GAIT Recognition using PAL and PAL Entropy with BPNN, SVM and MDA

Gait recognition is one sort of biometric innovation that can be utilized to monitor individuals without their collaboration. Controlled situations for example banks, army bases and even terminals need to have the capacity to rapidly distinguish dangers and give varying levels of access to distincti...

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Veröffentlicht in:International journal of computer applications 2015-01, Vol.120 (12), p.33-35
1. Verfasser: Kaplesh, Pooja
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description Gait recognition is one sort of biometric innovation that can be utilized to monitor individuals without their collaboration. Controlled situations for example banks, army bases and even terminals need to have the capacity to rapidly distinguish dangers and give varying levels of access to distinctive client groups. Gait demonstrates a specific way or way of proceeding onward foot and gait recognition is the procedure of distinguishing a person by the way in which they walk. Gait is less unpretentious biometric which offers the likelihood to distinguish individuals at a distance with no connection or co-operation from the subject and this is the property which makes it so engaging. This paper proposed new system for gait recognition. In this method, firstly binary silhouette of a walking person is detected from each frame. Secondly, feature from each frame is extracted using image processing operation. Here step size length, distance between hands and cycle length are talking as key feature. Here all experiments are done on gait database. Different groups of training and testing dataset give different results.
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subjects Biometrics
Entropy
Frames
Gait
Gait recognition
Monitors
Walking
title GAIT Recognition using PAL and PAL Entropy with BPNN, SVM and MDA
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