Abstract:
Biometric identification is a procedure of identifying a person according to his/her
distinguishing characteristics. It comprises means for uniquely recognizing humans according
to one or more intrinsic physical or behavioral characters. Nowadays fingerprint identification
used in a different company in the world, include Ethiopia. The most challenge in the
performance of a fingerprint identification system is heavily impacted by the fingerprint image
quality. This study aims to design a multimodal biometrics identification system using
fingerprint and voice, which is used to improve security, to address unimodal biometrics
identification problems, and to increase the accuracy of fingerprint and voice identification.
All work is done in MATLAB environment and voice recorded by TECNO Spark Mobile. The
system is designed with two main components such as fingerprint identification and voice
identification component. Researchers design those components to perform common activates
such as preprocessing, feature extraction, training, and test. Finally fusion fingerprint with
voice, and evaluate the performance of fingerprint, voice, and Multimodal Biometric
identification. During voice preprocessing perform Silence removal and pre-emphasis activity
additional to feature extraction and Hidden Markov Model used for train and test voice. The
researcher use minutiae extraction and minutiae matching for fingerprint identification. To
integrate fingerprint and voice, first normalized by min-max approach then integrate using
matching scores level fusion by sum rule. For the experiment 30 fingerprints and 30 voices for
training and testing were used, the fingerprint data are obtained from the Fingerprint
Verification Company database from an online source and the voice was recorded from male
and female on 16KZ frequency. The multimodal biometric identification using fingerprint and
voice is evaluated using 10 voice data with 10 fingerprints, and the performance result shows
fingerprint and voice give 85% and 75% accuracy respectively, and their combination gained
90 % accuracy result. Multimodal biometrics identification system using fingerprint and voice
is very important to reduce fingerprint attacks such as; Spoofing, Exploit similarity, zero-effort
attempt, Replay attack, Denial of Service attack, and Hill-climbing types of attacks. The main
contribution of this thesis is to increase the accuracy of the Multimodal Biometric identification is a procedure of identifying a person according to his/her
distinguishing characteristics. It comprises means for uniquely recognizing humans according
to one or more intrinsic physical or behavioral characters. Nowadays fingerprint identification
used in a different company in the world, include Ethiopia. The most challenge in the
performance of a fingerprint identification system is heavily impacted by the fingerprint image
quality. This study aims to design a multimodal biometrics identification system using
fingerprint and voice, which is used to improve security, to address unimodal biometrics
identification problems, and to increase the accuracy of fingerprint and voice identification.
All work is done in MATLAB environment and voice recorded by TECNO Spark Mobile. The
system is designed with two main components such as fingerprint identification and voice
identification component. Researchers design those components to perform common activates
such as preprocessing, feature extraction, training, and test. Finally fusion fingerprint with
voice, and evaluate the performance of fingerprint, voice, and Multimodal Biometric
identification. During voice preprocessing perform Silence removal and pre-emphasis activity
additional to feature extraction and Hidden Markov Model used for train and test voice. The
researcher use minutiae extraction and minutiae matching for fingerprint identification. To
integrate fingerprint and voice, first normalized by min-max approach then integrate using
matching scores level fusion by sum rule. For the experiment 30 fingerprints and 30 voices for
training and testing were used, the fingerprint data are obtained from the Fingerprint
Verification Company database from an online source and the voice was recorded from male
and female on 16KZ frequency. The multimodal biometric identification using fingerprint and
voice is evaluated using 10 voice data with 10 fingerprints, and the performance result shows
fingerprint and voice give 85% and 75% accuracy respectively, and their combination gained
90 % accuracy result. Multimodal biometrics identification system using fingerprint and voice
is very important to reduce fingerprint attacks such as; Spoofing, Exploit similarity, zero-effort
attempt, Replay attack, Denial of Service attack, and Hill-climbing types of attacks. The main
contribution of this thesis is to increase the accuracy of the Multimodal biom