DSFD: Dual Shot Face Detector
By Jian Li, Yabiao Wang, Changan Wang, Ying Tai, Jianjun Qian, Jian Yang, Chengjie Wang, Jilin Li, Feiyue Huang.
Introduction
This paper is accepted by CVPR 2019.
In this paper, we propose a novel face detection network, named DSFD, with superior performance over the state-of-the-art face detectors. You can use the code to evaluate our DSFD for face detection.
For more details, please refer to our paper DSFD: Dual Shot Face Detector!
Our DSFD face detector achieves state-of-the-art performance on WIDER FACE and FDDB benchmark.
WIDER FACE
FDDB
Qualitative Results
Requirements
- Torch == 0.3.1
- Torchvision == 0.2.1
- Python == 3.6
- NVIDIA GPU == Tesla P40
- Linux CUDA CuDNN
Getting Started
Installation
Clone the github repository. We will call the cloned directory as $DSFD_ROOT
.
git clone https://github.com/TencentYoutuResearch/FaceDetection-DSFD.git
cd FaceDetection-DSFD
export CUDA_VISIBLE_DEVICES=0
Evaluation
-
Download the images of WIDER FACE and FDDB to
$DSFD_ROOT/data/
. -
Download our DSFD model [微云] [google drive] trained on WIDER FACE training set to
$DSFD_ROOT/weights/
. -
Check out
./demo.py
on how to detect faces using the DSFD model and how to plot detection results.
python demo.py [--trained_model [TRAINED_MODEL]] [--img_root [IMG_ROOT]]
[--save_folder [SAVE_FOLDER]] [--visual_threshold [VISUAL_THRESHOLD]]
--trained_model Path to the saved model
--img_root Path of test images
--save_folder Path of output detection resutls
--visual_threshold Confidence thresh
- Evaluate the trained model via
./widerface_val.py
on WIDER FACE.
python widerface_val.py [--trained_model [TRAINED_MODEL]] [--save_folder [SAVE_FOLDER]]
[--widerface_root [WIDERFACE_ROOT]]
--trained_model Path to the saved model
--save_folder Path of output widerface resutls
--widerface_root Path of widerface dataset
-
Download the eval_tool to show the WIDERFACE performance.
-
Evaluate the trained model via
./fddb_test.py
on FDDB.
python widerface_test.py [--trained_model [TRAINED_MODEL]] [--split_dir [SPLIT_DIR]]
[--data_dir [DATA_DIR]] [--det_dir [DET_DIR]]
--trained_model Path of the saved model
--split_dir Path of fddb folds
--data_dir Path of fddb all images
--det_dir Path to save fddb results
- Download the evaluation to show the FDDB performance.
Citation
If you find DSFD useful in your research, please consider citing:
@inproceedings{li2018dsfd,
title={DSFD: Dual Shot Face Detector},
author={Li, Jian and Wang, Yabiao and Wang, Changan and Tai, Ying and Qian, Jianjun and Yang, Jian and Wang, Chengjie and Li, Jilin and Huang, Feiyue},
booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
year={2019}
}