Title:
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A NOVEL METHOD FOR IRIS FEATURE EXTRACTION BASED ON CONTOURLET TRANSFORM AND COOCCURRENCE MATRIX |
Author(s):
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Amir Azizi , Hamid Reza Pourreza |
ISBN:
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978-972-8924-87-4 |
Editors:
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António Palma dos Reis |
Year:
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2009 |
Edition:
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Single |
Keywords:
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BiometricIris Recognition Contourlet Transform Co-occurrence Matrix - Support Vector Machine (SVM) |
Type:
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Full Paper |
First Page:
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53 |
Last Page:
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60 |
Language:
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English |
Cover:
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Full Contents:
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click to dowload
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Paper Abstract:
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In different areas of Biometrics, recognition by iris images in nowadays has been taken into consideration by researchers
as one of the common methods of identification like passwords, credit cards or keys. Iris recognition a novel biometric
technology has great advantages such as variability, stability and security. Although the area of the iris is small it has
enormous pattern variability which makes it unique for every one and hence leads to high reliability.
In this paper we propose a new feature extraction method for iris recognition based on contourlet transform. Contourlet
transform captures the intrinsic geometrical structures of iris image. It decomposes the iris image into a set of directional
sub-bands with texture details captured in different orientations at various scales so for reducing the feature vector
dimensions we use the method for extract only significant bit and information from normalized iris images. In this
method we ignore fragile bits. At last, the feature vector is created by using Co-occurrence matrix properties.
For analyzing the desired performance of our proposed method, we use the CASIA dataset, which is comprised of 108
classes with 7 images in each class and each class represented a person.
And finally we use SVM and KNN classifier for approximating the amount of people identification in our proposed
system.
Experimental results show that the proposed increase the classification accuracy and also the iris feature vector length is
much smaller versus the other methods. |
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