A Light CNN for Deep Face Representation with Noisy Labels

Overview

A Light CNN for Deep Face Representation with Noisy Labels

Citation

If you use our models, please cite the following paper:

@article{wulight,
  title={A Light CNN for Deep Face Representation with Noisy Labels},
  author={Wu, Xiang and He, Ran and Sun, Zhenan and Tan, Tieniu}
  journal={arXiv preprint arXiv:1511.02683},
  year={2015}
}
@article{wu2015lightened,
  title={A Lightened CNN for Deep Face Representation},
  author={Wu, Xiang and He, Ran and Sun, Zhenan},
  journal={arXiv preprint arXiv:1511.02683},
  year={2015}
}
@article{wu2015learning,
  title={Learning Robust Deep Face Representation},
  author={Wu, Xiang},
  journal={arXiv preprint arXiv:1507.04844},
  year={2015}
}

Updates

  • Dec 16, 2016
  • Nov 08, 2016
    • The prototxt and model C based on caffe-rc3 is updated. The accuracy on LFW achieves 98.80% and the [email protected]=0 obtains 94.97%.
    • The performance of set 1 on MegaFace achieves 65.532% for rank-1 accuracy and 75.854% for [email protected]=10^-6.
  • Nov 26, 2015
    • The prototxt and model B is updated and the accuracy on LFW achieves 98.13% for a single net without training on LFW.
  • Aug 13, 2015
    • Evaluation of LFW for identification protocols is published.
  • Jun 11, 2015
    • The prototxt and model A is released. The accuracy on LFW achieves 97.77%.

Overview

The Deep Face Representation Experiment is based on Convolution Neural Network to learn a robust feature for face verification task. The popular deep learning framework caffe is used for training on face datasets such as CASIA-WebFace, VGG-Face and MS-Celeb-1M. And the feature extraction is realized by python code caffe_ftr.py.

Structure

  • Code
    • data pre-processing and evaluation code
  • Model
    • caffemodel.
      • The model A and B is trained on CASIA-WebFace by caffe-rc.
      • The model C is trained on MS-Celeb-1M by caffe-rc3.
  • Proto
    • Lightened CNN implementations by caffe
  • Results
    • LFW features

Description

Data Pre-processing

  1. Download face dataset such as CASIA-WebFace, VGG-Face and MS-Celeb-1M.
  2. All face images are converted to gray-scale images and normalized to 144x144 according to landmarks.
  3. According to the 5 facial points, we not only rotate two eye points horizontally but also set the distance between the midpoint of eyes and the midpoint of mouth(ec_mc_y), and the y axis of midpoint of eyes(ec_y) .
Dataset size ec_mc_y ec_y
Training set 144x144 48 48
Testing set 128x128 48 40

Training

  1. The model is trained by open source deep learning framework caffe.
  2. The network configuration is showed in "proto" file and the trained model is showed in "model" file.

Evaluation

  1. The model is evaluated on LFW which is a popular data set for face verification task.
  2. The extracted features and lfw testing pairs are located in "results" file.
  3. To evaluate the model, the matlab code or other ROC evaluation code can be used.
  4. The model is also evaluated on MegaFace. The dataset and evaluation code can be downloaded from http://megaface.cs.washington.edu/

Results

The single convolution net testing is evaluated on unsupervised setting only computing cosine similarity for lfw pairs.

Model 100% - EER [email protected]=1% [email protected]=0.1% [email protected]=0 Rank-1 [email protected]=1%
A 97.77% 94.80% 84.37% 43.17% 84.79% 63.09%
B 98.13% 96.73% 87.13% 64.33% 89.21% 69.46%
C 98.80% 98.60% 96.77% 94.97% 93.80% 84.40%

The details are published as a technical report on arXiv.

The released models are only allowed for non-commercial use.

Owner
Alfred Xiang Wu
魔炮厨 | 夏娜厨 | 久远厨 | 珂朵莉厨 | PSN: wkira_vivio
Alfred Xiang Wu
FuseDream: Training-Free Text-to-Image Generationwith Improved CLIP+GAN Space OptimizationFuseDream: Training-Free Text-to-Image Generationwith Improved CLIP+GAN Space Optimization

FuseDream This repo contains code for our paper (paper link): FuseDream: Training-Free Text-to-Image Generation with Improved CLIP+GAN Space Optimizat

XCL 191 Dec 31, 2022
salabim - discrete event simulation in Python

Object oriented discrete event simulation and animation in Python. Includes process control features, resources, queues, monitors. statistical distrib

