V. Muneeswaran

Work place: School of Electronics, Electrical and Biomedical Technology, Kalasalingam Academy of Research and Education, TamilNadu, India

E-mail: v.muneeswaran@klu.ac.in

Website:

Research Interests:

Biography

Dr. V. MUNEESWARAN holds a Ph.D degree in Electronics and Communication Engineering and have vast research experience in discipline of Swarm Intelligence, Image/Signal Processing. He serves as a Guest editor for Applied Soft Computing, a peer reviewed journal published by Elsevier. As an author has published several articles in reputed journals Journal of Supercomputing, IEEE Access, Cognitive Systems Research and also several works as Book Chapters in Lecture notes in Computer Science, Advances in Intelligent Systems and Computing, Lecture Notes in Electrical Engineering and Smart Innovation, Systems and Technologies published by Springer. Majority of the articles published was based on the application of swarm intelligence for engineering applications viz., Medical Image Segmentation, optimization of Neural Networks etc. On his credit, there are several awards including Publons Peer Review Awards 2018 for placing in the top 1% of reviewers in Computer Science. At present he is working on projects related to Brain tumor segmentation using swarm intelligence techniques and Key areas in Medical Image Segmentation.

Author Articles
Metaheuristic-enhanced Deep Learning Model for Accurate Alzheimer's Disease Diagnosis from MRI Imaging

By Nisha A.V. M. Pallikonda Rajasekaran R. Kottaimalai G. Vishnuvarthanan T. Arunprasath V. Muneeswaran R. Krishna Priya

DOI: https://doi.org/10.5815/ijisa.2025.01.05, Pub. Date: 8 Feb. 2025

Alzheimer’s Disease (AD) is the neuro-degenerative dementia, where the precise and early recognition of AD is vital for timely treatment to reduce mortality rate. A new automated model is implemented in this work for early discovery of AD in the Magnetic Resonance Imaging (MRI) brain scans. Initially, the input brain scans are taken from the Alzheimer's disease Neuroimaging Initiative (ADNI) database. Further, the acquired raw brain scans are visually improved by employing the binary normalization technique. The denoised brain scans are fed to the pre-trained Convolutional Neural Network (CNN) named GoogleNet for feature extraction. Next, the extracted richer feature values are fed to the Long Short Term Memory (LSTM) network for classifying the brain scan as Normal Control (NC), Mild Cognitive Impairment (MCI) and AD. In this manuscript, a Honey Badger Optimization Algorithm (HBOA) technique is incorporated with the LSTM networks for hyper-parameters optimization, where this procedure helps in diminishing the LSTM network’s complexity and computational time. The experimental results conducted on the ADNI database underscore the HBOA-based LSTM network's effectiveness, showcasing a remarkable mean classification accuracy of 97.83% in multi-class classification. Moreover, the sensitivity of HBOA based LSTM for AD/NC is 96.73% which is high when compared to the existing methodologies such as SVM with radial basis kernel function and NCSINs. This performance surpasses that of other comparative models for AD detection, emphasizing the superior capabilities and potential of the proposed method in the early detection.

[...] Read more.
Other Articles