Face uncertainty quantification or estimation using PyTorch.

Overview

Face-uncertainty-pytorch

This is a demo code of face uncertainty quantification or estimation using PyTorch. The uncertainty of face recognition is affected by the ability of the recognition model (model uncertainty) and the quality of the input image (data uncertainty).

Model Uncertainty:

  • MC-Dropout

Data Uncertainty:

Usage

Preprocessing

Download the MS-Celeb-1M dataset from 1 or 2:

  1. insightface, https://github.com/deepinsight/insightface/wiki/Dataset-Zoo
  2. face.evoLVe.PyTorch, https://github.com/ZhaoJ9014/face.evoLVe.PyTorch#Data-Zoo)

Decode it using the code: https://github.com/deepinsight/insightface/blob/master/recognition/common/rec2image.py

Training

  1. Download the base model from https://github.com/deepinsight/insightface/tree/master/recognition/arcface_torch

  2. Modify the configuration files under config/ folder.

  3. Start the training:

    python network.py --config_file config/config_ir50_idq_loss_glint360k.py
    Start Training
    name: glint_ir50_idq
    num_epochs: 12
    epoch_size: 1000
    batch_size: 80
    num_c_in_batch 10 num_img_each_c 8.0
    IDQ_loss soft 16 0.45
    2022-01-12 23:37:48 [0-100] | loss 0.535 lr0.01 cos 0.55 1.00 0.18 pconf 0.77 1.00 0.15 t_soft 0.69 1.00 0.01 uloss 0.535 mem 3.1 G
    2022-01-12 23:38:12 [0-200] | loss 0.464 lr0.01 cos 0.58 0.93 0.08 pconf 0.75 1.00 0.05 t_soft 0.76 1.00 0.00 uloss 0.464 mem 3.1 G
    2022-01-12 23:38:37 [0-300] | loss 0.533 lr0.01 cos 0.52 1.00 0.04 pconf 0.78 0.99 0.25 t_soft 0.63 1.00 0.00 uloss 0.533 mem 3.1 G
    2022-01-12 23:39:02 [0-400] | loss 0.511 lr0.01 cos 0.52 0.99 0.09 pconf 0.77 0.99 0.16 t_soft 0.61 1.00 0.00 uloss 0.511 mem 3.1 G
    2022-01-12 23:39:27 [0-500] | loss 0.554 lr0.01 cos 0.48 0.97 0.05 pconf 0.77 0.99 0.18 t_soft 0.56 1.00 0.00 uloss 0.554 mem 3.1 G
    2022-01-12 23:39:52 [0-600] | loss 0.462 lr0.01 cos 0.55 0.95 0.19 pconf 0.78 0.99 0.23 t_soft 0.70 1.00 0.01 uloss 0.462 mem 3.1 G
    2022-01-12 23:40:17 [0-700] | loss 0.408 lr0.01 cos 0.55 0.96 0.07 pconf 0.78 0.99 0.07 t_soft 0.70 1.00 0.00 uloss 0.408 mem 3.1 G
    2022-01-12 23:40:42 [0-800] | loss 0.532 lr0.01 cos 0.51 0.99 0.03 pconf 0.80 0.99 0.25 t_soft 0.63 1.00 0.00 uloss 0.532 mem 3.1 G
    2022-01-12 23:41:06 [0-900] | loss 0.563 lr0.01 cos 0.54 1.00 0.03 pconf 0.80 0.99 0.13 t_soft 0.66 1.00 0.00 uloss 0.563 mem 3.1 G
    2022-01-12 23:41:27 [0-1000] | loss 0.570 lr0.01 cos 0.50 0.86 0.11 pconf 0.78 0.99 0.16 t_soft 0.61 1.00 0.00 uloss 0.570 mem 3.1 G
    ---cfp_fp
    sigma_sq [0.00263163 0.01750576 0.04416942 0.10698225 0.23958328 0.46090251
     0.92462665] percentile [0, 10, 30, 50, 70, 90, 100]
    reject_factor 0.0000 risk_threshold 0.924627 keep_idxes 7000 / 7000 Cosine score eer 0.012571 fmr100 0.012571 fmr1000 0.018286
    reject_factor 0.0500 risk_threshold 0.650710 keep_idxes 6655 / 7000 Cosine score eer 0.004357 fmr100 0.003900 fmr1000 0.006601
    reject_factor 0.1000 risk_threshold 0.556291 keep_idxes 6300 / 7000 Cosine score eer 0.003968 fmr100 0.003791 fmr1000 0.006003
    reject_factor 0.1500 risk_threshold 0.509630 keep_idxes 5951 / 7000 Cosine score eer 0.003864 fmr100 0.004013 fmr1000 0.005351
    reject_factor 0.2000 risk_threshold 0.459032 keep_idxes 5600 / 7000 Cosine score eer 0.003392 fmr100 0.003540 fmr1000 0.004248
    reject_factor 0.2500 risk_threshold 0.421400 keep_idxes 5251 / 7000 Cosine score eer 0.003236 fmr100 0.003407 fmr1000 0.003785
    reject_factor 0.3000 risk_threshold 0.389943 keep_idxes 4903 / 7000 Cosine score eer 0.002651 fmr100 0.002436 fmr1000 0.002842
    reject_factor mean --------------------------------------------- Cosine score fmr1000 0.002684
    AUERC: 0.0026
    AUERC30: 0.0017
    AUC: 0.0024
    AUC30: 0.0015
    

Testing

We use lfw.bin, cfp_fp.bin, etc. from ms1m-retinaface-t1 as the test dataset.

python evaluation/verification_risk_fnmr.py

MC-Dropout

python mc_dropout/verification_risk_mcdropout_fnmr.py
Owner
Kaen
Kaen
The MATH Dataset

Measuring Mathematical Problem Solving With the MATH Dataset This is the repository for Measuring Mathematical Problem Solving With the MATH Dataset b

Dan Hendrycks 267 Dec 26, 2022
Proof-Of-Concept Piano-Drums Music AI Model/Implementation

Rock Piano "When all is one and one is all, that's what it is to be a rock and not to roll." ---Led Zeppelin, "Stairway To Heaven" Proof-Of-Concept Pi

Alex 4 Nov 28, 2021
A new codebase for Group Activity Recognition. It contains codes for ICCV 2021 paper: Spatio-Temporal Dynamic Inference Network for Group Activity Recognition and some other methods.

