Dinesh Anvekar
Nitte Meenakshi Institute of Technology
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Publication
Featured researches published by Dinesh Anvekar.
international conference on signal processing | 2015
B T Lata; T V Sumukha; H Suhas; V Tejaswi; Shaila K; K R Venugopal; Dinesh Anvekar; Lalit M. Patnaik
Congestion control and secure data transfer are the major factors that enhance the efficiency of Service Oriented Wireless Sensor Networks. It is desirable to modify the routing and security schemes adaptively in order to respond effectively to the rapidly changing Network State. Adding more complexities to the routing and security schemes increases the end-to-end delay which is not acceptable in Service Oriented WSNs which are mostly in real time. We propose an algorithm Secure Adaptive Load-Balancing Routing (SALR) protocol, in which the routing decision is taken at every hop considering the unforeseen changes in the network. Multipath selection based on Node Strength is done at every hop to decide the most secure and least congested route. The system predicts the best route rather than running the congestion detection and security schemes repeatedly. Simulation results show that security and latency performance is better than reported protocols.
ieee india conference | 2015
D. Sejal; Rashmi; Dinesh Anvekar; Venugopal K R; S. Sitharama Iyengar; Lalit M. Patnaik
Image Recommendation is an important feature for search engine as tremendous amount images are available online. It is necessary to retrieve relevant images to meet users requirement. In this paper, we present an algorithm Image Recommendation with Absorbing Markov Chain (IRAbMC) to retrieve relevant images for user input query. Images are ranked by calculating keyword relevance probability between annotated keywords from log and keywords of user input query. Absorbing Markov chain is used to calculate keyword relevance. Experiments results show that the IRAbMC algorithm outperforms Markovian Semantic Indexing (MSI) method with improved relevance score of retrieved ranked images.
ieee international conference on recent trends in information systems | 2015
J.S. Arunalatha; C. R. Prashanth; V. Tejaswi; Shaila K; K. B. Raja; Dinesh Anvekar; K. R. Venugopal; S. Sitharama Iyengar; Lalit M. Patnaik
Offline signature verification system is widely used as a behavioral biometric for identifying a person. This behavioral biometric trait is a challenge in designing the system that has to counter intrapersonal and interpersonal variations. In this paper, we propose a novel technique PCVOS: Principal Component Variances based Off-line Signature Verification on two critical parameters viz., the Pixel Density (PD) and the Centre of Gravity (CoG) distance. It consists of two parallel processes, namely Signature training which involves extraction of features from the samples of database and Test signature analysis which performs extraction of features from the test samples. The trained values from the database are compared with the features of the test signature using Principal Component Analysis (PCA). The PCVOS algorithm shows a notable improvement over the algorithms in [21], [22] and [23].
ieee india conference | 2015
Arunalatha J S; Rangaswamy Y; Shaila K; K B Raja; Dinesh Anvekar; Venugopal K R; S. Sitharama Iyengar; Lalit M. Patnaik
Iris Biometric is a unique physiological noninvasive trait of human beings that remains stable over a persons life. In this paper, we propose an Iris Recognition using Hybrid Domain Features (IRHDF) as Dual Tree Complex Wavelet Transform (DTCWT) and Over Lapping Local Binary Pattern (OLBP). An eye is preprocessed to extract the complex wavelet features to obtain the Region of Interest (ROI) area from an iris. OLBP is further applied on ROI to generate features of magnitude coefficients. Resultant features are generated by fusion of DTCWT and OLBP using arithmetic addition. Euclidean Distance (ED) is used to match the test iris image with database iris features to recognize a person. We observe that the values of Equal Error Rate (EER) and Total Success Rate (TSR) are better than in [7].
Archive | 2015
Arunalatha J S; Prashanth C R; Tejaswi; Shaila K; K B Raja; Dinesh Anvekar; Venugopal K R; S. Sitharama Iyengar; L M Patnaik; Pawan K S
ieee international conference on recent trends in information systems | 2015
D. Sejal; T. Kamalakant; V. Tejaswi; Dinesh Anvekar; K. R. Venugopal; S. Sitharama Iyengar; Lalit M. Patnaik
2015 IEEE Region 10 Symposium | 2015
D. Sejal; K. G. Shailesh; V. Tejaswi; Dinesh Anvekar; K. R. Venugopal; S. Sitharama Iyengar; Lalit M. Patnaik
2017 International Conference On Smart Technologies For Smart Nation (SmartTechCon) | 2017
Sanchari Saha; Dinesh Anvekar
International Journal of Knowledge and Web Intelligence | 2016
D. Sejal; T. Kamalakant; Dinesh Anvekar; K. R. Venugopal; S. Sitharama Iyengar; L. M. Patnaik
Indian journal of science and technology | 2016
Sanchari Saha; Dinesh Anvekar