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Plant Disease Detection

88 Citations2024
Barnaba Vanlalhruaizela, Lalremsangi, Loicy Lalrinnungi
International Journal for Research in Applied Science and Engineering Technology

An innovative approach that integrates machine learning and image processing techniques is introduced that identifies diseases based on key factors such as leaf color, damage extent, area, and texture parameters and ensures precise disease detection with minimized computational complexity and reduced prediction time.

Abstract

Abstract: This project addresses the critical challenge of plant disease detection in India, a nation where agriculture supports nearly 70% of the population. Traditional procedures for identifying plant diseases are both labor-intensive and time-consuming. To enhance efficiency and accuracy, this project introduces an innovative approach that integrates machine learning and image processing techniques. By analyzing images of leaves, the system identifies diseases based on key factors such as leaf color, damage extent, area, and texture parameters. Unlike conventional methods that depend on visual inspections or chemical processes, this automated system provides a cost-effective and efficient solution for monitoring extensive crop fields. By leveraging statistical machine learning and advanced image processing algorithms, the proposed solution ensures precise disease detection with minimized computational complexity and reduced prediction time