MS1M

AgeDB-C20
AgeDB-C30
FGNET-C20
FGNET-C30
LAG

CUDA_VISIBLE_DEVICES=0 python3 evaluate.py --model_dir=<test_dir>

Quantitative / Qualitative Evaluation

Trained with CASIA WebFace dataset

Trained with MS1M dataset

t-SNE embedding of prototype vectors

Acknowledgments

Our pytorch implementation is heavily derived from InsightFace_Pytorch. Thanks for the implementation. We also deeply appreciate the age annotations provided by Huang et al. in MTLFace.

Owner
Jungsoo Lee
I'm interested in the intersection of Computer Vision and HCI.
Jungsoo Lee
A python script to dump all the challenges locally of a CTFd-based Capture the Flag.

A python script to dump all the challenges locally of a CTFd-based Capture the Flag. Features Connects and logins to a remote CTFd instance. Dumps all

Podalirius 77 Dec 07, 2022
A simple baseline for 3d human pose estimation in tensorflow. Presented at ICCV 17.

3d-pose-baseline This is the code for the paper Julieta Martinez, Rayat Hossain, Javier Romero, James J. Little. A simple yet effective baseline for 3

Julieta Martinez 1.3k Jan 03, 2023
Pytorch implementation of the paper DocEnTr: An End-to-End Document Image Enhancement Transformer.

DocEnTR Description Pytorch implementation of the paper DocEnTr: An End-to-End Document Image Enhancement Transformer. This model is implemented on to

Mohamed Ali Souibgui 74 Jan 07, 2023
Cours d'Algorithmique Appliquée avec Python pour BTS SIO SISR

Course: Introduction to Applied Algorithms with Python (in French) This is the source code of the website for the Applied Algorithms with Python cours

Loic Yvonnet 0 Jan 27, 2022
Spatial Action Maps for Mobile Manipulation (RSS 2020)

spatial-action-maps Update: Please see our new spatial-intention-maps repository, which extends this work to multi-agent settings. It contains many ne

Jimmy Wu 27 Nov 30, 2022
Face detection using deep learning.

Face Detection Docker Solution Using Faster R-CNN Dockerface is a deep learning face detector. It deploys a trained Faster R-CNN network on Caffe thro

Nataniel Ruiz 181 Dec 19, 2022
ProjectOxford-ClientSDK - This repo has moved :house: Visit our website for the latest SDKs & Samples

This project has moved 🏠 We heard your feedback! This repo has been deprecated and each project has moved to a new home in a repo scoped by API and p

Microsoft 970 Nov 28, 2022
Conversion between units used in magnetism

convmag Conversion between various units used in magnetism The conversions between base units available are: T - G : 1e4

0 Jul 15, 2021
This repository contains the code for the CVPR 2020 paper "Differentiable Volumetric Rendering: Learning Implicit 3D Representations without 3D Supervision"

Differentiable Volumetric Rendering Paper | Supplementary | Spotlight Video | Blog Entry | Presentation | Interactive Slides | Project Page This repos

697 Jan 06, 2023
Image augmentation library in Python for machine learning.

Augmentor is an image augmentation library in Python for machine learning. It aims to be a standalone library that is platform and framework independe

Marcus D. Bloice 4.8k Jan 07, 2023
Official PyTorch Implementation of Embedding Transfer with Label Relaxation for Improved Metric Learning, CVPR 2021

Embedding Transfer with Label Relaxation for Improved Metric Learning Official PyTorch implementation of CVPR 2021 paper Embedding Transfer with Label

Sungyeon Kim 37 Dec 06, 2022
Attention Probe: Vision Transformer Distillation in the Wild

Attention Probe: Vision Transformer Distillation in the Wild Jiahao Wang, Mingdeng Cao, Shuwei Shi, Baoyuan Wu, Yujiu Yang In ICASSP 2022 This code is

Wang jiahao 3 Oct 31, 2022
Point Cloud Denoising input segmentation output raw point-cloud valid/clear fog rain de-noised Abstract Lidar sensors are frequently used in environme

Point Cloud Denoising input segmentation output raw point-cloud valid/clear fog rain de-noised Abstract Lidar sensors are frequently used in environme

75 Nov 24, 2022
A list of Machine Learning Art Colabs

ML Visual Art Colabs A list of cool Colabs on Machine Learning Imagemaking or other artistic purposes 3D Ken Burns Effect Ken Burns Effect by Manuel R

Derrick Schultz (he/him) 789 Dec 12, 2022
Code, Models and Datasets for OpenViDial Dataset

OpenViDial This repo contains downloading instructions for the OpenViDial dataset in 《OpenViDial: A Large-Scale, Open-Domain Dialogue Dataset with Vis

119 Dec 08, 2022
Small little script to scrape, parse and check for active tor nodes. Can be used as proxies.

TorScrape TorScrape is a small but useful script made in python that scrapes a website for active tor nodes, parse the html and then save the nodes in

5 Dec 04, 2022
This is the official implementation of 3D-CVF: Generating Joint Camera and LiDAR Features Using Cross-View Spatial Feature Fusion for 3D Object Detection, built on SECOND.

3D-CVF This is the official implementation of 3D-CVF: Generating Joint Camera and LiDAR Features Using Cross-View Spatial Feature Fusion for 3D Object

YecheolKim 97 Dec 20, 2022
A very simple tool to rewrite parameters such as attributes and constants for OPs in ONNX models. Simple Attribute and Constant Modifier for ONNX.

sam4onnx A very simple tool to rewrite parameters such as attributes and constants for OPs in ONNX models. Simple Attribute and Constant Modifier for

Katsuya Hyodo 6 May 15, 2022
Pytorch implementation of the paper "Optimization as a Model for Few-Shot Learning"

Optimization as a Model for Few-Shot Learning This repo provides a Pytorch implementation for the Optimization as a Model for Few-Shot Learning paper.

Albert Berenguel Centeno 238 Jan 04, 2023
The code for our paper Semi-Supervised Learning with Multi-Head Co-Training

Semi-Supervised Learning with Multi-Head Co-Training (PyTorch) Abstract Co-training, extended from self-training, is one of the frameworks for semi-su

cmc 6 Dec 04, 2022