利用遥感数据探测野火的现状和前景

D. Shaimardanov, A. Atnabaev, D. Mukhametov, L. Pavlova
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引用次数: 0

摘要

文章讨论了火灾问题对生命、经济和生态系统的严重威胁,强调了及早发现和扑灭火灾的必要性。文章研究了地球遥感与神经网络相结合,快速准确地探测自然火灾的潜力。文章强调了应用人工智能、开发神经网络模型的深度学习方法来分析空间图像和探测火灾早期迹象的重要意义。文章还列举了野火探测领域的成功项目和研究实例。文章的最后部分强调了进一步研究和开发神经网络训练方法、扩大训练数据集和改进空间图像采集技术的必要性,以有效控制和预防火灾,从而保护环境和最大限度地减少对人类的伤害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Status and Prospects for the Use of Remote Sensing Data for the Detection of Wildfires
The article discusses the problem of fires as a serious threat to life, economy and ecosystems, highlighting the need for early detection and suppression of fires. The potential of the combination of Earth remote sensing and neural networks for rapid and accurate detection of natural fires is studied. The significance of applying artificial intelligence, the development of deep learning methods for neural network models, to analyze space images and detect early signs of fires is emphasized. The article also provides examples of successful projects and research in the field of wildfire detection. The final part of the paper emphasizes the need for further research and development of neural network training methods, expansion of training datasets and improvement of space imagery acquisition technologies for effective control and prevention of fires, in order to protect the environment and minimize damage to people.
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