Conceptos Básicos
Applying CNNs and transfer learning for accurate wildfire risk prediction.
Estadísticas
The study establishes a methodology for computing wildfire risk levels on a scale of 0 to 5, dynamically linked to weather patterns.
The CNN model achieved an impressive accuracy of 95% in identifying burnt areas.
Mean Absolute Error (MAE) values were calculated for different regression algorithms used in the study.
Citas
"Prediction of wildfires is a challenge for newer days." - Content
"Our dataset is a bit small to be used with such a big model." - Content