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BIOMETRIC RETINA IDENTIFICATION SYSTEM BASED ON NEURAL NETWORKS

A THESIS SUBMITTED TO

THE GRADUATE SCHOOL OF APPLIED SCIENCES

OF

NEAR EAST UNIVERSITY by

SELİN ÜZELALTINBULAT

THE DEGREE OF MASTER OF SCIENCE IN COMPUTER ENGINEERING

NICOSIA 2013

S ZE LA LT IN BU LA T

NE U, 201 3

(2)

BIOMETRIC RETINA IDENTIFICATION SYSTEM BASED ON NEURAL NETWORKS

A THESIS SUBMITTED TO

THE GRADUATE SCHOOL OF APPLIED SCIENCES

OF

NEAR EAST UNIVERSITY by

SELİN ÜZELALTINBULAT

THE DEGREE OF MASTER OF SCIENCE IN COMPUTER ENGINEERING

(3)

NICOSIA 2013

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