卫星遥感在预测大规模野火风险方面的进展:图像处理算法框架

Boxin Li, Hong’e Ren, Jing Tian
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摘要

随着全球变暖和人类活动的加剧,大规模野火日益频繁,对生态环境和人类社会安全构成了重大威胁。卫星遥感技术在野火监测和风险评估方面发挥着举足轻重的作用,具有广泛的地理覆盖范围和连续监测能力。然而,传统的野火风险预测方法在处理大规模遥感数据,特别是在云检测和时间信息分析方面存在局限性。为了应对这一挑战,我们开发了一套新型图像处理算法,以提高野火风险预测的效率和准确性。首先,介绍了一种基于深度学习的云检测和移除算法。该算法能有效识别和消除遥感图像中的云干扰,从而显著提高图像数据的质量和可用性。随后,提出了一种时间信息捕捉技术,能够处理大量遥感数据并提取时间序列特征。该技术为野火风险预测提供了强大的数据支持。这些技术的应用不仅提高了数据处理工作流程的效率,还增强了预测模型的及时性和准确性,对指导实际野火预防和应对措施具有重要的现实意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancements in Satellite Remote Sensing for Predicting Large-Scale Wildfire Risks: An Image Processing Algorithmic Framework
With the escalation of global warming and human activities, large-scale wildfires have become increasingly frequent, posing significant threats to both ecological environments and human societal safety. Satellite remote sensing technology plays a pivotal role in wildfire monitoring and risk assessment, providing extensive geographical coverage and continuous monitoring capabilities. Traditional methods for predicating wildfire risk, however, face limitations in processing large-scale remote sensing data, especially in cloud detection and temporal information analysis. In response to this challenge, a novel set of image processing algorithms has been developed to enhance the efficiency and accuracy of wildfire risk prediction. Initially, a cloud detection and removal algorithm based on deep learning is introduced. This algorithm effectively identifies and eliminates cloud interference in remote sensing images, thereby significantly improving the quality and usability of image data. Subsequently, a temporal information capturing technique is proposed, capable of processing vast amounts of remote sensing data and extracting time series features. This technique provides robust data support for wildfire risk prediction. The application of these technologies not only improves the efficiency of the data processing workflow but also enhances the timeliness and accuracy of the prediction model, holding significant practical importance for guiding actual wildfire prevention and response measures.
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