Suneeta Agarwal

Work place: Department of Computer Science and Engineering Motilal Nehru National Institute of Technology Allahabad, India

E-mail: Suneeta@mnit.ac.in

Website:

Research Interests: Computer Vision, Pattern Recognition, Data Structures and Algorithms, Analysis of Algorithms, Cellular Automata, Models of Computation

Biography

Suneeta Agarwal received B.Sc. degree in 1973 from University of Allahabad, M.Sc. degree in 1975 from University of Allahabad, Ph.D. in 1980 from IIT Kanpur and M.Tech. degree in 2007 from AAIDU. She is having 31 years of Teaching Experience and currently Professor in the Computer Science and Engineering Department, Moti Lal Nehru National Institute of Technology, Allahabad. Her current research interest includes Pattern Recognition, Computer Vision, Theory of Computation Science, Algorithms, Automata Theory and Compression; Pattern matching, Finger print recognition.

Author Articles
Despeckling of Medical Ultrasound Images: A Technical Review

By Nidhi Gupta A.P Shukla Suneeta Agarwal

DOI: https://doi.org/10.5815/ijieeb.2016.03.02, Pub. Date: 8 May 2016

Acquisition of digital image and preprocessing methods plays a vital role in clinical diagnosis. The ultrasound medical images are more popular than other imaging modalities, due to portable, adequate, harmless and cheaper nature of it. Because of intrinsic nature of speckle noise (signal based noise), ultrasound medical image leads to degradation of the resolution and contrast of the image. Reduction of this signal based noise is helpful for the purpose of visualization of the ultrasound images. The low quality of image is considered as a barrier for the better extraction of features, recognition, analysis and detection of edges. Because of which inappropriate diagnosis may be done by doctor. Thus, speckle noise reduction is essential and preprocessing step of ultrasound images. Analysts survey manifold reduction methods of speckle noise, yet there is no exact method that takes all the limitations into account. In this review paper, we compare filters that are Lee, Frost, Median, SRAD, PMAD, SRBF, Bilateral, Adaptive Bilateral and Multiresolution on medical ultrasound images. The results are compared with parameter PSNR along with the visual inspection. The conclusion is illustrated by filtered images and data tables.

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Selection of Optimum Rule Set of Two Dimensional Cellular Automata for Some Morphological Operations

By Anand Prakash Shukla Suneeta Agarwal

DOI: https://doi.org/10.5815/ijitcs.2015.12.06, Pub. Date: 8 Nov. 2015

The cellular automaton paradigm is very appealing and its inherent simplicity belies its potential complexity. Two dimensional cellular automata are significantly applying to image processing operations. This paper describes the application of cellular automata (CA) to various morphological operations such as thinning and thickening of binary images. The description about the selection of the optimum rule set of two dimensions cellular automata for thinning and thickening of binary images is illustrated by this paper. The selection of the optimum rule set from large search space has been performed on the basis of sequential floating forward search method. The misclassification error between the images obtained by the standard function and the one obtained by cellular automata rule is used as the fitness function. The proposed method is also compared with some standard methods and found suitable for the purpose of morphological operations.

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Other Articles