Research has shown that climate change creates warmer temperatures and drier conditions, leading to longer wildfire seasons and increased wildfire risks in the United States. These factors have in turn led to increases in the frequency, extent, and severity of wildfires in recent years. Given the danger posed by wildland fires to people, property, wildlife, and the environment, there is an urgency to provide tools for effective wildfire management. Early detection of wildfires is essential to minimizing potentially catastrophic destruction. In this paper, we present our work on integrating multiple data sources in SmokeyNet, a deep learning model using spatio-temporal information to detect smoke from wildland fires. Camera image data is integrated with weather sensor measurements and processed by SmokeyNet to create a multimodal wildland fire smoke detection system. We present our results comparing performance in terms of both accuracy and time-to-detection for multimodal data vs. a single data source. With a time-to-detection of only a few minutes, SmokeyNet can serve as an automated early notification system, providing a useful tool in the fight against destructive wildfires.
翻译:研究显示,气候变化造成了更暖的温度和更干的条件,导致美国野火季节延长,野火风险增加,这些因素反过来导致近年来野火的频率、范围和严重程度增加。鉴于野火对人、财产、野生生物和环境构成的危险,迫切需要为有效的野火管理提供工具。及早发现野火对于最大限度地减少潜在灾难性破坏至关重要。在本文件中,我们介绍了我们关于将多个数据源纳入SmoshiyNet的工作,这是一个利用时空信息探测野火烟雾的深层学习模型。相机图像数据与天气传感器测量集成,由SmoshiyNet处理,以建立一个多功能的野火烟雾探测系统。我们介绍了我们从准确性和时间到时间两方面比较多功能数据对单一数据源的性能。时间到探测只有几分钟,SmoimyNet可以作为一个自动的早期通知系统,为抵御破坏性野火提供有用的工具。