Face detection using deep learning.

Overview

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 through an easy to use docker image. Bring your videos and images, run dockerface and obtain videos and images with bounding boxes of face detections and an easy to use face detection annotation text file.

The docker image is large for now because OpenCV has to be compiled and stored in the image to be able to use video and it takes up a lot of space.

Technical details and some experiments are described in the Arxiv Tech Report.

Citing Dockerface

If you find Dockerface useful in your research please consider citing:

@ARTICLE{2017arXiv170804370R,
   author = {{Ruiz}, N. and {Rehg}, J.~M.},
    title = "{Dockerface: an easy to install and use Faster R-CNN face detector in a Docker container}",
  journal = {ArXiv e-prints},
archivePrefix = "arXiv",
   eprint = {1708.04370},
 primaryClass = "cs.CV",
 keywords = {Computer Science - Computer Vision and Pattern Recognition},
     year = 2017,
    month = aug,
   adsurl = {http://adsabs.harvard.edu/abs/2017arXiv170804370R},
  adsnote = {Provided by the SAO/NASA Astrophysics Data System}
}

Instructions

Install NVIDIA CUDA (8 - preferably) and cuDNN (v5 - preferably)

https://developer.nvidia.com/cuda-downloads
https://developer.nvidia.com/cudnn

Install docker

https://docs.docker.com/engine/installation/

Install nvidia-docker

wget -P /tmp https://github.com/NVIDIA/nvidia-docker/releases/download/v1.0.1/nvidia-docker_1.0.1-1_amd64.deb
sudo dpkg -i /tmp/nvidia-docker*.deb && rm /tmp/nvidia-docker*.deb

Go to your working folder and create a directory called data, your videos and images should go here. Also create a folder called output.

cd $WORKING_DIR
mkdir data
mkdir output

Run the docker container

sudo nvidia-docker run -it -v $PWD/data:/opt/py-faster-rcnn/edata -v $PWD/output/video:/opt/py-faster-rcnn/output/video -v $PWD/output/images:/opt/py-faster-rcnn/output/images natanielruiz/dockerface:latest

Now we have to recompile Caffe for it to work on your own machine.

cd caffe-fast-rcnn
rm -rf build
mkdir build
cd build
cmake -DUSE_CUDNN=1 ..
make -j20 && make pycaffe
cd ../..

Finally use this command to process a video

python tools/run_face_detection_on_video.py --gpu 0 --video edata/YOUR_VIDEO_FILENAME --output_string STRING_TO_BE_APPENDED_TO_OUTPUTFILE_NAME --conf_thresh CONFIDENCE_THRESHOLD_FOR_DETECTIONS

Use this command to process an image

python tools/run_face_detection_on_image.py --gpu 0 --image edata/YOUR_IMAGE_FILENAME --output_string STRING_TO_BE_APPENDED_TO_OUTPUTFILE_NAME --conf_thresh CONFIDENCE_THRESHOLD_FOR_DETECTIONS

Also if you are looking to conveniently process all images in one folder use this command

python tools/facedetection_images.py --gpu 0 --image_folder edata/IMAGE_FOLDER_NAME --output_folder OUTPUT_FOLDER_PATH --conf_thresh CONFIDENCE_THRESHOLD_FOR_DETECTIONS

The default confidence threshold is 0.85 which works for high quality videos or images where the faces are clearly visible. You can play around with this value.

The columns contained in the output text files are:

For videos:

frame_number x_min y_min x_max y_max confidence_score

For images:

image_path x_min y_min x_max y_max confidence_score

Where (x_min,y_min) denote the coordinates of the upper-left corner of the bounding box in image intrinsic coordinates and (x_max, y_max) denote the coordinates of the lower-right corner of the bounding box in image intrinsic coordinates. (ref. https://www.mathworks.com/help/images/image-coordinate-systems.html) confidence_score denotes the probability output of the model that the detection is correct (it is a number included in [0,1])

Voila, that easy!

After you're done with the docker container you can exit.

exit

You want to restart and re-attach to this same docker container so as to avoid compiling Caffe again. To do this first get the id for that container.

sudo docker ps -a

It should be the last one that was launched. Take note of CONTAINER ID. Then start and attach to that container.

sudo docker start CONTAINER_ID
sudo docker attach CONTAINER_ID

You can now continue processing videos.

Nataniel Ruiz and James M. Rehg
Georgia Institute of Technology

Credits: Original dockerface logo made by Freepik from Flaticon is licensed by Creative Commons BY 3.0, modified by Nataniel Ruiz.

Owner
Nataniel Ruiz
PhD candidate at Boston University doing Computer Vision and ML. M.S. from Georgia Tech, BA/M.S. from Ecole Polytechnique
Nataniel Ruiz
Code for our EMNLP 2021 paper "Learning Kernel-Smoothed Machine Translation with Retrieved Examples"

KSTER Code for our EMNLP 2021 paper "Learning Kernel-Smoothed Machine Translation with Retrieved Examples" [paper]. Usage Download the processed datas

jiangqn 23 Nov 24, 2022
Library for converting from RGB / GrayScale image to base64 and back.

