K. Karthick

Work place: Department of Electrical and Electronics Engineering, GMR Institute of Technology, Rajam, Andhra Pradesh, India

E-mail: karthick.k@gmrit.edu.in

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Research Interests:

Biography

Dr. K. Karthick received his Ph.D. under the Faculty of Electrical Engineering from Anna University, Chennai, completing it in 2018. With over 19 years of academic experience, he currently serves as a Professor in the Department of Electrical and Electronics Engineering at GMR Institute of Technology, Rajam, Andhra Pradesh. His academic journey began with a B.E. in Electrical and Electronics Engineering from Sona College of Technology, followed by an M.E. in Power Electronics and Drives from St. Joseph’s College of Engineering, Chennai. Throughout his career, He has held teaching positions at esteemed institutions such as Mahendra Engineering College, RMD Engineering College, and Panimalar Engineering College. His research interests include machine learning, power electronics, renewable energy systems, and optical character recognition. He has published extensively in renowned journals, particularly on the application of machine learning in environmental and energy-related studies. Furthermore, he is actively involved in professional organizations such as the Indian Society for Technical Education and IEEE, where he holds senior membership.

Author Articles
Classification of Medicinal Plant Leaves using Deep Learning Algorithms

By Aruna S. K. Praveen P. Gowtham K. Mohammed Khashif S. Keerthana Jaganathan K. Karthick

DOI: https://doi.org/10.5815/ijisa.2026.01.10, Pub. Date: 8 Feb. 2026

This research explores the automated leaf-based identification of medicinal plants, utilizing machine learning and deep learning techniques to address the crucial need for efficient plant classification. Driven by the vast potential of medicinal plants in pharmaceutical development and healthcare, the study aims to surpass the limitations of existing methodologies through thorough experimentation and comparative analysis. The primary goal is to develop a robust and automated solution for classifying medicinal plants based on leaf morphology. The methodology encompasses acquiring diverse datasets. Specifically, Set 1 data is processed by applying resizing, rescaling, saturation adjustment, and noise removal, while Set 2 data is processed by applying resizing, rescaling, saturation adjustment, noise removal, and PCA (Principal Component Analysis). The proposed algorithms include Support Vector Machines (SVM), Convolutional Neural Networks (CNNs), YOLOv8, Vision Transformer (ViT), ResNet, and Artificial Neural Networks (ANN). The study evaluates the efficacy and effectiveness of each algorithm in plant classification using metrics such as accuracy, recall, precision, and F1 score. Notably, the ResNet model achieved 93.8% and 94.8% accuracy in Set 1 and Set 2, respectively. The SVM model demonstrated 56.5% and 56.6% accuracy in Set 1 and Set 2, while the Vision Transformer (ViT) model achieved 84.9% and 74.4% accuracy in Set 1 and Set 2, respectively. The CNN model showcased high accuracy at 96.7% and 94.8% in Set 1 and Set 2, followed closely by the ANN model with 96.7% and 96.6% accuracy. Lastly, the YOLOv8 model achieved 96.0% and 95.1% accuracy in Set 1 and Set 2, respectively. The comparative analysis identifies CNN and ANN as the top-performing algorithms. This research significantly contributes to the advancement of medicinal plant identification, pharmaceutical research, and environmental conservation efforts, emphasizing the potential of deep learning techniques in addressing complex classification tasks.

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