Skip to content

Methods for automatic detection of glasses in near-infrared iris images

Notifications You must be signed in to change notification settings

dasec/glasses-detection

Repository files navigation

glasses-detection

This repository contains code for automatic detection of glasses in near-infrared images implemented by Florian Struck.

License

This work is licensed under license provided by Hochschule Darmstadt (h_da-License).

Attribution

Any publications using the code must cite and reference the conference paper [1].

Contents

This repository contains 3 different approaches for glasses detection:

  • explicit-glasses-identifier - an explicit approach for glasses detection based on edges and reflections
  • dl-glasses-identifier - uses deep neuronal network to identify glasses
  • statistic-glasses-identifier - uses the BSIF filter and statistical metrics of an image to identify glasses

Instructions

The repository contains 3 independent projects. Each project has its own structure and dependencies and can therefore be built independently of the other projects. They can be built by running the "make" command in their respective project folders. Afterwards, the executable can be found in PROJECT/build/.

Models

The models used in the paper are available here: (Models)

Dependencies

explicit-glasses-identifier:

  • BOOST library (Version >= 1.52)
  • OpenCV (Version 2.4)
  • glog (Version 0.3.5)

dl-glasses-identifier:

statistic-glasses-identifier:

  • BOOST library (Version >= 1.52)
  • OpenCV (Version 2.4)
  • glog (Version 0.3.5)
  • matio (Version 1.5)

Contact

Code author: Florian Struck (florian.struck@stud.h-da.de)

References

  • [1] Pawel Drozdowski, Florian Struck, Christian Rathgeb, Christoph Busch: "Detection of Glasses in Near-infrared Ocular Images", in Proc. of the 11th IAPR International Conference on Biometrics (ICB 2018), Queensland, Australia, February 2018.

© Hochschule Darmstadt

About

Methods for automatic detection of glasses in near-infrared iris images

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published