Library for converting RGB / Grayscale numpy images from to base64 and back. Installation pip install -U image_to_base_64 Conversion RGB to base 64 b

Vladimir Iglovikov 16 Aug 28, 2022
Official PyTorch Implementation of Rank & Sort Loss [ICCV2021]

Rank & Sort Loss for Object Detection and Instance Segmentation The official implementation of Rank & Sort Loss. Our implementation is based on mmdete

Kemal Oksuz 229 Dec 20, 2022
Source code for Adaptively Calibrated Critic Estimates for Deep Reinforcement Learning

Adaptively Calibrated Critic Estimates for Deep Reinforcement Learning Official implementation of ACC, described in the paper "Adaptively Calibrated C

3 Sep 16, 2022
Stock-Prediction - prediction of stock market movements using sentiment analysis and deep learning.

Stock-Prediction- In this project, we aim to enhance the prediction of stock market movements using sentiment analysis and deep learning. We divide th

5 Jan 25, 2022
3D ResNets for Action Recognition (CVPR 2018)

3D ResNets for Action Recognition Update (2020/4/13) We published a paper on arXiv. Hirokatsu Kataoka, Tenga Wakamiya, Kensho Hara, and Yutaka Satoh,

Kensho Hara 3.5k Jan 06, 2023
v objective diffusion inference code for PyTorch.

v-diffusion-pytorch v objective diffusion inference code for PyTorch, by Katherine Crowson (@RiversHaveWings) and Chainbreakers AI (@jd_pressman). The

Katherine Crowson 635 Dec 30, 2022
Code and data for the EMNLP 2021 paper "Just Say No: Analyzing the Stance of Neural Dialogue Generation in Offensive Contexts". Coming soon!

ToxiChat Code and data for the EMNLP 2021 paper "Just Say No: Analyzing the Stance of Neural Dialogue Generation in Offensive Contexts". Install depen

Ashutosh Baheti 11 Jan 01, 2023
Subnet Replacement Attack: Towards Practical Deployment-Stage Backdoor Attack on Deep Neural Networks

Subnet Replacement Attack: Towards Practical Deployment-Stage Backdoor Attack on Deep Neural Networks Official implementation of paper Towards Practic

Xiangyu Qi 8 Dec 30, 2022
code for CVPR paper Zero-shot Instance Segmentation

Code for CVPR2021 paper Zero-shot Instance Segmentation Code requirements python: python3.7 nvidia GPU pytorch1.1.0 GCC =5.4 NCCL 2 the other python

zhengye 86 Dec 13, 2022
Efficient Conformer: Progressive Downsampling and Grouped Attention for Automatic Speech Recognition

Efficient Conformer: Progressive Downsampling and Grouped Attention for Automatic Speech Recognition Official implementation of the Efficient Conforme

Maxime Burchi 145 Dec 30, 2022
Pytorch implementation of ICASSP 2022 paper 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

IIGROUP 6 Sep 21, 2022
A highly efficient and modular implementation of Gaussian Processes in PyTorch

GPyTorch GPyTorch is a Gaussian process library implemented using PyTorch. GPyTorch is designed for creating scalable, flexible, and modular Gaussian

3k Jan 02, 2023
GARCH and Multivariate LSTM forecasting models for Bitcoin realized volatility with potential applications in crypto options trading, hedging, portfolio management, and risk management

Bitcoin Realized Volatility Forecasting with GARCH and Multivariate LSTM Author: Chi Bui This Repository Repository Directory ├── README.md

Chi Bui 113 Dec 29, 2022
A Transformer-Based Siamese Network for Change Detection

ChangeFormer: A Transformer-Based Siamese Network for Change Detection (Under review at IGARSS-2022) Wele Gedara Chaminda Bandara, Vishal M. Patel Her

Wele Gedara Chaminda Bandara 214 Dec 29, 2022
A collection of resources, problems, explanations and concepts that are/were important during my Data Science journey

Data Science Gurukul List of resources, interview questions, concepts I use for my Data Science work. Topics: Basics of Programming with Python + Unde

Smaranjit Ghose 10 Oct 25, 2022
The materials used in the SaxonJS tutorial presented at Declarative Amsterdam, 2021

SaxonJS-Tutorial-2021, version 1.0.4 Last updated on 4 November, 2021. Table of contents Background Prerequisites Starting a web server Running a Java

Saxonica 11 Oct 23, 2022
Transfer Learning Shootout for PyTorch's model zoo (torchvision)

pytorch-retraining Transfer Learning shootout for PyTorch's model zoo (torchvision). Load any pretrained model with custom final layer (num_classes) f

Alexander Hirner 169 Jun 29, 2022
2021 National Underwater Robotics Vision Optics

2021-National-Underwater-Robotics-Vision-Optics 2021年全国水下机器人算法大赛-光学赛道-B榜精度第18名 (Kilian_Di的团队:A榜[email pro

Di Chang 9 Nov 04, 2022
Public implementation of "Learning from Suboptimal Demonstration via Self-Supervised Reward Regression" from CoRL'21

Self-Supervised Reward Regression (SSRR) Codebase for CoRL 2021 paper "Learning from Suboptimal Demonstration via Self-Supervised Reward Regression "

19 Dec 12, 2022