A Hybrid CNN-ViT-GNN Framework with GAN-Based Augmentation for Intelligent Weed Detection in Precision Agriculture
PositiveArtificial Intelligence
- A new hybrid framework for weed detection in precision agriculture has been proposed, integrating CNNs, ViTs, and GNNs to improve robustness and accuracy in diverse field conditions. This model also utilizes GAN
- This development is significant as it enables farmers to identify weed species accurately, allowing for targeted herbicide application, which is essential for sustainable agricultural practices and effective crop management.
- The advancement in AI methodologies, such as this hybrid framework, reflects a broader trend in precision agriculture, where intelligent systems are increasingly employed to optimize resource use and minimize environmental impact, paralleling innovations in other fields like energy
— via World Pulse Now AI Editorial System
