A learning system prediction method using fuzzy regression

Palmprint identification is the measurement of palmprint features for recognizing the identity of a user. Palmprint is universal, easy to capture and does not change much across time. Palmprint biometric system does not requires specialized acquisition devices. It is user-friendly and more acceptabl...

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Main Authors: Yih, E.W.K., Sainarayanan, G., Chekima, A., Narendra, G.
Format: Conference or Workshop Item
Published: 2008
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Online Access:http://eprints.um.edu.my/2336/
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spelling my.um.eprints.23362011-12-15T02:03:04Z http://eprints.um.edu.my/2336/ A learning system prediction method using fuzzy regression Yih, E.W.K. Sainarayanan, G. Sainarayanan, G. Chekima, A. Narendra, G. QA75 Electronic computers. Computer science Palmprint identification is the measurement of palmprint features for recognizing the identity of a user. Palmprint is universal, easy to capture and does not change much across time. Palmprint biometric system does not requires specialized acquisition devices. It is user-friendly and more acceptable by the public. Besides that, palmprint contains different types of features, such as geometry features, line features, point features, statistical features and texture features. In this work, peg-less right hand images for 100 different individuals were acquired ten times. No special lighting is used in this setup. The hand image is segmented and its key points are located. The hand image is aligned and cropped according to the key points. The palmprint image is enhanced and resized. Sequential modified Haar transform [1] is applied to the resized palmprint image to obtain Modified Haar Energy (MHE) feature. The sequential modified Haar wavelet can maps the integer-valued signals onto integer-valued signals without abandoning the property of perfect reconstruction. The MHE feature is compared with the feature vectors stored in the database using Euclidean Distance. The accuracy of the MHE feature and Haar energy feature under different decomposition levels and combinations are compared. 94.3678 percent accuracy can be achieved using proposed MHE feature. 2008 Conference or Workshop Item PeerReviewed Yih, E.W.K. and Sainarayanan, G. and Sainarayanan, G. and Chekima, A. and Narendra, G. (2008) A learning system prediction method using fuzzy regression. In: International Conference on Signal Processing, Communications and Networking , JAN 04-06, 2008 , Anna Univ, Chennai, INDIA. http://apps.webofknowledge.com/full_record.do?product=UA&search_mode=Refine&qid=2&SID=N281Pb5dDLLCJF6LH96&page=22&doc=214&cacheurlFromRightClick=no
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Yih, E.W.K.
Sainarayanan, G.
Sainarayanan, G.
Chekima, A.
Narendra, G.
A learning system prediction method using fuzzy regression
description Palmprint identification is the measurement of palmprint features for recognizing the identity of a user. Palmprint is universal, easy to capture and does not change much across time. Palmprint biometric system does not requires specialized acquisition devices. It is user-friendly and more acceptable by the public. Besides that, palmprint contains different types of features, such as geometry features, line features, point features, statistical features and texture features. In this work, peg-less right hand images for 100 different individuals were acquired ten times. No special lighting is used in this setup. The hand image is segmented and its key points are located. The hand image is aligned and cropped according to the key points. The palmprint image is enhanced and resized. Sequential modified Haar transform [1] is applied to the resized palmprint image to obtain Modified Haar Energy (MHE) feature. The sequential modified Haar wavelet can maps the integer-valued signals onto integer-valued signals without abandoning the property of perfect reconstruction. The MHE feature is compared with the feature vectors stored in the database using Euclidean Distance. The accuracy of the MHE feature and Haar energy feature under different decomposition levels and combinations are compared. 94.3678 percent accuracy can be achieved using proposed MHE feature.
format Conference or Workshop Item
author Yih, E.W.K.
Sainarayanan, G.
Sainarayanan, G.
Chekima, A.
Narendra, G.
author_facet Yih, E.W.K.
Sainarayanan, G.
Sainarayanan, G.
Chekima, A.
Narendra, G.
author_sort Yih, E.W.K.
title A learning system prediction method using fuzzy regression
title_short A learning system prediction method using fuzzy regression
title_full A learning system prediction method using fuzzy regression
title_fullStr A learning system prediction method using fuzzy regression
title_full_unstemmed A learning system prediction method using fuzzy regression
title_sort learning system prediction method using fuzzy regression
publishDate 2008
url http://eprints.um.edu.my/2336/
http://apps.webofknowledge.com/full_record.do?product=UA&search_mode=Refine&qid=2&SID=N281Pb5dDLLCJF6LH96&page=22&doc=214&cacheurlFromRightClick=no
_version_ 1643686902306439168
score 13.160551