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Dive into the research topics where S. R. Biradar is active.

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Featured researches published by S. R. Biradar.


Journal of Computational Environmental Sciences | 2014

Dynamic Cellular Automata Based Epidemic Spread Model for Population in Patches with Movement

Senthil Athithan; V. P. Shukla; S. R. Biradar

Epidemiology is the study of spread of diseases among the group of population. If not controlled properly, the epidemic would cause an enormous number of problems and lead to pandemic situation. Here in this paper we consider the situation of populated areas where people live in patches. A dynamic cellular automata model for population in patches is being proposed in this paper. This work not only explores the computing power of cellular automata in modeling the epidemic spread but also provides the pathway in reduction of computing time when using the dynamic cellular automata model for the patchy population when compared to the static cellular automata which is used for a nonpatchy homogeneous population. The variation of the model with movement of population among the patches is also explored which provides an efficient way for evacuation planning and vaccination of infected areas.


CSI Transactions on ICT | 2014

Blur parameters identification for simultaneous defocus and motion blur

Shamik Tiwari; V. P. Shukla; S. R. Biradar; Ajay Kumar Singh

Motion blur and defocus blur are common cause of image degradation. Blind restoration of such images demands identification of the accurate point spread function for these blurs. The identification of joint blur parameters in barcode images is considered in this paper using logarithmic power spectrum analysis. First, Radon transform is utilized to identify motion blur angle. Then we estimate the motion blur length and defocus blur radius of the joint blurred image with generalized regression neural network (GRNN). The input of GRNN is the sum of the amplitudes of the normalized logarithmic power spectrum along vertical direction and concentric circles for motion and defocus blurs respectively. This scheme is tested on multiple barcode images with varying parameters of joint blur. We have also analyzed the effect of joint blur when one blur has same, greater or lesser extents to another one. The results of simulation experiments show the high precision of proposed method and reveals that dominance of one blur on another does not affect too much on the applied parameter estimation approach.


Advances in Electrical Engineering | 2014

A Blind Blur Detection Scheme Using Statistical Features of Phase Congruency and Gradient Magnitude

Shamik Tiwari; V. P. Shukla; S. R. Biradar; Ajay Kumar Singh

The growing uses of camera-based barcode readers have recently gained a lot of attention. This has boosted interest in no-reference blur detection algorithms. Blur is an undesirable phenomenon which appears as one of the most frequent causes of image degradation. In this paper we present a new no-reference blur detection scheme that is based on the statistical features of phase congruency and gradient magnitude maps. Blur detection is achieved by approximating the functional relationship between these features using a feed forward neural network. Simulation results show that the proposed scheme gives robust blur detection scheme.


Journal of Computational Environmental Sciences | 2014

Epidemic Spread Modeling with Time Variant Infective Population Using Pushdown Cellular Automata

Senthil Athithan; V. P. Shukla; S. R. Biradar

The world without a disease is a dream of any human being. The disease spread if not controlled could cause an epidemic situation to spread and lead to pandemic. To control an epidemic we need to understand the nature of its spread and the epidemic spread model helps us in achieving this. Here we propose an epidemic spread model which considers not only the current infective population around the population but also the infective population which remain from the previous generations for computing the next generation infected individuals. A pushdown cellular automata model which is an enhanced version of cellular automata by adding a stack component is being used to model the epidemic spread and the model is validated by the real time data of H1N1 epidemic in Abu Dhabi.


Journal of Image and Graphics | 2014

Review of Motion Blur Estimation Techniques

Shamik Tiwari; V. P. Shukla; Ajay Kumar Singh; S. R. Biradar


International Journal of Information Engineering and Electronic Business | 2013

Texture Features based Blur Classification in Barcode Images

Shamik Tiwari; V. P. Shukla; S. R. Biradar; Ajay Kumar Singh


International Journal of Intelligent Systems and Applications | 2015

Wavelet Based Histogram of Oriented Gradients Feature Descriptors for Classification of Partially Occluded Objects

Ajay Kumar Singh; V. P. Shukla; Shamik Tiwari; S. R. Biradar


Indian journal of science and technology | 2015

Voting Rule Based Cellular Automata Epidemic Spread Model for Leptospirosis

Senthil Athithan; V. P. Shukla; S. R. Biradar


International Journal of Image, Graphics and Signal Processing | 2014

Enhanced Performance of Multi Class Classification of Anonymous Noisy Images

Ajay Kumar Singh; V. P. Shukla; S. R. Biradar; Shamik Tiwari


BRAIN. Broad Research in Artificial Intelligence and Neuroscience | 2013

An Enhancement over Texture Feature Based Multiclass Image Classification under Unknown Noise

Ajay Kumar Singh; V. P. Shukla; Shamik Tiwari; S. R. Biradar

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Ajay Kumar Singh

B. R. Ambedkar Bihar University

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Shamik Tiwari

All India Institute of Medical Sciences

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Senthil Athithan

Mody University of Science

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