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Machine Learning Approach to Retrieving Physical Variables from Remotely Sensed Data

机译:机器学习方法从遥感数据中检索物理变量

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摘要

Scientists from all over the world make use of remotely sensed data from hundreds of satellites to better understand the Earth. However, physical measurements from an instrument is sometimes missing either because the instrument hasn't been launched yet or the design of the instrument omitted a particular spectral band. Measurements received from the instrument may also be corrupt due to malfunction in the detectors on the instrument. Fortunately, there are machine learning techniques to estimate the missing or corrupt data. Using these techniques we can make use of the available data to its full potential.;We present work on four different problems where the use of machine learning techniques helps to extract more information from available data. We demonstrate how missing or corrupt spectral measurements from a sensor can be accurately interpolated from existing spectral observations. Sometimes this requires data fusion from multiple sensors at different spatial and spectral resolution. The reconstructed measurements can then be used to develop products useful to scientists, such as cloud-top pressure, or produce true color imagery for visualization. Additionally, segmentation and image processing techniques can help solve classification problems important for ocean studies, such as the detection of clear-sky over ocean for a sea surface temperature product. In each case, we provide detailed analysis of the problem and empirical evidence that these problems can be solved effectively using machine learning techniques.
机译:来自世界各地的科学家利用来自数百颗卫星的遥感数据更好地了解地球。但是,有时由于缺少仪器而无法进行仪器的物理测量,或者仪器的设计忽略了特定的光谱带。由于仪器上检测器的故障,从仪器收到的测量值也可能会损坏。幸运的是,存在机器学习技术来估计丢失或损坏的数据。使用这些技术,我们可以充分利用可用数据。我们提出了四个不同问题的研究,其中机器学习技术的使用有助于从可用数据中提取更多信息。我们演示了如何从现有的光谱观测值中准确地插值传感器丢失或损坏的光谱测量值。有时,这需要来自多个传感器的不同空间和光谱分辨率的数据融合。然后,可以将重构后的测量结果用于开发对科学家有用的产品,例如云顶压力,或生成用于可视化的真实彩色图像。此外,分割和图像处理技术可以帮助解决对于海洋研究重要的分类问题,例如检测海洋表面温度产品在海洋上的晴空。在每种情况下,我们都会对问题进行详细的分析,并提供经验证据表明可以使用机器学习技术有效解决这些问题。

著录项

  • 作者

    Shahriar, Fazlul.;

  • 作者单位

    City University of New York.;

  • 授予单位 City University of New York.;
  • 学科 Computer science.;Environmental science.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 98 p.
  • 总页数 98
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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