Spatio-Temporal Dynamic Inference Network for Group Activity Recognition The source codes for ICCV2021 Paper: Spatio-Temporal Dynamic Inference Networ

40 Dec 12, 2022
Large-Scale Pre-training for Person Re-identification with Noisy Labels (LUPerson-NL)

LUPerson-NL Large-Scale Pre-training for Person Re-identification with Noisy Labels (LUPerson-NL) The repository is for our CVPR2022 paper Large-Scale

43 Dec 26, 2022
Fast methods to work with hydro- and topography data in pure Python.

PyFlwDir Intro PyFlwDir contains a series of methods to work with gridded DEM and flow direction datasets, which are key to many workflows in many ear

Deltares 27 Dec 07, 2022
TEDSummary is a speech summary corpus. It includes TED talks subtitle (Document), Title-Detail (Summary), speaker name (Meta info), MP4 URL, and utterance id

TEDSummary is a speech summary corpus. It includes TED talks subtitle (Document), Title-Detail (Summary), speaker name (Meta info), MP4 URL

3 Dec 26, 2022
Notification Triggers for Python

Notipyer Notification triggers for Python Send async email notifications via Python. Get updates/crashlogs from your scripts with ease. Installation p

Chirag Jain 17 May 16, 2022
Multi-Task Learning as a Bargaining Game

Nash-MTL Official implementation of "Multi-Task Learning as a Bargaining Game". Setup environment conda create -n nashmtl python=3.9.7 conda activate

Aviv Navon 87 Dec 26, 2022
Official code for "Stereo Waterdrop Removal with Row-wise Dilated Attention (IROS2021)"

Stereo-Waterdrop-Removal-with-Row-wise-Dilated-Attention This repository includes official codes for "Stereo Waterdrop Removal with Row-wise Dilated A

29 Oct 01, 2022
A real-time motion capture system that estimates poses and global translations using only 6 inertial measurement units

TransPose Code for our SIGGRAPH 2021 paper "TransPose: Real-time 3D Human Translation and Pose Estimation with Six Inertial Sensors". This repository

Xinyu Yi 261 Dec 31, 2022
Contour-guided image completion with perceptual grouping (BMVC 2021 publication)

Contour-guided Image Completion with Perceptual Grouping Authors Morteza Rezanejad*, Sidharth Gupta*, Chandra Gummaluru, Ryan Marten, John Wilder, Mic

Sid Gupta 6 Dec 27, 2022
The official implementation of the IEEE S&P`22 paper "SoK: How Robust is Deep Neural Network Image Classification Watermarking".

Watermark-Robustness-Toolbox - Official PyTorch Implementation This repository contains the official PyTorch implementation of the following paper to

49 Dec 19, 2022
Styled Handwritten Text Generation with Transformers (ICCV 21)

⚡ Handwriting Transformers [PDF] Ankan Kumar Bhunia, Salman Khan, Hisham Cholakkal, Rao Muhammad Anwer, Fahad Shahbaz Khan & Mubarak Shah Abstract: We

Ankan Kumar Bhunia 85 Dec 22, 2022
A GPU-optional modular synthesizer in pytorch, 16200x faster than realtime, for audio ML researchers.

torchsynth The fastest synth in the universe. Introduction torchsynth is based upon traditional modular synthesis written in pytorch. It is GPU-option

torchsynth 229 Jan 02, 2023
ICLR 2021 i-Mix: A Domain-Agnostic Strategy for Contrastive Representation Learning

Introduction PyTorch code for the ICLR 2021 paper [i-Mix: A Domain-Agnostic Strategy for Contrastive Representation Learning]. @inproceedings{lee2021i

Kibok Lee 68 Nov 27, 2022
QKeras: a quantization deep learning library for Tensorflow Keras

QKeras github.com/google/qkeras QKeras 0.8 highlights: Automatic quantization using QKeras; Stochastic behavior (including stochastic rouding) is disa

Google 437 Jan 03, 2023
A web-based application for quick, scalable, and automated hyperparameter tuning and stacked ensembling in Python.

Xcessiv Xcessiv is a tool to help you create the biggest, craziest, and most excessive stacked ensembles you can think of. Stacked ensembles are simpl

Reiichiro Nakano 1.3k Nov 17, 2022
The PASS dataset: pretrained models and how to get the data - PASS: Pictures without humAns for Self-Supervised Pretraining

The PASS dataset: pretrained models and how to get the data - PASS: Pictures without humAns for Self-Supervised Pretraining

Yuki M. Asano 249 Dec 22, 2022
YoloV3 Implemented in Tensorflow 2.0

YoloV3 Implemented in TensorFlow 2.0 This repo provides a clean implementation of YoloV3 in TensorFlow 2.0 using all the best practices. Key Features

Zihao Zhang 2.5k Dec 26, 2022
an implementation of 3D Ken Burns Effect from a Single Image using PyTorch

3d-ken-burns This is a reference implementation of 3D Ken Burns Effect from a Single Image [1] using PyTorch. Given a single input image, it animates

Simon Niklaus 1.4k Dec 28, 2022