Publication | Closed Access
Computational imaging systems for iris recognition
46
Citations
19
References
2004
Year
EngineeringBiometricsImage AnalysisIris RecognitionPattern RecognitionComputational ImagingIris Recognition ApplicationsMachine VisionOphthalmologyComputational Imaging SystemsPattern Recognition ApplicationInverse ProblemsComputer ScienceOptical Image RecognitionComputational Optical ImagingPhase RetrievalComputer VisionBiomedical ImagingImage ProcessorIris Recognition AccuracyIris Biometrics
Computational imaging systems are modern systems that consist of generalized aspheric optics and image processing capability. These systems can be optimized to greatly increase the performance above systems consisting solely of traditional optics. Computational imaging technology can be used to advantage in iris recognition applications. A major difficulty in current iris recognition systems is a very shallow depth-of-field that limits system usability and increases system complexity. We first review some current iris recognition algorithms, and then describe computational imaging approaches to iris recognition using cubic phase wavefront encoding. These new approaches can greatly increase the depth-of-field over that possible with traditional optics, while keeping sufficient recognition accuracy. In these approaches the combination of optics, detectors, and image processing all contribute to the iris recognition accuracy and efficiency. We describe different optimization methods for designing the optics and the image processing algorithms, and provide laboratory and simulation results from applying these systems and results on restoring the intermediate phase encoded images using both direct Wiener filter and iterative conjugate gradient methods.
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