...
首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Fitting the Multitemporal Curve: A Fourier Series Approach to the Missing Data Problem in Remote Sensing Analysis
【24h】

Fitting the Multitemporal Curve: A Fourier Series Approach to the Missing Data Problem in Remote Sensing Analysis

机译:拟合多时间曲线:傅里叶级数方法解决遥感分析中的数据丢失问题

获取原文
获取原文并翻译 | 示例

摘要

With the advent of free Landsat data stretching back decades, there has been a surge of interest in utilizing remotely sensed data in multitemporal analysis for estimation of biophysical parameters. Such analysis is confounded by cloud cover and other image-specific problems, which result in missing data at various aperiodic times of the year. While there is a wealth of information contained in remotely sensed time series, the analysis of such time series is severely limited due to the missing data. This paper illustrates a technique which can greatly expand the possibilities of such analyses, a Fourier regression algorithm, here on time series of normalized difference vegetation indices (NDVIs) for Landsat pixels with 30-m resolution. It compares the results with those using the spatial and temporal adaptive reflectance fusion model (STAR-FM), a popular approach that depends on having MODIS pixels with resolutions of 250 m or coarser. STAR-FM uses changes in the MODIS pixels as a template for predicting changes in the Landsat pixels. Fourier regression had an $R^{2}$ of at least 90% over three quarters of all pixels, and it had the highest $R_{rm Predicted}^{2}$ values (compared to STAR-FM) on two thirds of the pixels. The typical root-mean-square error for Fourier regression fitting was about 0.05 for NDVI, ranging from 0 to 1. This indicates that Fourier regression may be used to interpolate missing data for multitemporal analysis at the Landsat scale, especially for annual or longer studies.
机译:随着免费Landsat数据的出现可以追溯到几十年前,人们开始对在多时相分析中利用遥感数据估算生物物理参数产生兴趣。云层覆盖和其他特定于图像的问题会混淆这种分析,这些问题会导致一年中不同时期的数据丢失。尽管遥感时间序列中包含大量信息,但是由于缺少数据,对此类时间序列的分析受到严格限制。本文说明了一种技术,该技术可以极大地扩展这种分析的可能性,一种傅里叶回归算法,这里是有关分辨率为30 m的Landsat像素的归一化差异植被指数(NDVI)的时间序列。它将结果与使用时空自适应反射融合模型(STAR-FM)进行比较,后者是一种流行的方法,它依赖于MODIS像素的分辨率为250 m或更粗。 STAR-FM使用MODIS像素的变化作为模板来预测Landsat像素的变化。傅里叶回归在所有像素的四分之三中具有至少90%的$ R ^ {2} $,并且具有最高的$ R_ {rm Predicted} ^ {2} $值(与STAR-FM相比)为三分之二像素。对于NDVI,傅里叶回归拟合的典型均方根误差约为0.05,范围为0至1。这表明傅里叶回归可用于插值Landsat尺度上的多时间分析的缺失数据,特别是对于年度或更长时间的研究。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号