As a consequence of global warming and climate change, the risk and extent of wildfires have been increasing in many areas worldwide. Warmer temperatures and drier conditions can cause quickly spreading fires and make them harder to control; therefore, early detection and accurate locating of active fires are crucial in environmental monitoring. Using satellite imagery to monitor and detect active fires has been critical for managing forests and public land. Many traditional statistical-based methods and more recent deep-learning techniques have been proposed for active fire detection. In this study, we propose a novel approach called Operational U-Nets for the improved early detection of active fires. The proposed approach utilizes Self-Organized Operational Neural Network (Self-ONN) layers in a compact U-Net architecture. The preliminary experimental results demonstrate that Operational U-Nets not only achieve superior detection performance but can also significantly reduce computational complexity.
翻译:由于全球变暖和气候变化的影响,野火的风险和规模在全球许多地区逐年增加。更暖的气温和更干燥的条件可以引起快速蔓延的火灾并使其更难以控制;因此,在环境监测中,早期检测和准确定位活动火灾至关重要。使用卫星图像来监测和探测活动火灾因地表火灾的可控性和安全性,已经成为管理森林和公共土地的关键因素。许多传统的基于统计的方法和较新的深度学习技术已经被提出,用于活动火灾的检测。在本研究中,我们提出了一种新颖的方法,称为运营U-Nets,用于改进活动火灾的早期检测。所提出的方法在紧凑的U-Net结构中利用自组织运营神经网络(Self-ONN)层。初步的实验结果表明,运营U-Nets不仅可以实现优越的检测性能,而且还可以显著降低计算复杂度。