Transformation of Hand-Shape Features for a Biometric Identification Approach
The present work presents a biometric identification system for hand shape identification. The different contours have been coded based on angular descriptions forming a Markov chain descriptor. Discrete Hidden Markov Models (DHMM), each representing a target identification class, have been trained...
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2012-01-01
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Online Access: | http://www.mdpi.com/1424-8220/12/1/987/ |
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doaj-5e9f7be4fbd549dbbd70593cf7bb19ec2020-11-24T23:07:38ZengMDPI AGSensors1424-82202012-01-01121987100110.3390/s120100987Transformation of Hand-Shape Features for a Biometric Identification ApproachJesús B. AlonsoCarlos M. TraviesoJuan Carlos BriceñoThe present work presents a biometric identification system for hand shape identification. The different contours have been coded based on angular descriptions forming a Markov chain descriptor. Discrete Hidden Markov Models (DHMM), each representing a target identification class, have been trained with such chains. Features have been calculated from a kernel based on the HMM parameter descriptors. Finally, supervised Support Vector Machines were used to classify parameters from the DHMM kernel. First, the system was modelled using 60 users to tune the DHMM and DHMM_kernel+SVM configuration parameters and finally, the system was checked with the whole database (GPDS database, 144 users with 10 samples per class). Our experiments have obtained similar results in both cases, demonstrating a scalable, stable and robust system. Our experiments have achieved an upper success rate of 99.87% for the GPDS database using three hand samples per class in training mode, and seven hand samples in test mode. Secondly, the authors have verified their algorithms using another independent and public database (the UST database). Our approach has reached 100% and 99.92% success for right and left hand, respectively; showing the robustness and independence of our algorithms. This success was found using as features the transformation of 100 points hand shape with our DHMM kernel, and as classifier Support Vector Machines with linear separating functions, with similar success.http://www.mdpi.com/1424-8220/12/1/987/hand-based biometricshand identificationDHMM kernelsupervised classificationimage sensoredge detectionbiometrics |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jesús B. Alonso Carlos M. Travieso Juan Carlos Briceño |
spellingShingle |
Jesús B. Alonso Carlos M. Travieso Juan Carlos Briceño Transformation of Hand-Shape Features for a Biometric Identification Approach Sensors hand-based biometrics hand identification DHMM kernel supervised classification image sensor edge detection biometrics |
author_facet |
Jesús B. Alonso Carlos M. Travieso Juan Carlos Briceño |
author_sort |
Jesús B. Alonso |
title |
Transformation of Hand-Shape Features for a Biometric Identification Approach |
title_short |
Transformation of Hand-Shape Features for a Biometric Identification Approach |
title_full |
Transformation of Hand-Shape Features for a Biometric Identification Approach |
title_fullStr |
Transformation of Hand-Shape Features for a Biometric Identification Approach |
title_full_unstemmed |
Transformation of Hand-Shape Features for a Biometric Identification Approach |
title_sort |
transformation of hand-shape features for a biometric identification approach |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2012-01-01 |
description |
The present work presents a biometric identification system for hand shape identification. The different contours have been coded based on angular descriptions forming a Markov chain descriptor. Discrete Hidden Markov Models (DHMM), each representing a target identification class, have been trained with such chains. Features have been calculated from a kernel based on the HMM parameter descriptors. Finally, supervised Support Vector Machines were used to classify parameters from the DHMM kernel. First, the system was modelled using 60 users to tune the DHMM and DHMM_kernel+SVM configuration parameters and finally, the system was checked with the whole database (GPDS database, 144 users with 10 samples per class). Our experiments have obtained similar results in both cases, demonstrating a scalable, stable and robust system. Our experiments have achieved an upper success rate of 99.87% for the GPDS database using three hand samples per class in training mode, and seven hand samples in test mode. Secondly, the authors have verified their algorithms using another independent and public database (the UST database). Our approach has reached 100% and 99.92% success for right and left hand, respectively; showing the robustness and independence of our algorithms. This success was found using as features the transformation of 100 points hand shape with our DHMM kernel, and as classifier Support Vector Machines with linear separating functions, with similar success. |
topic |
hand-based biometrics hand identification DHMM kernel supervised classification image sensor edge detection biometrics |
url |
http://www.mdpi.com/1424-8220/12/1/987/ |
work_keys_str_mv |
AT jesusbalonso transformationofhandshapefeaturesforabiometricidentificationapproach AT carlosmtravieso transformationofhandshapefeaturesforabiometricidentificationapproach AT juancarlosbriceno transformationofhandshapefeaturesforabiometricidentificationapproach |
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