Advancing precision agriculture: GANs for high-fidelity synthetic weed identification
Published Date: 3/18/2024
Source: phys.org
Meeting the growing food demand is a significant challenge, exacerbated by weed-induced crop production constraints. Conventional weed management methods, such as herbicides, have inadvertently fostered the emergence of resistant species, underscoring the imperative for precision agriculture approaches like site-specific weed management (SSWM). However, the success of SSWM, particularly when leveraging deep learning for weed identification, is hindered by limited, high-quality training data.