Title of article :
Robust authentication using the unconstrained infrared face images
Author/Authors :
Mamta and Hanmandlu، نويسنده , , Madasu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
18
From page :
6494
To page :
6511
Abstract :
Face recognition under the unconstrained conditions that exist in surveillance is the need of the present times. Thus for high end security the research on IR based face recognition assumes importance because of its insensitivity to illumination, disguise and surgery. This paper presents IR face based biometric authentication using the information-set based four types of interactive features and two classifiers. The information sets originate from a fuzzy set on representing the uncertainty associated with the information source instead of a membership function which gives only the degree of association to the fuzzy set. The four feature types include the effective exponential information source (EEI), the effective Gaussian information source (EGI), the effective multi quadratic information source (EMQDI) and inverse of this feature (EIMQDI). The interactive features are obtained by taking the s-norms on the features from the successive windows. Two classifiers called the Hanman Classifier and the weighted Hanman Classifier are formulated using t-norms. The features and classifiers are tested on the created databases incorporating the unconstrained conditions such as occlusion, less resolution and noise.
Keywords :
Infrared face recognition (IR face recognition) , Hanman Classifier (HC) , Euclidean classifier (EC) , Weighted Hanman Classifier (WHC)
Journal title :
Expert Systems with Applications
Serial Year :
2014
Journal title :
Expert Systems with Applications
Record number :
2355108
Link To Document :
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