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Wildfire Flame and Smoke Detection Using Static Image Features and Artificial Neural Network

机译:利用静态图像特征和人工神经网络进行野火火焰和烟雾检测

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If forest fires are not contained quickly, they can spread wide very fast and cause devastating environmental, social and economic damages. The best method to minimize wildfire loss is to be able to detect it in its early stages for rapid containment and suppression. Fire comes with some distinguishable signatures such as flame, smoke and heat that can be used for early detection using computer vision based remote sensing techniques. Each signature has its own merits and demerits that vary under different environmental conditions and circumstances. Therefore, it is not always enough to form a detection algorithm based on a single signature. Keeping that in mind, this paper presents a novel algorithm that is capable of detecting both flame and smoke from a single image using block-based color features, texture features and a single artificial neural network (ANN). Such an algorithm is capable of providing reliable, rapid and continuous detection under any circumstances and can be incorporated into the existing unmanned aerial vehicle (UAV) based fire monitoring system.
机译:如果不能迅速遏制森林大火,森林大火会迅速蔓延,对环境,社会和经济造成破坏性破坏。最小化野火损失的最佳方法是能够在早期阶段对其进行检测以进行快速遏制和抑制。火灾带有一些可区分的特征,例如火焰,烟雾和热量,可使用基于计算机视觉的遥感技术进行早期检测。每个签名都有其自身的优缺点,在不同的环境条件和环境下会有所不同。因此,仅形成基于单个签名的检测算法并不总是足够的。牢记这一点,本文提出了一种新颖的算法,该算法能够使用基于块的颜色特征,纹理特征和单个人工神经网络(ANN)从单个图像中检测火焰和烟雾。这样的算法能够在任何情况下提供可靠,快速和连续的检测,并且可以被结合到现有的基于无人机的火情监视系统中。

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