





Bimodal Person Identification Using Hand-Geometry and Palm-Print Features
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Multi-modal biometric systems capture two or more biometric samples and use fusion to combine their analysis to produce a better match decision by simultaneously decreasing the False Acceptance Rate (FAR) and False Rejection Rate(FRR). Information from multiple sources can be consolidated in several distinct levels, including the feature extraction level, match score level and decision level. In this paper, palm-print and hand-geometry are combined for person identity verification. Unlike other multimodal biometric systems, two biometrics can be taken from the same image. This method attempts to improve the performance of palm-print-based verification system by integrating hand geometry feature. The proposed system consists of four major blocks: Image acquisition module, image pre-processing block, feature extraction and identification. Finger lengths, finger widths and palm widths are taken as hand geometry features while palm features are found using transform domain approach. Integration of palm and hand geometry features at decision level has given recognition rate of 96.83% at lower training set. Also it can be seen that Equal Error Rate (EER) has been considerably reduced on integration.
Keywords
Biometric Identification, Feature Fusion, Hand Geometry, Multimodal Biometric, Palmprint Identification.
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