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Performance Evaluation of non-ideal IRIS Based Recognition System Implementing Global ICA Encoding

Research Abstract
We describe and analyze the performance of a non-ideal iris recognition system. The system is designed to process non-ideal iris images in two steps: (i) estimation of the gaze direction and (ii) processing and encoding of the rotated iris image. We use two objective functions to estimate the gaze direction: Hamming distance and Daugman’s integro-differential operator and determine an estimated angle by picking the value that optimizes the selected objective function. After the angle is estimated, the off-angle iris image undergoes geometric transformations involving the estimated angle and is further processed as if it were a frontal view image. The encoding technique developed in this work is based on application of the global Independent Component Analysis (ICA) to masked iris images. We use two datasets: CASIA dataset and a special dataset of offangle iris images collected at WVU to verify the performance of the encoding technique and angle estimator, respectively. A series of Receiver Operating Characteristics (ROCs) demonstrates various effects on the performance of the non-ideal iris based recognition system implementing the global ICA encoding.
Research Authors
N. Schmid and Vivekanad Dorairaj and G.Fahmy
Research Department
Research Journal
IEEE International Conference on Image Processing, pp. 285-288, Genova, Italy 2005.
Research Pages
NULL
Research Publisher
NULL
Research Rank
3
Research Vol
NULL
Research Website
NULL
Research Year
2005