Sprout-AI: Image-Based Plant Disease Detection Mobile Application

Authors

  • Nur Aisyah Mohamad Sulaiman Universiti Tun Hussein Onn Malaysia (UTHM) Author
  • Nur Farhah Ain Ezam Shah Universiti Tun Hussein Onn Malaysia (UTHM) Author
  • Nur Zulaikha Norhashim Universiti Tun Hussein Onn Malaysia (UTHM) Author
  • Mazniha Berahim Universiti Tun Hussein Onn Malaysia (UTHM) Author

Keywords:

Artificial Intelligence, Image detection, Plant Diseases, Agricultural Technology, Plant Care Tips

Abstract

This project aims to produce an image-based plant disease detection mobile application, Sprout-AI designed to revolutionize plant disease management for farmers and gardeners. While existing solutions on market provide basic plant’s support, Sprout-AI goes further and provides comprehensive information and interactive support. Leveraging advanced image detection and an AI-powered chatbot, Sprout-AI provides accurate disease detection, personalized treatment recommendations, and ongoing plant care guidance. The biggest challenge Sprout-AI addresses is the lack of accessible information about plant diseases, which hinders effective plant care. By integrating machine learning models for real-time image detection, Sprout-AI enables users to quickly detect and control plant diseases. The AI chatbot improves the user experience by providing tailored advice and addressing specific questions. Developed using the ADDIE model, Sprout-AI goes through rigorous analysis, design, development, implementation and evaluation phases to ensure functionality and effectiveness. Combining advanced technology with user-centered design, Sprout-AI emerges as a comprehensive solution for managing plant health and improving agricultural outcomes.

Downloads

Download data is not yet available.

Downloads

Published

03-01-2025

Issue

Section

Information Technology

How to Cite

Mohamad Sulaiman, N. A., Ezam Shah, N. F. A., Norhashim, N. Z., & Berahim, M. (2025). Sprout-AI: Image-Based Plant Disease Detection Mobile Application. Multidisciplinary Applied Research and Innovation, 6(1), 91-98. https://penerbit.uthm.edu.my/periodicals/index.php/mari/article/view/18083