Litcius/Paper detail

Forest Fires Detection using Deep Transfer Learning

Mimoun Yandouzi, Mounir GRARI, Idriss Idrissi, Mohammed Boukabous, Omar Moussaoui, Mostafa AZIZI, Kamal Ghoumid, Aissa Kerkour Elmiad

2022International Journal of Advanced Computer Science and Applications30 citationsDOIOpen Access PDF

Abstract

Forests are vital ecosystems composed of various plant and animal species that have evolved over years to coexist. Such ecosystems are often threatened by wildfires that can start either naturally, as a result of lightning strikes, or unintentionally caused by humans. In general, human-caused fires are more severe and expensive to fight because they are frequently located in inaccessible areas. Wildfires can spread quickly and become extremely dangerous, causing damage to homes and facilities, as well as killing people and animals. Early discovery of wildfires is vital to protect lives, property, and resources. Reinforced imaging technologies can play a key role to detect wildfires earlier. By applying deep learning (DL) over a dataset of images (collected using drones, planes, and satellites), we target to automate the forest fire detection. In this paper, we focus on building a DL model specifically to detect wildfires using transfer learning techniques from the best pretrained DL computer vision architectures available nowadays, such as VGG16, VGG19, Inceptionv3, ResNet50, ResNet50V2, InceptionResNetV2, Xception, Dense-Net, MobileNet, MobileNetV2, and NASNetMobile. Our proposed approach attained a detection rate of more than 99.9% over multiple metrics, proving that it could be used in real-world forest fire detection applications.

Topics & Concepts

Computer scienceDeep learningThreatened speciesTransfer of learningDroneEcosystemFocus (optics)Key (lock)Artificial intelligenceProperty (philosophy)Computer securityEcologyGeneticsEpistemologyHabitatBiologyPhilosophyOpticsPhysicsFire effects on ecosystemsFire Detection and Safety SystemsRemote Sensing and LiDAR Applications