ARCHIVES
AI -Powered Indian Medicinal Plant Identification and Information Technology Using Deep Learning
Published Online: March-April 2026
Pages: 250-256
Cite this article
↗ https://www.doi.org/10.59256/ijrtmr.20260602035Abstract
The study developed an artificial intelligence- based Indian Medicinal Plant Identification and Information System (IMPIS) that makes use of deep learning-based computer vision. In order to perform multi-class classification on 50 species of medicinal plants, the architecture was a two-convolutional neural network (CNN) based on ResNet18 and EfficientNet-B0, which were adjusted using ImageNet weights. The images were pre-processed by uniformly resizing them to 224 by 224 pixels, normalizing them, and image augmentation methods like flipping, zooming, and rotating, with the aim of enhancing the models' generalization and lowering the danger of overfitting. The categorical cross-entropy loss was applied over 50 epochs with early stopping conditions, and Adam was employed as the optimizer with a learning rate of 0.001. Measurements of accuracy, precision, recall, F1-score, and inference latency performance revealed that EfficientNet-B0 could process in real-time (less than 200 ms) with an approximate accuracy of 90.3%. The classification outcome was connected to a knowledge database in the format of a JSON,with a large language model of a JSON using a large language model (Gemini) to produce organized information on phytochemical composition, medicinal use, and administration guidelines. This was created as a complete.
Related Articles
2026
A Strategic Framework for Depth-Dependent Hydroelectric Conversion along the Indian Coastline
2026
Reimagining Development in India: A Critical Analysis of the Viksit Bharat Vision
2026
AI-Enabled Image Description: Bridging the Gap for the Visually Impaired
2026
Perceived Occupational Risks of Emergency Medical Services Personnel
2026
Origin, Growth and recent Development of Integrated Reporting (IR): A theoretical Review
2026