Skip to content

C++ detect and train of "A Fast and Accurate Unconstrained Face Detector".

Notifications You must be signed in to change notification settings

CitrusRokid/OpenNPD

This commit does not belong to any branch on this repository, and may belong to a fork outside of the repository.

Folders and files

NameName
Last commit message
Last commit date

Latest commit

fa15791 · Apr 17, 2017

History

12 Commits
Jun 10, 2016
Jun 10, 2016
Jun 10, 2016
Jun 10, 2016
Jun 10, 2016
Jun 10, 2016
Jun 10, 2016
Jun 10, 2016
Apr 17, 2017

Repository files navigation

OpenNPD

Project of object detection.

Usage:

  1. Add needed librarys to 3rdpart folder(opencv).

  2. Make: cd src; make clean; make RELEASE=1; cd ..;

  3. Detect example: sh ./script/test_detect_demo.sh

  4. Training example: Please refer to ./script/npd_train_demo.sh

Note:

  1. Thereis a npddetect::prescandetect function for faster detection with some lose on recall. Additional parameter stepR refers to pre-scan step size compared to the original scan step size ( float more than 1 ) . The thresR refers to the threshold to reject the window( float in [0-1] ).

Result:

  • ROC:

    图片1.png-123.8kB

  • Speed:

| image size | window size | cores | time (ms) | | :---: | :---: | :---: | :---: | :---: | | 640x480 | 20x20 | 1 | ~50 |

  • ROC for npddetect::prescandetect:

图片2.png-109.5kB

  • Speed for npddetect::prescandetect:
params image size window size time(ms)
none 1920x1080 20x20 532.400239
stepR = 2, thresR = 0.2 1920x1080 20x20 344.154205
stepR = 2, thresR = 0.3 1920x1080 20x20 282.128798
stepR = 3, thresR = 0.2 1920x1080 20x20 286.230415
stepR = 3, thresR = 0.3 1920x1080 20x20 226.091203
stepR = 4, thresR = 0.3 1920x1080 20x20 202.147923

License and Citation

This software is free for noncommercial use. This software is provided "as is", without any warranty of upgradation or customized development. It is your own risk of using this software. The authors are not responsible for any damage caused by using this software.

References:

This software is based on the MATLAB edition. Thanks for the work of Liao et al. Project page.

@article{

 Author = {Shengcai Liao, Member, IEEE, Anil K. Jain, Fellow, IEEE, and Stan Z. Li, Fellow, IEEE},
 Title = {A Fast and Accurate Unconstrained Face Detector},
 Year = {2014}

}

About

C++ detect and train of "A Fast and Accurate Unconstrained Face Detector".

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages