With the rapid advancement of artificial intelligence (AI) and computer vision, intelligent agricultural systems have become a crucial component of smart farming. Among them, automatic crop disease recognition plays a vital role in ensuring agricultural productivity and food security. This study proposes an AI‑based crop disease recognition system that integrates deep learning, image processing, and edge computing. A large‑scale dataset of crop disease images was constructed, and transfer learning was employed to enhance model generalization. A convolutional neural network (CNN) was optimized by incorporating attention mechanisms and multi‑scale feature fusion to improve accuracy. Experiments show an average accuracy of 97.8% on the PlantVillage dataset 9 and stable performance under real‑field lighting variations. A lightweight deployment framework based on TensorFlow Lite enables real‑time disease detection on mobile and embedded platforms. The system provides a feasible, efficient AI‑driven solution for precision agriculture and contributes to the digital transformation of modern farming.
Jie Ding (Tue,) studied this question.