Title : Face Verification Using support Vector Machines with Histogram Intersection Kernal

Type of Material: Thesis
Title: Face Verification Using support Vector Machines with Histogram Intersection Kernal
Researcher: Sekar, Mummalaneni Raja
Guide: Premchand, P.
Muralikrishna, I. V.
Department: Faculty of Computer Science and Engineering
Publisher: Jawaharlal Nehru Technological University, Hyderabad
Place: Hyderabad
Year: 2013
Language: English
Subject: Histogram
Intersection
Machines
support
Verification
Computer Science and Information Technology
Engineering and Technology
Dissertation/Thesis Note: PhD; Faculty of Computer Science and Engineering, Jawaharlal Nehru Technological University, Hyderabad, Hyderabad; 2013
Fulltext: Shodhganga

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035__|a(IN-AhILN)th_454050
040__|aJNTU_500028|dIN-AhILN
041__|aeng
100__|aSekar, Mummalaneni Raja|eResearcher
110__|aFaculty of Computer Science and Engineering|bJawaharlal Nehru Technological University, Hyderabad|dHyderabad|ein|0U-0017
245__|aFace Verification Using support Vector Machines with Histogram Intersection Kernal
260__|aHyderabad|bJawaharlal Nehru Technological University, Hyderabad|c2013
300__|a200 p.|c-|dNone
500__|aReferences p. 148-163 , appendix p. 164-200
502__|cFaculty of Computer Science and Engineering, Jawaharlal Nehru Technological University, Hyderabad, Hyderabad|d2013|bPhD
520__|aFace verification is an image categorization procedure. In this the face of the person is identified by using the given set of images. The precision of face verification system decreases when there is a variation in position of the testing image with the training images. The present thesis newlinediscusses various procedures to enhance the precision of face verification system under dissimilar orientations of testing and training images. One way of doing this is by adjusting the orientation of image applying bin calculation procedure. By being capable to modify the images, the testing and training images can be normalized so that they will have similar pose. After normalization training and testing images will have same pose. In this work we are utilizing support vector machines (SVM) newlinefor classification; the second procedure applies a Histogram intersection kernel planted in support vector discrimination function. The Histogram intersection kernel proved an enhanced the performance in face newline
650__|aComputer Science and Information Technology|2UGC
650__|aEngineering and Technology|2AIU
653__|aHistogram
653__|aIntersection
653__|aMachines
653__|asupport
653__|aVerification
700__|aPremchand, P.|eGuide
700__|eCo-Guide|aMuralikrishna, I. V.
856__|uhttp://shodhganga.inflibnet.ac.in/handle/10603/19858|yShodhganga
905__|afromsg

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