森林卫士森林火灾早期探测融合系统

Comput. Pub Date : 2024-01-28 DOI:10.3390/computers13020036
Manar Khalid Ibraheem Ibraheem, M. Mohamed, Ahmed Fakhfakh
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引用次数: 1

摘要

在过去十年中,世界各地的森林火灾率大幅上升。森林火灾破坏植被,对生态系统造成极大影响。森林火灾由多种原因引起,包括人为原因和自然原因。人为原因在于故意和不规则的燃烧作业。全球变暖是森林火灾的主要自然原因。森林火灾的早期发现可以借助早期发现设备和材料加快灭火速度,从而降低火灾向更大范围蔓延的速度。本研究提出了一种名为 "森林卫士融合 "的森林火灾早期探测系统。该系统通过使用中间融合 VGG16 模型和增强型耗能浸出协议(ECP-LEACH),实现了对现场的高精度和长期监控。Intermediate Fusion VGG16 模型接收来自无人机的 RGB(红、绿、蓝)和 IR(红外)图像,以探测森林火灾。森林卫士融合系统可调节无人机的能耗,并实现高探测精度,从而及早发现森林火灾。该检测模型在 FLAME 2 数据集上进行了训练,准确率达到 99.86%,优于其他同时跟踪 RGB 和红外图像输入的模型。我们使用 Python 语言进行了模拟,以实时演示该系统。
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Forest Defender Fusion System for Early Detection of Forest Fires
In the past ten years, rates of forest fires around the world have increased significantly. Forest fires greatly affect the ecosystem by damaging vegetation. Forest fires are caused by several causes, including both human and natural causes. Human causes lie in intentional and irregular burning operations. Global warming is a major natural cause of forest fires. The early detection of forest fires reduces the rate of their spread to larger areas by speeding up their extinguishing with the help of equipment and materials for early detection. In this research, an early detection system for forest fires is proposed called Forest Defender Fusion. This system achieved high accuracy and long-term monitoring of the site by using the Intermediate Fusion VGG16 model and Enhanced Consumed Energy-Leach protocol (ECP-LEACH). The Intermediate Fusion VGG16 model receives RGB (red, green, blue) and IR (infrared) images from drones to detect forest fires. The Forest Defender Fusion System provides regulation of energy consumption in drones and achieves high detection accuracy so that forest fires are detected early. The detection model was trained on the FLAME 2 dataset and obtained an accuracy of 99.86%, superior to the rest of the models that track the input of RGB and IR images together. A simulation using the Python language to demonstrate the system in real time was performed.
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