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Aerial imagery pile burn detection using deep learning: The FLAME dataset

机译:使用深度学习的空中图像堆烧伤:火焰数据集

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摘要

Wildfires are one of the costliest and deadliest natural disasters in the US, causing damage to millions of hectares of forest resources and threatening the lives of people and animals. Of particular importance are risks to firefighters and operational forces, which highlights the need for leveraging technology to minimize danger to people and property. FLAME (Fire Luminosity Airborne-based Machine learning Evaluation) offers a dataset of aerial images of fires along with methods for fire detection and segmentation which can help firefighters and researchers to develop optimal fire management strategies. This paper provides a fire image dataset collected by drones during a prescribed burning piled detritus in an Arizona pine forest. The dataset includes video recordings and thermal heatmaps captured by infrared cameras. The captured videos and images are annotated, and labeled frame-wise to help researchers easily apply their fire detection and modeling algorithms. The paper also highlights solutions to two machine learning problems: (1) Binary classification of video frames based on the presence [and absence] of fire flames. An Artificial Neural Network (ANN) method is developed that achieved a 76% classification accuracy. (2) Fire detection using segmentation methods to precisely determine fire borders. A deep learning method is designed based on the U-Net up-sampling and down-sampling approach to extract a fire mask from the video frames. Our FLAME method approached a precision of 92%, and recall of 84%. Future research will expand the technique for free burning broadcast fire using thermal images.
机译:野火是美国最昂贵,最致命的自然灾害之一,对数百万公顷的森林资源造成损害并威胁着人们和动物的生活。消防员和运营力量的风险是突出了利用技术来最大限度地减少人民和财产的危险。火焰(火光亮度空气传播的机器学习评估)提供火灾的空中图像数据集,以及用于消防和分割的方法,可以帮助消防员和研究人员开发最佳的火灾管理策略。本文提供了一种火焰图像数据集,由无人机收集,在亚利桑那州松林的规定的烧伤碎屑期间。数据集包括由红外相机捕获的视频录制和热热插拔。捕获的视频和图像被注释,并标记为框架,以帮助研究人员轻松应用其火灾探测和建模算法。本文还突出了两个机器学习问题的解决方案:(1)基于火焰的存在[和缺席]的视频帧的二进制分类。开发了一种人工神经网络(ANN)方法,实现了76%的分类精度。 (2)火灾探测使用分割方法精确确定火灾边框。基于U-Net上采样和下采样方法来设计深度学习方法,以从视频帧中提取防火掩码。我们的火焰方法达到了92%的精确度,并召回了84%。未来的研究将使用热图像扩展免费燃烧广播火灾的技术。

著录项

  • 来源
    《Computer networks》 |2021年第5期|108001.1-108001.11|共11页
  • 作者单位

    School of Informatics Computing and Cyber Systems Northern Arizona University Flagstaff AZ United States of America;

    School of Informatics Computing and Cyber Systems Northern Arizona University Flagstaff AZ United States of America;

    School of Informatics Computing and Cyber Systems Northern Arizona University Flagstaff AZ United States of America;

    School of Informatics Computing and Cyber Systems Northern Arizona University Flagstaff AZ United States of America;

    School of Forestry Northern Arizona University Flagstaff AZ United States of America;

    Air Force Research Laboratory Rome NY United States of America;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Aerial imaging; Deep learning; Fire detection and segmentation; Fire monitoring dataset;

    机译:空中影像;深度学习;火灾探测和分割;火灾监控数据集;

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