首页> 外文会议>2011 International Conference on Remote Sensing, Environment and Transportation Engineering >Reconstruction and validation of SCA from spectral mixture analysis
【24h】

Reconstruction and validation of SCA from spectral mixture analysis

机译:通过光谱混合分析重建和验证SCA

获取原文

摘要

As climate continues to change, the empirical methods of managing water, which are based on historical relationships between point measurements and runoff, are likely to become less accurate. Hence the utility of distributed snowmelt models based on a judicious integration of remotely sensed and surface measurements will consequently increase. However, as the analysis in this paper shows, translation of reflectance measurements from MODIS into a product that is useful for hydrologic analyses involves complicated, somewhat arcane knowledge. The daily products have data gaps and errors because of cloud cover and sensor viewing geometry. Rather than make users interpolate and filter these patchy daily maps without completely understanding the retrieval algorithm and instrument properties, we use the daily time series to improve the estimate of the measured snow properties for a particular day. We use a combination of noise filtering, snow/cloud discrimination, and interpolation and smoothing to produce our best estimate of the daily snow cover. We compare the result of smoothed SCA with TM SCA, the precise is 0.98 and RMSE is 0.06, but the RMSE is up to 0.22 and the precise is 0.9 when we compare the result between MYD10A1 and TM.
机译:随着气候的不断变化,基于点测量和径流之间历史关系的水管理经验方法可能会变得不太准确。因此,基于遥感和地表测量的明智整合的分布式融雪模型的实用性将因此增加。但是,正如本文中的分析所示,将MODIS的反射率测量值转换为可用于水文分析的产品涉及复杂的,有些奥秘的知识。由于云层覆盖和传感器观察的几何形状,日常产品存在数据空白和错误。我们不是在没有完全了解检索算法和仪器属性的情况下让用户插补和过滤这些不完整的每日地图,而是使用每日时间序列来改进特定日期的测雪特性的估计。我们结合使用了噪声过滤,雪/云识别,插值和平滑功能,以对每日的积雪进行最佳估算。我们将平滑的SCA与TM SCA的结果进行比较,当将MYD10A1与TM的结果进行比较时,精确度为0.98,RMSE为0.06,但是RMSE最高为0.22,精确度为0.9。

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