PLANT LEAF DISEASE DETECTION
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- Create Date 28 April 2025
- Last Updated 28 April 2025
PLANT LEAF DISEASE DETECTION
Authors:
Kush Vijay Somaiya, Heet Shah, Mihika Metha, Rishi Mevada, Salabha Jacob
ABSTRACT- Agriculture remains a fundamental pillar of many national economies, making the protection of crops from disease a top priority. Pathogens such as bacteria, fungi, and viruses can significantly reduce crop productivity, underscoring the need for timely and accurate disease detection. Recent innovations in computer vision and artificial intelligence have introduced powerful tools for recognizing plant diseases through image analysis, particularly using leaf imagery. This paper investigates the application of machine learning, deep learning, and few-shot learning models in automating disease identification to assist farmers in making informed, prompt decisions. By examining the use of advanced models—including convolutional networks and vision transformers—alongside imaging technologies like hyperspectral cameras, this study highlights both the technological advancements and their potential impact in the field. Furthermore, it touches on molecular-level diagnostic techniques aimed at minimizing the threat of pathogens. The review offers a thorough overview of current progress and identifies key opportunities for future research, with the goal of translating laboratory breakthroughs into practical solutions for sustainable agriculture.
INDEX TERMS: Plant disease, deep learning, machine learning, shot learning, computer vision, folding networks (CNNS), vision trans, hyperspectral imaging, molecular diagnostics, sustainable agriculture detection.
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