4.6 Article

Forest Fire Identification in UAV Imagery Using X-MobileNet

Journal

ELECTRONICS
Volume 12, Issue 3, Pages -

Publisher

MDPI
DOI: 10.3390/electronics12030733

Keywords

UAV; deep learning; wildfire; deep convolutional neural network

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Forest fires are caused by natural factors like lightning, high temperatures, and dryness. India has experienced an increase in the frequency of forest fires, with 136,604 fire points detected between January and March 2022. While satellite monitoring provides valuable information, video-based fire detection on the ground using unmanned aerial vehicles equipped with high-resolution cameras can identify fires more quickly. This paper proposes a cheaper UAV with deep learning capabilities to classify forest fires (97.26%) and share the detection and GPS location with state forest departments.
Forest fires are caused naturally by lightning, high atmospheric temperatures, and dryness. Forest fires have ramifications for both climatic conditions and anthropogenic ecosystems. According to various research studies, there has been a noticeable increase in the frequency of forest fires in India. Between 1 January and 31 March 2022, the country had 136,604 fire points. They activated an alerting system that indicates the location of a forest fire detected using MODIS sensor data from NASA Aqua and Terra satellite images. However, the satellite passes the country only twice and sends the information to the state forest departments. The early detection of forest fires is crucial, as once they reach a certain level, it is hard to control them. Compared with the satellite monitoring and detection of fire incidents, video-based fire detection on the ground identifies the fire at a faster rate. Hence, an unmanned aerial vehicle equipped with a GPS and a high-resolution camera can acquire quality images referencing the fire location. Further, deep learning frameworks can be applied to efficiently classify forest fires. In this paper, a cheaper UAV with extended MobileNet deep learning capability is proposed to classify forest fires (97.26%) and share the detection of forest fires and the GPS location with the state forest departments for timely action.

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