Machine Learning Models for Detecting Emerging Contaminants in Seagrass Ecosystems via Drone Imagery
Аннотация
Machine learning (ML) models are increasingly being applied to environmental monitoring, particularly for detecting emerging contaminants in marine ecosystems. Seagrass ecosystems, vital for biodiversity and carbon sequestration, are highly sensitive to pollutants, which can degrade their health and function. Traditional methods of contaminant detection often involve time-consuming fieldwork and limited spatial coverage. However, drone imagery, combined with ML techniques, offers a powerful tool for rapid, large-scale monitoring. ML algorithms can analyze high-resolution drone images to detect subtle changes in water quality, seagrass health, and potential contamination levels, including heavy metals, pesticides, and pharmaceuticals.
Ҳали таржима қилинмаган