Work place: GNITS, Department of CSE, Shaikpet, Hyderabad, Telangana state, 500008, India
E-mail: smaddala2000@yahoo.com
Website:
Research Interests: Data Structures and Algorithms, Data Mining, Pattern Recognition, Neural Networks, Artificial Intelligence, Computer systems and computational processes
Biography
M. Seetha received M.S. degree in Software System Engineering from the Birla Institute of Technology and Science (BITS), Pilani, India, and awarded Ph.D. degree in Computer Science and Engineering from the Jawaharlal Neharu Technological University (JNTU) Hyderabad, India during 2007. Since from 1999 to 2005, she has worked as Assistant Professor in Computer Science Engineering Department of Chaitanya Bharathi Institute of Technology, Hyderabad. Also worked as Associate Professor in 2005 to 2008. She is currently working as Professor and HOD in the Department of Computer Science and Engineering of G. Narayanamma Institute of Technology and Sciences, affiliated to JNTU, Hyderabad, India. SecondAuthor is the author of over 51 technical publications. Her research interest includes Image Processing, Pattern Recognition, Artificial Intelligence Neural Networks, Data communication and Interfacing, Data mining and Computer Organization. She is recognized as supervisor from Osmania University, Reviewer for International journals of Information Fusion. and also for ACM journal
By G. P. Hegde M. Seetha Nagaratna P Hegde
DOI: https://doi.org/10.5815/ijigsp.2018.11.06, Pub. Date: 8 Nov. 2018
This paper demonstrates mainly on feature extraction by analytic and holistic methods and proposes a novel approach for feature level fusion for efficient expression recognition. Gabor filter magnitude feature vector is fused with upper part geometrical features and phase feature vector is fused with lower part geometrical features respectively. Both these high dimensional feature dataset has been projected into low dimensional subspace for de-correlating the feature data redundancy by preserving local and global discriminative features of various expression classes of JAFFE, YALE and FD databases. The effectiveness of subspace of fused dataset has been measured with different dimensional parameters of Gabor filter. The experimental results reveal that performance of the subspace approaches for high dimensional proposed feature level fused dataset compared with state of art approaches.
[...] Read more.DOI: https://doi.org/10.5815/ijigsp.2017.01.07, Pub. Date: 8 Jan. 2017
This paper demonstrates mainly on enhancement of extracted feature and proposes a novel approach for feature level fusion for efficient expression recognition. Extracted Gabor filter magnitude feature vector has been fused with upper face part geometrical features and Gabor phase feature vector has been fused with lower face part geometrical features respectively. Both these high dimensional feature dataset have been projected into low dimensional subspace for de-correlating the feature data redundancy by preserving local and global discriminative features of various expression classes of JAFFE, YALE and FD databases. The effectiveness of subspace of fused dataset has been measured with different dimensional parameters of Gabor filter. The experimental results reveal that performance of the subspace approaches for high dimensional proposed feature level fused dataset yields higher accuracy rates compared to state of art approaches.
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