Comparative study of teachable machine for forest fire and smoke detection by drone

Mounir Grari, Mimoun Yandouzi, Berrahal Mohammed, Mohammed Boukabous, Idriss Idrissi
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Abstract

Forests play a vital role in maintaining ecological equilibrium and serving as vital habitats for wildlife. They regulate global climate, safeguard soil and water resources, and provide crucial ecosystem services such as air and water purification, essential for human well-being and sustainable development. Forest fires wreak havoc on ecosystems and wildlife, emitting harmful pollutants, disrupting communities, and increasing the risk of erosion and landslides. Detecting forest fires through satellite imaging, aerial reconnaissance, and ground-based sensors is pivotal for early detection and containment, safeguarding human lives, wildlife, and preserving natural resources for future generations. Utilizing drones and deep learning (DL) algorithms can significantly enhance early fire detection and minimize their devastating impact. In this paper, we examine teachable machine, a Google tool for creating DL models. We compare the top model generated by teachable machine for fire and smoke detection to models obtained through transfer learning from established DL models in image recognition and computer vision (CV), such as VGG16, VGG19, MobileNet, MobileNetv2, and MobileNetv3. The results underscore the significance of employing the teachable machine model in specific fire and smoke detection scenarios.
无人机森林火灾和烟雾探测教学机比较研究
森林在维持生态平衡和作为野生动物的重要栖息地方面发挥着至关重要的作用。森林调节全球气候,保护土壤和水资源,提供重要的生态系统服务,如净化空气和水,对人类福祉和可持续发展至关重要。森林火灾对生态系统和野生动物造成严重破坏,排放有害污染物,扰乱社区,增加侵蚀和山体滑坡的风险。通过卫星成像、空中侦察和地面传感器探测森林火灾,对于早期发现和遏制火灾、保护人类生命和野生动物以及为子孙后代保护自然资源至关重要。利用无人机和深度学习(DL)算法可以大大提高早期火灾探测能力,并将其破坏性影响降至最低。在本文中,我们研究了谷歌用于创建 DL 模型的工具 teachable machine。我们将可教机器生成的用于火灾和烟雾探测的顶级模型与通过从图像识别和计算机视觉(CV)领域的成熟 DL 模型(如 VGG16、VGG19、MobileNet、MobileNetv2 和 MobileNetv3)进行迁移学习而获得的模型进行了比较。结果表明,在特定的火灾和烟雾探测场景中采用可教机器模型具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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