首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Generation of dense time series synthetic Landsat data through data blending with MODIS using a spatial and temporal adaptive reflectance fusion model
【24h】

Generation of dense time series synthetic Landsat data through data blending with MODIS using a spatial and temporal adaptive reflectance fusion model

机译:通过使用时空自适应反射融合模型与MODIS进行数据混合,生成密集的时间序列合成Landsat数据

获取原文
获取原文并翻译 | 示例
           

摘要

Landsat imagery with a 30 m spatial resolution is well suited for characterizing landscape-level forest structure and dynamics. While Landsat images have advantageous spatial and spectral characteristics for describing vegetation properties, the Landsat sensor's revisit rate, or the temporal resolution of the data, is 16 days. When considering that cloud cover may impact any given acquisition, this lengthy revisit rate often results in a dearth of imagery for a desired time interval (e.g., month, growing season, or year) especially for areas at higher latitudes with shorter growing seasons. In contrast, MODIS (MODerate-resolution Imaging Spectroradiometer) has a high temporal resolution, covering the Earth up to multiple times per day, and depending on the spectral characteristics of interest, MODIS data have spatial resolutions of 250 m, 500 m, and 1000 m. By combining Landsat and MODIS data, we are able to capitalize on the spatial detail of Landsat and the temporal regularity of MODIS acquisitions. In this research, we apply and demonstrate a data fusion approach (Spatial and Temporal Adaptive Reflectance Fusion Model, STARFM) at a mainly coniferous study area in central British Columbia, Canada. Reflectance data for selected MODIS channels, all of which were resampled to 500 m, and Undsat (at 30 m) were combined to produce 18 synthetic Landsat images encompassing the 2001 growing season (May to October). We compared, on a channel-by-channel basis, the surface reflectance values (stratified by broad land cover types) of four real Landsat images with the corresponding closest date of synthetic Landsat imagery, and found no significant difference between real (observed) and synthetic (predicted) reflectance values (mean difference in reflectance: mixed forest (chi) over bar = 0.086, rho = 0.088, broadleaf (chi) over bar = 0.019, sigma = 0.079, coniferous (chi) over bar = 0.039, sigma = 0.093). Similarly, a pixel based analysis shows that predicted and observed reflectance values for the four Landsat dates were closely related (mean r(2) = 0.76 for the NIR band: r(2) = 0.54 for the red band; p<0.01). Investigating the trend in NDVI values in synthetic Landsat values over a growing season revealed that phenological patterns were well captured; however, when seasonal differences lead to a change in land cover (i.e., disturbance, snow cover), the algorithm used to generate the synthetic Landsat images was, as expected, less effective at predicting reflectance.
机译:具有30 m空间分辨率的Landsat影像非常适合表征景观级森林结构和动态。虽然Landsat影像具有有利的空间和光谱特征来描述植被特性,但Landsat传感器的重访率或数据的时间分辨率为16天。当考虑到云层覆盖可能会影响任何给定的采集时,这种漫长的重访率通常会导致在所需时间间隔(例如,月份,生长季节或年份)缺乏图像,尤其是对于纬度较高,生长季节较短的地区。相比之下,MODIS(中等分辨率成像光谱仪)具有较高的时间分辨率,每天最多可覆盖地球多次,并且根据感兴趣的光谱特性,MODIS数据的空间分辨率为250 m,500 m和1000米通过结合Landsat和MODIS数据,我们可以利用Landsat的空间细节和MODIS采集的时间规律性。在这项研究中,我们在加拿大不列颠哥伦比亚省中部一个主要的针叶研究区应用并证明了一种数据融合方法(时空自适应反射融合模型,STARFM)。选定MODIS通道的反射率数据均重新采样到500 m,Undsat(30 m)合并在一起,生成了18张合成Landsat影像,涵盖了2001年生长季节(5月至10月)。我们在逐个通道的基础上比较了四个真实Landsat图像与相应的合成Landsat图像的最接近日期的表面反射率值(按宽泛的土地覆盖类型分层),发现真实(观察到的)和第二个Landsat图像之间没有显着差异。合成(预测)反射率值(反射率的均值差:bar上的混交林(chi)= 0.086,rho = 0.088,bar上的阔叶(chi)= 0.019,sigma = 0.079,bar上的针叶树(chi)= 0.039,sigma = 0.093)。同样,基于像素的分析表明,四个Landsat日期的预测和观测反射率值密切相关(NIR波段的平均值r(2)= 0.76;红色波段的r(2)= 0.54; p <0.01)。对一个生长季节合成Landsat值中NDVI值的趋势进行调查后发现,物候模式已被很好地捕获。但是,当季节性差异导致土地覆盖率发生变化(即扰动,积雪)时,如预期的那样,用于生成合成Landsat图像的算法在预测反射率方面效果不佳。

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