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Fourier Series Applications in Multitemporal Remote Sensing Analysis using Landsat Data.

机译:使用Landsat数据的傅里叶级数在多时相遥感分析中的应用。

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摘要

Researchers now have unprecedented access to free Landsat data, enabling detailed monitoring of the Earth's land surface and vegetation. There are gaps in the data, due in part to cloud cover. The gaps are aperiodic and localized, forcing any detailed multitemporal analysis based on Landsat data to compensate.;Harmonic regression approximates Landsat data for any point in time with minimal training images and reduced storage requirements. In two study areas in North Carolina, USA, harmonic regression approaches were least as good at simulating missing data as STAR-FM for images from 2001. Harmonic regression had an R2 ≥ 0.9 over three quarters of all pixels. It gave the highest R2predicted values on two thirds of the pixels. Applying harmonic regression with the same number of harmonics to consecutive years yielded an improved fit, R2 ≥ 0.99 for most pixels.;We next demonstrate a change detection method based on exponentially weighted moving average (EWMA) charts of harmonic residuals. In the process, a data-driven cloud filter is created, enabling use of partially clouded data. The approach is shown capable of detecting thins and subtle forest degradations in Alabama, USA, considerably finer than the Landsat spatial resolution in an on-the-fly fashion, with new images easily incorporated into the algorithm. EWMA detection accurately showed the location, timing, and magnitude of 85% of known harvests in the study area, verified by aerial imagery.;We use harmonic regression to improve the precision of dynamic forest parameter estimates, generating a robust time series of vegetation index values. These values are classified into strata maps in Alabama, USA, depicting regions of similar growth potential. These maps are applied to Forest Service Forest Inventory and Analysis (FIA) plots, generating post-stratified estimates of static and dynamic forest parameters. Improvements to efficiency for all parameters were such that a comparable random sample would require at least 20% more sampling units, with the improvement for the growth parameter requiring a 50% increase.;These applications demonstrate the utility of harmonic regression for Landsat data. They suggest further applications in environmental monitoring and improved estimation of landscape parameters, critical to improving large-scale models of ecosystems and climate effects.
机译:研究人员现在可以前所未有地访问免费的Landsat数据,从而可以对地球的陆地表面和植被进行详细的监视。数据中存在差距,部分原因是云覆盖。差距是非周期性的和局部的,迫使基于Landsat数据进行的任何详细的多时相分析都可以弥补。谐波回归可以在最少的训练图像和减少的存储需求的情况下,对任意时间点的Landsat数据进行近似估计。在美国北卡罗来纳州的两个研究区域中,谐波回归方法在模拟缺失数据方面的效果不如STAR-FM(2001年以来的图像)那么好。谐波回归在所有像素的四分之三上的R2≥0.9。它在三分之二的像素上给出了最高的R2预测值。将谐波次数相同的谐波回归应用到连续年份可以提高拟合度,大多数像素的R2≥0.99。接下来,我们演示基于谐波残差的指数加权移动平均(EWMA)图的变化检测方法。在此过程中,将创建一个数据驱动的云过滤器,从而可以使用部分云的数据。所显示的方法能够实时检测美国阿拉巴马州的细微和细微的森林退化情况,比Landsat空间分辨率要精细得多,并且新图像可以轻松地纳入算法中。 EWMA检测可准确显示研究区域内已知收成的85%的位置,时间和大小,并通过航空影像进行了验证。;我们使用谐波回归来提高动态森林参数估计的精度,从而生成稳健的植被指数时间序列价值观。这些值被分类为美国阿拉巴马州的地层图,描绘了具有相似增长潜力的地区。这些地图将应用于森林服务森林清单和分析(FIA)图,生成静态和动态森林参数的后分层估算。所有参数效率的提高使得可比较的随机样本至少需要增加20%的采样单位,而增长参数的要求则需要增加50%。这些应用证明了谐波回归对Landsat数据的效用。他们建议在环境监测和改善景观参数估计中进一步应用,这对于改善生态系统和气候影响的大规模模型至关重要。

著录项

  • 作者

    Brooks, Evan Beren.;

  • 作者单位

    Virginia Polytechnic Institute and State University.;

  • 授予单位 Virginia Polytechnic Institute and State University.;
  • 学科 Agriculture Forestry and Wildlife.;Remote Sensing.;Statistics.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 196 p.
  • 总页数 196
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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