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用于主动火灾检测的遥感技术进展:数据集与方法综述

Advancements in remote sensing for active fire detection: A review of datasets and methods.

作者信息

Yang Songxi, Huang Qunying, Yu Manzhu

机构信息

Spatial Computing and Data Mining Lab, Department of Geography, University of Wisconsin-Madison, Madison 53705, WI, USA.

Spatial Computing and Data Mining Lab, Department of Geography, University of Wisconsin-Madison, Madison 53705, WI, USA.

出版信息

Sci Total Environ. 2024 Sep 15;943:173273. doi: 10.1016/j.scitotenv.2024.173273. Epub 2024 May 31.

DOI:10.1016/j.scitotenv.2024.173273
PMID:38823698
Abstract

This study comprehensively and critically reviews active fire detection advancements in remote sensing from 1975 to the present, focusing on two main perspectives: datasets and corresponding instruments, and detection algorithms. The study highlights the increasing role of machine learning, particularly deep learning techniques, in active fire detection. Looking forward, the review outlines current challenges and future research opportunities in remote sensing for active fire detection. These include exploring data quality management and multi-modal learning, developing spatiotemporally explicit models, investigating self-supervised learning models, improving explainable and interpretable models, integrating physical-process based models with machine learning, and building digital twins to replicate wildfire dynamics and perform what-if scenario analysis. The review aims to serve as a valuable resource for informing natural resource management and enhancing environmental protection efforts through the application of remote sensing technology.

摘要

本研究全面且批判性地回顾了1975年至今遥感领域主动火灾探测的进展,重点关注两个主要方面:数据集及相应仪器,以及探测算法。该研究强调了机器学习,尤其是深度学习技术在主动火灾探测中日益重要的作用。展望未来,本综述概述了遥感在主动火灾探测方面当前面临的挑战和未来的研究机遇。这些包括探索数据质量管理和多模态学习、开发时空明确的模型、研究自监督学习模型、改进可解释和可阐释的模型、将基于物理过程的模型与机器学习相结合,以及构建数字孪生以复制野火动态并进行假设情景分析。本综述旨在成为一份有价值的资源,通过应用遥感技术为自然资源管理提供信息并加强环境保护工作。

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