This paper is published in Volume-11, Issue-6, 2025
Area
Computer Science And Engineering
Author
Vaishnavi Duratkar, Twinkal Sapate, Snehal Ninawe, Sanket Barapatre, Ashwary Dhakate, Sharwari Mohadikar, Prajakta Singham, Mamta Balbudhe
Org/Univ
Karmaveer Dadasaheb Kannamwar Engineering College, Maharashtra, India
Pub. Date
13 December, 2025
Paper ID
V11I6-1296
Publisher
Keywords
GreenScan, Plant Recognition, Artificial Intelligence, Image Classification, Web Application.

Citationsacebook

IEEE
Vaishnavi Duratkar, Twinkal Sapate, Snehal Ninawe, Sanket Barapatre, Ashwary Dhakate, Sharwari Mohadikar, Prajakta Singham, Mamta Balbudhe. Greenscan: An AI-Powered, Cross-Platform System for Instant Plant Identification and Care Guidance, International Journal of Advance Research, Ideas and Innovations in Technology, www.IJARIIT.com.

APA
Vaishnavi Duratkar, Twinkal Sapate, Snehal Ninawe, Sanket Barapatre, Ashwary Dhakate, Sharwari Mohadikar, Prajakta Singham, Mamta Balbudhe (2025). Greenscan: An AI-Powered, Cross-Platform System for Instant Plant Identification and Care Guidance. International Journal of Advance Research, Ideas and Innovations in Technology, 11(6) www.IJARIIT.com.

MLA
Vaishnavi Duratkar, Twinkal Sapate, Snehal Ninawe, Sanket Barapatre, Ashwary Dhakate, Sharwari Mohadikar, Prajakta Singham, Mamta Balbudhe. "Greenscan: An AI-Powered, Cross-Platform System for Instant Plant Identification and Care Guidance." International Journal of Advance Research, Ideas and Innovations in Technology 11.6 (2025). www.IJARIIT.com.

Abstract

This paper presents GreenScan, an intelligent and interactive web platform developed to enable fast, accurate, and user-friendly plant species recognition through uploaded images. Addressing the persistent challenges of manual plant identification, such as inefficiency, limited accessibility, and a lack of centralized information, GreenScan leverages the power of Artificial Intelligence (AI) and Deep Learning to deliver real-time classification of more than 100 distinct plant species. The system employs a Convolutional Neural Network (CNN) model trained on a large and diverse dataset of plant images to ensure high recognition accuracy, even under varying lighting and background conditions. The platform integrates a responsive and intuitive web interface, allowing users to seamlessly upload images, view classification results, and explore detailed plant profiles. Each identified species is linked to a comprehensive backend database containing essential details such as taxonomy, physical characteristics, ideal growing conditions, and care guidelines. Furthermore, GreenScan provides external purchase links and educational resources, making it an invaluable tool for students, researchers, horticulturists, and nature enthusiasts. A key feature of GreenScan is its feedback-driven learning mechanism, which enables continuous model retraining based on user input to progressively enhance prediction precision over time. The platform’s implementation achieved high confidence scores, including a 91% accuracy rate for identifying species such as the Snake Plant. Beyond its technical merits, GreenScan contributes significantly to promoting environmental education, sustainable living, and ecological awareness by bridging the gap between modern technology and biodiversity knowledge. This work demonstrates the potential of AI-powered solutions to transform traditional plant identification into a more engaging, efficient, and educational digital experience.