K. Karibasappa

Work place: Oxford College of Engineering, Bangalore, India

E-mail: k_karibasappa@hotmail.com

Website:

Research Interests: Artificial Intelligence, Computational Learning Theory, Image Compression, Image Manipulation, Image Processing, Data Mining, Data Structures and Algorithms

Biography

Dr.K. Karibasappa received B.E. (Electronics and Communication Engineering) degree from Malnad College of Engineering, Hassan, Karnataka, India in 1985, M.Tech degree from Jadavapur University India in 1998, and Ph.D. degree from Sambalpur University, India in 2004. He has more than 30 years of teaching experience. He is currently working as Principal of Oxford College of Engineering, Bangalore, India. He has published more than 50 papers in various International journals, International conferences and National conferences. His current research interests are Digital Image Processing, Machine Learning and perception, Artificial Intelligence, Data Mining, Knowledge Acquisition.

Author Articles
GCSTLPP: Face Recognition using Gabor Center-Symmetric Tensor Locality Preservative Projection Approach in Video

By Rajeshwari.J K. Karibasappa Gopalkrishna M.T

DOI: https://doi.org/10.5815/ijmecs.2016.04.03, Pub. Date: 8 Apr. 2016

Face Recognition has become the challenging and interesting research topic in the last few years. The aim is to design a robust Face Recognition System under different environmental conditions like illumination, pose and occlusion. These are the three major challenges in Face Recognition which may hinder the Face Recognition system. By combining the three successful representations such as Gabor filters, CS-LBP and TLPP better performance can be achieved as compared to just considering them individually. CS-LBP is used for describing interest regions which have good tolerance to illumination and computational efficiency and TLPP is used to take the data directly in the form of tensors as input. Since the number of the combined feature sets are more only a few feature sets is selected to be trained by the Support Vector Machine classifier. A number of experiments are conducted using YouTube celebrity, McGill Face dataset and as well as the own collected sequence under different conditions such as illumination variations, different poses, occlusion including indoor and outdoor scenes. This approach provides better results compared to traditional approaches.

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