Research Article Open Access

NON-COOPERATIVE IRIS RECOGNITION: A NOVEL APPROACH FOR SEGMENTATION AND FAKE IDENTIFICATION

M. Rajeev Kumar1, M. Dilsath Fathima1, K. Kiruthika1 and M. S. Saravanan1
  • 1 Vel Tech University, India

Abstract

Iris recognition, the ability to recognize and distinguish individuals by their pattern, is the most reliable biometric in terms of recognition and identification performance. However, performance of these systems is affected by the heterogeneous images (regarding focus, contrast, or brightness) and with several noise factors (iris obstruction and reflection) when the cooperation is not expectable from the subject. Current Iris recognition system does not deal with the noise data and substantially increase their error rates in these conditions. The non-cooperative iris segmentation takes a vital role in human identification system. This can be simplified with the help of canny edge detection as well as Cartesian to polar conversion methods. An Iris classification method is proposed on the segmented and normalized iris image that divides the image into six regions, followed by independent feature extraction in each region. This will provide the iris signature in terms of binary values, then that are compared with each region for the identification. In addition to this Fake identification is also done in this study. Fake, the original image is forged by fixing lenses over the iris portion.

Journal of Computer Science
Volume 9 No. 9, 2013, 1241-1251

DOI: https://doi.org/10.3844/jcssp.2013.1241.1251

Submitted On: 9 July 2013 Published On: 6 August 2013

How to Cite: Kumar, M. R., Fathima, M. D., Kiruthika, K. & Saravanan, M. S. (2013). NON-COOPERATIVE IRIS RECOGNITION: A NOVEL APPROACH FOR SEGMENTATION AND FAKE IDENTIFICATION. Journal of Computer Science, 9(9), 1241-1251. https://doi.org/10.3844/jcssp.2013.1241.1251

  • 3,135 Views
  • 3,085 Downloads
  • 0 Citations

Download

Keywords

  • Non-Cooperative Iris Recognition
  • Edge Detection
  • Cartesian to Polar Conversion
  • Iris Classification
  • Feature Extraction
  • Fake Identification