Open Access
Subscription Access
Open Access
Subscription Access
Palmprint Classification Using Contourlet Transforms and Orthogonal Moments
Subscribe/Renew Journal
The increased demand for accurate and reliable solutions for authentication makes Biometrics increasingly gaining importance today. Palmprint is widely considered like fingerprint, for the common features like ridges. It also differs from fingerprint because of its texture based in nature rather than minutiae based. In preprocessing ROI is extracted from the palmprint using a new methodology. Contourlet transform is applied to capture the features before calculating the Zernike moments. Matching is performed by using k-fold cross validation. Since, Contourlet transform is having the property of capturing high dimensional features from multidirectional and Zernike moments have the property of geometrical invariance, they are superior in image representative capability. From the experimental results, it has been observed that Contourlet Transform combined with Zernike moments achieve superior performance than the other well-known models.
Keywords
Biometrics, Palmprint, ROI Extraction, Feature Extraction, Contourlet Transform, Zernike Moments.
User
Subscription
Login to verify subscription
Font Size
Information
Abstract Views: 228
PDF Views: 3