This paper proposes a new machine learning based system for forest fire earlier detection in a low-cost and accurate manner. Accordingly, it is aimed to bring a new and definite perspective to visual detection in forest fires. A drone is constructed for this purpose. The microcontroller in the system has been programmed by training with deep learning methods, and the unmanned aerial vehicle has been given the ability to recognize the smoke, the earliest sign of fire detection. The common problem in the prevalent algorithms used in fire detection is the high false alarm and overlook rates. Confirming the result obtained from the visualization with an additional supervision stage will increase the reliability of the system as well as guarantee the accuracy of the result. Due to the mobile vision ability of the unmanned aerial vehicle, the data can be controlled from any point of view clearly and continuously. System performance are validated by conducting experiments in both simulation and physical environments.
翻译:本文提议以低成本和准确的方式建立一个基于新机器的早期森林火灾探测学习系统,目的是为森林火灾的视觉探测带来新的、明确的视角,为此建造了无人驾驶飞机,该系统的微型控制器已经通过深层学习方法的培训进行编程,无人驾驶飞行器被赋予识别烟雾的能力,即火灾探测的最早信号。火灾探测所用的流行算法中常见的问题是高假警报和忽略率。在额外的监督阶段确认从可视化中获得的结果将提高系统的可靠性,并保证结果的准确性。由于无人驾驶飞行器具有移动的视觉能力,数据可以从任何角度得到明确和持续的控制。系统性能通过在模拟和物理环境中进行实验得到验证。