Sudeep Thepade

Work place: Department of Computer Engineering, Pimpri Chinchwad College of Engineering, Pune, India

E-mail: sudeepthepade@gmail.com

Website:

Research Interests: Computational Science and Engineering, Computer systems and computational processes, Engineering

Biography

Dr. Sudeep Thepade: Dr. Sudeep Thepade has received Ph.D. Computer Engineering from SVKM‘s NMIMS in 2011, M.E. in Computer Engineering from University of Mumbai in 2008 with Distinction, B.E.(Computer) degree from North Maharashtra University with Distinction in 2003. He has about 11 years of experience in teaching and industry. Currently he is Dean(R &D) and Professor, Computer Engineering at PCCOE, Pune. He is member of International Advisory Committee for many International Conferences, acting as reviewer for many referred international journals/transactions including IEEE and IET. He more than 135 papers in National/International Conferences/Journals to his credit.

Author Articles
Content Based Image Recognition by Information Fusion with Multiview Features

By Rik Das Sudeep Thepade Saurav Ghosh

DOI: https://doi.org/10.5815/ijitcs.2015.10.08, Pub. Date: 8 Sep. 2015

Substantial research interest has been observed in the field of object recognition as a vital component for modern intelligent systems. Content based image classification and retrieval have been considered as two popular techniques for identifying the object of interest. Feature extraction has played the pivotal role towards successful implementation of the aforesaid techniques. The paper has presented two novel techniques of feature extraction from diverse image categories both in spatial domain and in frequency domain. The multi view features from the image categories were evaluated for classification and retrieval performances by means of a fusion based recognition architecture. The experimentation was carried out with four different popular public datasets. The proposed fusion framework has exhibited an average increase of 24.71% and 20.78% in precision rates for classification and retrieval respectively, when compared to state-of-the art techniques. The experimental findings were validated with a paired t test for statistical significance.

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