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Developing a dust storm detection method combining Support Vector Machine and satellite data in typical dust regions of Asia

机译:在亚洲典型的尘埃地区组合支持向量机和卫星数据的尘埃风暴检测方法

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摘要

Enhancing the dust storm detection is a key part for the environmental protection, human healthy and economic development. The goal of this paper is to propose a new Support Vector Machine (SVM)-based method to automatically detect dust storms using remote sensing data. Existing methods dealing with this problem are usually threshold-based that are of great complexity and uncertainty. In this paper we propose a simple and reliable method combining SVM with MODIS L1 data and explore the optimal band combinations used as the feature vectors of SVM. The developed method was evaluated by MODIS and OMI data qualitatively and quantitatively on three study sites located in the Arabian Desert, Gobi Desert and Taklimakan Desert, and it was also compared to three other traditional methods based on their accuracy, complexity, reliability and sensitivity to thresholds. The detection results demonstrated that the combination of (Band7 - Band3)/(Band7 + Band3) ((B7 - B3)/(B7 + B3)), Band20 - Band31 (B20 - B31), and Band31/Band32 (B31/B32) can detect the dust storms more precisely than other individual bands or their combination. The comparison among those cases indicated that the proposed automatic method exhibited an advantage of minimizing the uncertainty and complexity, which were the limits of defining thresholds based on the threshold-based methods. The conclusions can provide references for studies that focus on statistical-based dust storm detection.
机译:增强防尘暴检测是环境保护,人类健康和经济发展的关键部分。本文的目标是提出一种新的支持向量机(SVM)的方法,用于使用遥感数据自动检测灰尘风暴。处理此问题的现有方法通常是基于阈值的,这具有很大的复杂性和不确定性。本文提出了一种简单可靠的方法,将SVM与MODIS L1数据组合,并探索用作SVM特征向量的最佳频带组合。开发方法通过MODIS和OMI数据进行了定性和定量的,在阿拉伯沙漠,戈壁沙漠和田竹桃沙漠中的三个研究网站上进行了定量和定量,并且还基于其准确性,复杂性,可靠性和敏感性的三种其他传统方法进行比较门槛。检测结果表明(BAND7 - 带3)/(BAND7 + BAND3)((B7-B3)/(B7 + B3)),带20-带31(B20-B31)和带31 /带32的组合(B31 / B32 )可以比其他单独的带或它们的组合更精确地检测尘暴。这些情况之间的比较表明,所提出的自动方法表现出最小化不确定性和复杂性的优点,这是基于基于阈值的方法定义阈值的限制。结论可以为重点关注统计的尘暴检测的研究提供参考。

著录项

  • 来源
    《Advances in space research 》 |2020年第4期| 1263-1278| 共16页
  • 作者单位

    Aerospace Information Research Institute Chinese Academy of Sciences Beijing 100094 China Key Laboratory of Digital Earth Science Institute of Remote Sensing and Digital Earth Chinese Academy of Sciences Beijing 100094 China University of Chinese Academy of Sciences Beijing 101407 China;

    Aerospace Information Research Institute Chinese Academy of Sciences Beijing 100094 China Key Laboratory of Digital Earth Science Institute of Remote Sensing and Digital Earth Chinese Academy of Sciences Beijing 100094 China University of Chinese Academy of Sciences Beijing 101407 China;

    Aerospace Information Research Institute Chinese Academy of Sciences Beijing 100094 China Key Laboratory of Digital Earth Science Institute of Remote Sensing and Digital Earth Chinese Academy of Sciences Beijing 100094 China University of Chinese Academy of Sciences Beijing 101407 China;

    Key Laboratory of Digital Earth Science Institute of Remote Sensing and Digital Earth Chinese Academy of Sciences Beijing 100094 China University of Agriculture Makurdi PMB 2373 Markurdi Benue State Nigeria;

    Key Lab of Urban Environment and Health Institute of Urban Environment Chinese Academy of Sciences Xiamen 361021 China;

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

    Dust detection; Support vector machine (SVM); Threshold-based method: Moderate resolution imaging spectroradiometer (MODIS); Cluster analysis;

    机译:灰尘检测;支持向量机(SVM);基于阈值的方法:中等分辨率成像光谱辐射器(MODIS);聚类分析;

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