SPEAKER IDENTIFICATION BASED ON BIOMETRIC FEATURES USING SOFT COMPUTING TECHNIQUES
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Abstract
Biometric finds wide application in the field of recognizing to identifying or recognize
newlinethe person by their physical or behavioral characteristic. These characteristic may be face,
newlinefinger, retina, gait, speech etc. It is more secure than password because it cannot be
newlineshared, copied or lost. It is associated with the biological features of the person itself.
newlineThe present work uses facial biometrics to recognize the people. As compared to other
newlinebiometric; like finger and palm, face has distinct advantage of being a non contact
newlineprocess. Face recognition use the spatial geometric or distinct features of face. But it is
newlinenot always efficient to use only front view of face because of non-cooperative behaviors.
newlineSo this work used up, front and down view in the face based recognition process. For
newlineeach view some important special geometric features like right eye height, right eye
newlinewidth, right eye area, left eye height, left eye width, left eye area, mouth height, mouth
newlinewidth, nose width, face height, face width, face area, center of mass are extracted. Data
newlineset are created for each view separately and the soft computing models like ANN, PSONN
newlineand ANFIS are used to train and test the model.
newlineIn the neural network based recognition process the optimum efficient model has been
newlinedesigned by changing parameters like number of neurons in hidden layer to create the
newlinevariation of models. The neural network model is having one input, one output and 10
newlineneurons in the hidden layer, training function is Levenberg-Marquardt, learning mu rate
newlineis .0001, and performance function is mean square error with random data division. This
newlinework checks the accuracy of individual face view and combined face view and the result
newlineshowed that combined view gives the good results as compared to individual and the
newlineaccuracy of the result is 97.2%.