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Iris image segmentation, encoding, and matching software

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easyeye

EasyEye is software for biometric iris image segmentation, encoding, and matching. It is in a very rough developmental state.

Overview

EasyEye is iris image analysis software. It consists of a suite of command-line utilities that analyze iris images, encode iris features, and match iris encodings.

The origin of the iris image analysis source code is the VASIR project (Video-based Automatic System for Iris Recognition) from NIST. The code has been modified, updated, reorganized and refactored to facilitate development.

The portions of the EasyEye source code that were developed by NIST are in the public domain. There are many authors deserving acknowledgment for contributions, and they are identified in comments in the portions of the code that they wrote. To list a few:

  • Yooyoung Lee (NIST)
  • Xiaomei Liu (University of Notre Dame)
  • Libor Masek (University of Western Australia)
  • Peter Kovesi (University of Western Australia)

New and derived code is copyright (c) 2014 Michael Chaberski, distributed under the terms of the MIT License. (See LICENSE file for full text.)

Does it work?

The short answer is "I don't know, but maybe." All the pieces are there, and the upstream (VASIR) works, in that the segmentation and matching outputs are rougly within range of what's expected. However, the process of deriving more manageable, transparent, and debuggable code from upstream -- that is, turning VASIR into EasyEye -- could have introduced fundamental errors.

Diagnostic images produced by the software show that the core segmentation implementation does work, in that it reliably produces reasonably accurate results on high quality input eye images. Eyelid detection is currently pretty hairy, and it's uncertain whether that is a regression from the upstream version. Normalization, encoding, and matching have not been tested for accuracy or reliability. In other words, it's currently possible that the matching results are no better than a coin flip, but we know that they used to be better than a coin flip, and work is underway to get them back to that performance level.

Roadmap

The following big-picture changes are planned:

  • Support greater configurability/extensibility in image processing, segmentation, and encoding (e.g. alternative boundary and eyelid detection techniques, other normalization and encoding strategies)
  • Remove unnecessary legacy code (in optimasek)
  • Add support for segmenting/encoding eye images at a distance, as from frames of video (the NIR_FACE_VIDEO and NIR_IRIS_VIDEO data types that are supported in VASIR)
  • Provide API and executables for iris image quality analysis
  • Support Windows as a development and deployment platform

Releases

Binaries built from the source code are available from a PPA at [https://launchpad.net/~mchaberski/+archive/ppa] ([https://launchpad.net/~mchaberski/+archive/ppa). Follow the PPA link for detailed instructions. This is the short version:

$ sudo add-apt-repository ppa:mchaberski/ppa
$ sudo apt-get update
$ sudo apt-get install easyeye

This should also work on Debian, but after you add the repository, you may want to edit the new .list file in /etc/apt/sources.list.d to align the Ubuntu series (e.g. saucy) with your Debian version (e.g. sid).

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Iris image segmentation, encoding, and matching software

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