Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/22342
Title: Artificially Intelligent Bot
Authors: Chaudhary, Atif
Keywords: Information Technology
Issue Date: 2020
Publisher: Quaid I Azam University
Abstract: Face is the representation of one 's identity. Hence, we have proposed an automated attendance system based on face recognition. Face recognition system is very useful in life applications especially in security control systems. The airpoli protection system uses face recognition to identify suspects and FBI (Federal Bureau of Investigation) uses face recognition for criminal investigations. In our proposed approach, firstly, video framing is performed by activating the camera through a user- friendly interface. The face ROT is detected and segmented fr0111 the video frame by using Viola-Jones algorithm . In the preprocessing stage, sca ling of the size of images is performed if necessary, in order to prevent loss of information. The median fi ltering is applied to remove noise followed by conversion of colour images to graysca le images. After that, contrast- limited adaptive histogram equalization (CLAHE) is implemented on images to enhance the contrast of images. In face recognition stage, enhanced local binary pattern (LBP) and principal component analysis (PCA) is applied cOlTespond ingly in order to extract the features from facial images. In our proposed approach, the enhanced local binary pattern outperform the original LBP by reducing the illumination effect and increasing the recogn ition rate. Next, the features extracted from the test images are compared with the features extracted from the training images. The facial images are then classified and recognized based on the best result obtained from the combination of algorithm, enhanced LBP and PCA. Finally, the attendance of the recogn ized student will be marked and saved in the excel file. The student who is not registered will also be able to register on the spot and notification wil l be given if students sign in more than once. The average accuracy of recognition is 100 % for good quality images, 94.12 % of low-quality images and 95.76 % for Yale face database when two images per person are trained.
URI: http://hdl.handle.net/123456789/22342
Appears in Collections:M.Sc

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