C. P. Maheswaran

Work place: Department of Artificial Intelligence and Data Science, Sri Krishna College of Technology, Coimbatore, Tamilnadu, India

E-mail: maheswaran_ncp@yahoo.co.in

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Biography

Dr. Maheswaran C. P. has more than 17 years of expertise in teaching. He completed his under graduation in Manonmaniam Sundaranar University and post-graduation in Anna University. Dr. Maheswaran C. P. obtained his Doctorate of Philosophy in Faculty of Information and Communication Engineering at 2017 from Noorul Islam Centre for Higher Education. He is a supervisor in Noorul Islam University, Kanyakumari and he is currently guiding 5 Research Scholars. He started his career in 2006 and worked in many institutions. His areas of interest constitute the study of wireless networks, cloud computing, mobile networks, and information security. He has published 62 research papers in SCI-indexed journals, UGC and Scopus-indexed journals. He has written four book chapters and two books. He filed five patents to demonstrate the potential of his studies and four of them were published and a few patents under examination. He has extensive experience in guiding students in a variety of national and international activities. He was also influential in industry academic collaboration. Dr. Maheswaran C.P. is a reviewer in 6 of the IEEE conferences held at various places in India. Currently, He is a working as Professor and Head at Department of Artificial Intelligence and Data Science in Sri Krishna College of Technology, Coimbatore.

Author Articles
Optimized CNN for Cardiac Disease Detection Using Hybrid Crow Search and Dragonfly Algorithms

By B. Shamna C. P. Maheswaran A. Anitha

DOI: https://doi.org/10.5815/ijitcs.2025.06.05, Pub. Date: 8 Dec. 2025

Cardiovascular Disease (CVD) is a hazardous condition for humans that is rapidly expanding around the globe in developed as well as developing nations, eventually resulting in death. In this disease, the heart often fails to supply sufficient oxygen to other parts of the body so that they are cannot able to perform their normal activities. It is critical to identify this problem immediately and precisely in order to save patients lives and avoid additional damage.Henceforth, this work proposes an efficient image processing strategy based on a hybrid algorithm optimised Convolutional Neural Network (CNN) classifier, which is used in this present research for precise identification of cardiac vascular disease.In the beginning, the Electrocardiogram (ECG) images are obtained and processed by removing noise using an adaptive median filter. The pre-processed ECG image is then divided into different regions using the Fuzzy C-Means (FCM) algorithm, which improves the accuracy of heart illness detection.Following segmentation, the Grey level Co-occurrence Matrix (GLCM) is employed to efficiently extract high-ranked features. Subsequently, the characteristics are considerably identified using a novel hybrid Crow Search Optimization (CSO) Dragon Fly Optimisation (DFO) algorithm-based CNN classifier for optimally categorising the cardiacvascular illness.The entire work is validated in Python software, and the results show that the novel method produces the best possible outcomes with a maximum precision of 98.12%.

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