Multimodal biometric system verifies a person’s identity victimization additional than one physiological (face, fingerprint) or behavioral biometric traits (voice, signature). This kind of system aims to extend the irresponsibleness of the biometric system additionally and will increase the security level once compared to the systems developed victimization single biometric attribute. The fusion Uni- multimodal biometric system will take place at varied levels. The Multimodal systems that area unit already existing are face and ear, iris and fingerprint, palm prints and face, etc. Multimodal biometric system developed victimization fingerprint, hand pure mathematics needed the operator to form physical contact with a sensing device. This paper will reviews the two multimodal biometrics i.e. Iris and Ear biometrics in detail with features extraction method and also the recognition process.
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Iris, Ear, Recognition, Multimodal, Biometric System.