Cotton Disease Detection Using Deep Learning

Authors

  • يوسف الشلقاني Site Admin

DOI:

https://doi.org/10.1234/0e02xv52

Keywords:

Smart Cities, Green Cities, Sustainability, Contracting Sector, Saudi Vision 2030, Keywords: Monkeypox, deep learning, DenseNet121, MobileNetV2, diagnostic accuracy, التقنية الحديثة, سلاسل التوريد, منصة "اعتماد", Flight Delay Prediction, Artificial Intelligence, Aviation Analytics, لتحول الرقمي، إدارة المشاريع، هيئة تطوير محافظة جدة, ألمن السيبراني, brain tumors, MRI classification, MobileNet, Swin Transformer, منهجيات إدارة الوقت – الابداع في المشاريع - تقنية Agile., الابتكار, نضج الابتكار, Deep learning plant, Image Analysis, Cotton Disease

Abstract

The main objective of the research is to diagnose cotton Disease through Image Analysis Using Deep learning. Where it is traditional diagnosis method relies on manual inspection, which is labor-intensive and prone to human mistakes. To overcome this problem, has been proposed Image Analysis Using deep learning technologies, particularly (CNNs), cotton pictures can be diagnosed with high precision to enable faster and more accurate disease detection. The main parts of the affected sheets are also highlighted by the type of disease in the database. This allows for early detection of the disease, reducing agricultural losses, increasing productivity, and improving the sustainability of cotton farming. Approximately 80-90% of cotton diseases affect leaves, causing up to 16% budget loss and potentially 30-50% crop loss without control. This research explores AI techniques from cotton leaves images.

Published

2026-02-26 — Updated on 2025-12-29