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dc.contributor.authorBasit, Abdul-
dc.date.accessioned2017-11-28T06:49:41Z-
dc.date.accessioned2020-04-09T16:36:02Z-
dc.date.available2020-04-09T16:36:02Z-
dc.date.issued2009-
dc.identifier.urihttp://142.54.178.187:9060/xmlui/handle/123456789/2745-
dc.description.abstractIdentification and verification of human beings is very important because of today’s security condition throughout the world. From the beginning of 19th century, iris is being used for recognition of humans. Recent efforts in computer vision have made it possible to develop automated systems that can recognize individuals efficiently and with high accuracy. The main functional components of existing iris-recognition systems consist of image acquisition, iris localization, feature extraction and matching. While designing the system, one must understand physical nature of the iris, image processing and their analysis to make an accurate system. The most difficult and time consuming part of iris recognition is iris localization. In this thesis, performance of iris localization and normalization processes in iris recognition systems has been enhanced through development of effective and efficient strategies. Bit plane and wavelet based features has been analyzed for recognition. Iris localization is the most important step in iris recognition systems. Iris is localized by first finding the boundary between pupil and iris using different methods for different databases. This is because the iris image acquiring devices and environment is different. Non-circular boundary of pupil is obtained by dividing the circular pupil into specific points and then these points are forced to shift at exact boundary position of pupil which are linearly joined. The boundary between iris and sclera is obtained by finding points of maximum gradient in radially outwards different directions. Redundant points are discarded by finding certain distance from the center of the pupil to the concerned relevant point. This is because the distance between center of pupil and center of iris is very small. The domain for different directions is left and right sectors of iris when pupil center is at the origin of the axes. Eyelids are detected by fitting parabolas using points satisfying specific criterions. Experimental results show that the efficiency of the proposed method is very high as compared to other existing methods. Improved localization results are reported using proposed methods. The experiments are carried out for four different iris image datasets. Correct localization rate of 100% (pupil circular boundary), 99.8% (non-circular pupil), 99.77% (iris outer -ii-boundary), 98.91% (upper eyelid detection) and 96.6% (lower eyelid detection) has been achieved for different datasets. To compensate the change in size of the iris due to pupil constriction / dilation and camera to eye distance, different normalization schemes have been designed and implemented based on difference reference points. Mainly two different features extraction methodologies have been proposed. One is related to the bit planes of normalized image and other utilizes the properties of wavelet transform. Recognition results based on bit plane features of the iris have also been obtained and correct recognition rate of up to 99.64% has been achieved using CASIA version 3.0. Results on other databases have also provided encouraging performance with accuracy of 94.11%, 97.55% and 99.6% on MMU, CASIA version 1.0 and BATH iris databases respectively. Different wavelets have been applied to get best iris recognition results. Different levels of wavelet transforms (Haar, Daubechies, Symlet, Coiflet, Biorthogonal and Mexican hat) along with different number of coefficients have been used. Coiflet wavelet resulted in high accuracies of 99.83%, 96.59%, 98.44% and 100% on CASIA version 1.0, CASIA version 3.0, MMU and BATH iris databases respectively.en_US
dc.description.sponsorshipHigher Education Commission, Pakistanen_US
dc.language.isoenen_US
dc.publisherNATIONAL UNIVERSITY OF MODERN LANGUAGES ISLAMABADen_US
dc.subjectApplied Sciencesen_US
dc.titleIRIS LOCALIZATION USING GRAYSCALE TEXTURE ANALYSIS AND RECOGNITION USING BIT PLANESen_US
dc.typeThesisen_US
Appears in Collections:Thesis

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