181 Dec 21, 2022
Cockpit is a visual and statistical debugger specifically designed for deep learning.

Cockpit: A Practical Debugging Tool for Training Deep Neural Networks

Felix Dangel 421 Dec 29, 2022
This repository contains the implementation of the paper: Federated Distillation of Natural Language Understanding with Confident Sinkhorns

Federated Distillation of Natural Language Understanding with Confident Sinkhorns This repository provides an alternative method for ensembled distill

Deep Cognition and Language Research (DeCLaRe) Lab 11 Nov 16, 2022
Implementation of Deformable Attention in Pytorch from the paper "Vision Transformer with Deformable Attention"

Deformable Attention Implementation of Deformable Attention from this paper in Pytorch, which appears to be an improvement to what was proposed in DET

Phil Wang 128 Dec 24, 2022
Code for database and frontend of webpage for Neural Fields in Visual Computing and Beyond.

Neural Fields in Visual Computing—Complementary Webpage This is based on the amazing MiniConf project from Hendrik Strobelt and Sasha Rush—thank you!

Brown University Visual Computing Group 29 Nov 30, 2022
Transformers are Graph Neural Networks!

🚀 Gated Graph Transformers Gated Graph Transformers for graph-level property prediction, i.e. graph classification and regression. Associated article

Chaitanya Joshi 46 Jun 30, 2022
Heart Arrhythmia Classification

This program takes and input of an ECG in European Data Format (EDF) and outputs the classification for heartbeats into normal vs different types of arrhythmia . It uses a deep learning model for cla

4 Nov 02, 2022
Bayesian Inference Tools in Python

BayesPy Bayesian Inference Tools in Python Our goal is, given the discrete outcomes of events, estimate the distribution of categories. Using gradient

Max Sklar 99 Dec 14, 2022
Auto grind btdb2 exp for tower

Bloons TD Battles 2 EXP Grinder Auto grind btdb2 exp for towers Setup I suggest checking out every screenshot to see what they are supposed to be, so

Vincent 6 Jul 29, 2022
High-level library to help with training and evaluating neural networks in PyTorch flexibly and transparently.

TL;DR Ignite is a high-level library to help with training and evaluating neural networks in PyTorch flexibly and transparently. Click on the image to

4.2k Jan 01, 2023
Fast Axiomatic Attribution for Neural Networks (NeurIPS*2021)

Fast Axiomatic Attribution for Neural Networks This is the official repository accompanying the NeurIPS 2021 paper: R. Hesse, S. Schaub-Meyer, and S.

Visual Inference Lab @TU Darmstadt 11 Nov 21, 2022
An open source bike computer based on Raspberry Pi Zero (W, WH) with GPS and ANT+. Including offline map and navigation.

Pi Zero Bikecomputer An open-source bike computer based on Raspberry Pi Zero (W, WH) with GPS and ANT+ https://github.com/hishizuka/pizero_bikecompute

hishizuka 264 Jan 02, 2023
(under submission) Bayesian Integration of a Generative Prior for Image Restoration

BIGPrior: Towards Decoupling Learned Prior Hallucination and Data Fidelity in Image Restoration Authors: Majed El Helou, and Sabine Süsstrunk {Note: p

Majed El Helou 22 Dec 17, 2022
Vector Quantized Diffusion Model for Text-to-Image Synthesis

Vector Quantized Diffusion Model for Text-to-Image Synthesis Due to company policy, I have to set microsoft/VQ-Diffusion to private for now, so I prov

Shuyang Gu 294 Jan 05, 2023
Unimodal Face Classification with Multimodal Training

Unimodal Face Classification with Multimodal Training This is a PyTorch implementation of the following paper: Unimodal Face Classification with Multi

Wenbin Teng 3 Jul 06, 2022
The project of phase's key role in complex and real NN

Phase-in-NN This is the code for our project at Princeton (co-authors: Yuqi Nie, Hui Yuan). The paper title is: "Neural Network is heterogeneous: Phas

YuqiNie-lab 1 Nov 04, 2021
[IJCAI'21] Deep Automatic Natural Image Matting

Deep Automatic Natural Image Matting [IJCAI-21] This is the official repository of the paper Deep Automatic Natural Image Matting. Introduction | Netw

Jizhizi_Li 316 Jan 06, 2023
A PyTorch Implementation of Neural IMage Assessment

NIMA: Neural IMage Assessment This is a PyTorch implementation of the paper NIMA: Neural IMage Assessment (accepted at IEEE Transactions on Image Proc

yunxiaos 418 Dec 29, 2022