Early detection of crop diseases is crucial for minimizing yield loss and ensuring global food security. Traditional disease identification methods are often timeconsuming, labor-intensive, and prone to human error. This study leverages deep learning, specifically Convolutional Neural Networks (CNNs), to automate and enhance the accuracy of crop disease detection. A large dataset of annotated plant leaf images is used to train and validate the model, ensuring robustness and reliability. Experimental results demonstrate that the proposed model outperforms traditional diagnostic methods, achieving high classification accuracy. By enabling real-time and precise disease detection, this approach empowers farmers to take timely preventive measures, reduce excessive pesticide use, and enhance crop productivity. The findings suggest that deep learning models, particularly CNNs, can revolutionize agricultural practices by providing a scalable, cost-effective, and efficient solution for plant disease monitoring and management.
Early Crop Disease Detection, Deep Learning In Agriculture, Convolutional Neural Networks (Cnns), Precision Agriculture, Image-Based Disease Classification, Plant Disease Monitoring, Automated Plant Disease Diagnosis, Agricultural Technology, Crop Health Assessment, Real-Time Disease Detection, Smart Farming Solutions, Computer Vision For Plant Disease Detection.