Volume 14, Issue 5

Apple Disease Detection with Prediction Using Machine Learning and AI

Author

Sarvari Bagde 1, Dr. Khusi Sindhi 2

Abstract

Severely impact crop yield and quality. Traditional detection methods rely on expert inspection, which is time-consuming, error-prone, and inaccessible for many farmers. This paper proposes a machine learning and AI-based system to detect apple diseases using image processing and classification techniques. By training deep learning models—particularly convolutional neural networks (CNNs)—on leaf and fruit images, the system aims to provide early, accurate, and automated disease detection. The solution also integrates IoT technology for real-time data communication and monitoring, offering a scalable, eco-friendly, and accessible solution to improve crop health and support precision agriculture. Apple diseases pose a significant threat to crop yield and quality, necessitating timely and accurate diagnosis to minimize losses. Traditional disease detection methods are often manual, time-consuming, and reliant on expert knowledge, making them inefficient and inconsistent in large-scale farming. This project proposes an automated apple disease detection system using machine learning (ML) and artificial intelligence (AI) techniques, particularly Convolutional Neural Networks (CNNs). The system is trained on a curated dataset of apple leaf and fruit images categorized into healthy and diseased classes, including blotch, rot, scab, and healthy apples. The model processes these images to detect and classify diseases with high accuracy, providing confidence scores and visual feedback. Additionally, a user-friendly web interface enables farmers and agricultural professionals to upload apple images and receive instant diagnostic results. The integration of deep learning not only enhances diagnostic accuracy but also facilitates early intervention, reduces dependency on chemical treatments, and promotes sustainable agriculture. This project bridges the gap between AI technology and agricultural practices, offering a scalable, non-invasive solution for crop disease management.

DOI

https://doi.org/10.62226/ijarst2024132551

PAGES : 1565-1569 | 4 VIEWS | 1 DOWNLOADS


Download Full Article

Sarvari Bagde 1, Dr. Khusi Sindhi 2 | Apple Disease Detection with Prediction Using Machine Learning and AI | DOI : https://doi.org/10.62226/ijarst2024132551

Journal Frequency: ISSN 2320-1126, Monthly
Paper Submission: Throughout the month
Acceptance Notification: Within 6 days
Subject Areas: Engineering, Science & Technology
Publishing Model: Open Access
Publication Fee: USD 60  USD 50
Publication Impact Factor: 6.76
Certificate Delivery: Digital

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