航空森林火灾监测——航空视频森林火灾探测模型评价

Hanh Dang-Ngoc, Hieu Nguyen-Trung
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引用次数: 23

摘要

无人驾驶飞行器(uav)可以为大规模灾害区域的快速响应提供鸟瞰图,最近被用于森林火灾监测。本文研究了一种基于航拍视频的森林火灾探测通用模型,以证明该模型对航空森林火灾监测的鲁棒性。利用火焰的颜色和运动特征提取火焰像素。通过各种场景条件的大型数据库对火灾探测性能进行评估,以显示我们的火灾探测模型在以往研究中的效率和不足。我们的数据库由49个航拍视频组成,总共有16898个森林火灾的检查帧。该模型的森林火灾探测准确率为93.97%,虚警率为7.08%,漏报率为6.86%。在我们的火灾探测模型中,发现浓烟几乎覆盖了整个火灾区域,是导致漏检的主要原因。为了提高检测性能,本研究提出了一种多阶段的烟雾检测方法。使用烟雾的颜色和运动特征对烟雾像素进行分割。结果表明,烟雾探测阶段有助于在发生烟雾时探测火灾区域。
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Aerial Forest Fire Surveillance - Evaluation of Forest Fire Detection Model using Aerial Videos
Unmanned Aerial Vehicles (UAVs), which can provide an aerial view for fast responding in large-scale zones of disaster, are recently utilized for forest fire monitoring. In this paper, one general model of forest fire detection using aerial videos is investigated to prove its robustness for practical application of aerial forest fire surveillance. Fire pixels are extracted using the color and motion characteristics of fire. The fire detection performance is evaluated through a large database of various scene conditions to show the efficiency as well as deficiency of our fire detection model in previous study. Our database consists of 49 aerial videos with total of 16898 examined frames of forest fires. The accuracy rate of our forest fire detection model is 93.97 % while the false alarm rate and the miss rate are 7.08% and 6.86 %, respectively. Thick smoke which covers almost the fire is found as the main cause of miss detection in our fire detection model. To enhance the detection performance, in this study we propose one more stage of smoke detection. Smoke pixels are segmented using both color and motion characteristics of smoke. The results prove that smoke detection stage give help in detecting the fire area in case of smoke.
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