一种新的森林火灾制图数据挖掘框架

Xi C. Chen, A. Karpatne, Yashu Chamber, Varun Mithal, Michael Lau, K. Steinhaeuser, S. Boriah, M. Steinbach, Vipin Kumar, C. Potter, S. Klooster, Teji Abraham, J. Stanley, Juan Carlos Castilla-Rubio
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引用次数: 10

摘要

森林是支持经济活动的重要自然资源,在调节气候和碳循环方面发挥着重要作用,但森林生态系统日益受到一系列自然和人为因素引起的火灾的威胁。这些火灾的规模从不到一英亩到数十万英亩不等,绘制火灾地图是支持气候和碳循环研究以及为森林管理提供信息的一项重要任务。目前,有两种主要的火灾测绘方法:实地调查和空中调查,这两种方法既昂贵又范围有限;基于遥感的方法,成本效益更高,但在方法和算法上提出了一些有趣的挑战。本文介绍了一种基于卫星观测的森林火灾制图新框架。具体而言,我们开发了无监督的时空数据挖掘方法,用于中分辨率成像光谱仪(MODIS)数据生成森林火灾的历史。与两个不同地理区域的替代方法的系统比较表明,我们的算法范式能够克服先前工作中使用的数据和方法的一些局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new data mining framework for forest fire mapping
Forests are an important natural resource that support economic activity and play a significant role in regulating the climate and the carbon cycle, yet forest ecosystems are increasingly threatened by fires caused by a range of natural and anthropogenic factors. Mapping these fires, which can range in size from less than an acre to hundreds of thousands of acres, is an important task for supporting climate and carbon cycle studies as well as informing forest management. Currently, there are two primary approaches to fire mapping: field- and aerial-based surveys, which are costly and limited in their extent; and remote sensing-based approaches, which are more cost-effective but pose several interesting methodological and algorithmic challenges. In this paper, we introduce a new framework for mapping forest fires based on satellite observations. Specifically, we develop unsupervised spatio-temporal data mining methods for Moderate Resolution Imaging Spectroradiometer (MODIS) data to generate a history of forest fires. A systematic comparison with alternate approaches in two diverse geographic regions demonstrates that our algorithmic paradigm is able to overcome some of the limitations in both data and methods employed by prior efforts.
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