Smart Forest Guardians: Advances in Fire Detection using Machine Learning
Clarin Riya Mathias,Deependra Singh Rao,2 Authors,Jayapriya J
TLDR
It reviews CNNs, random forests, and hybrid methods applied to forest fire detection and progress made in real-time monitoring and early warning, followed by assessing the impact that the models are most likely to achieve across many regions in China based on high recognition rates of candidates, reduced numbers of false alarms, problems because of data scarcity, and computational demands.
Abstract
With the increased frequency and intensity of disasters resulting from a changed climate, however, the need for the timely detection of forest fires has grown imperative. In countries like China, deep learning techniques have been integrated into the MODIS dataset to further improve the accuracy and timeliness of fire detection systems. It reviews CNNs, random forests, and hybrid methods applied to forest fire detection and progress made in real-time monitoring and early warning, followed by assessing the impact that the models are most likely to achieve across many regions in China based on high recognition rates of candidates, reduced numbers of false alarms, problems because of data scarcity, and computational demands. The results really point to how deep learning has the potential to enhance forest fire management and provide implications for scaling these solutions to other regions.
