首页> 外文会议>Remote Sensing for Agriculture, Ecosystems, and Hydrology >Removal of clouds, dust and shadow pixels from hyperspectral imagery using a non-separable and stationary spatio-temporal covariance model
【24h】

Removal of clouds, dust and shadow pixels from hyperspectral imagery using a non-separable and stationary spatio-temporal covariance model

机译:使用不可分居和固定的时空协方差模型从高光谱图像中删除云,灰尘和阴影像素

获取原文

摘要

Hyperspectral remote sensing images are usually affected by atmospheric conditions such as clouds and their shadows, which represents a contamination of reflectance data and complicates the extraction of biophysical variables to monitor phenological cycles of crops. This paper explores a cloud removal approach based on reflectance prediction using multitemporal data and spatio-temporal statistical models. In particular, a covariance model that captures the behavior of spatial and temporal components in data simultaneously (i.e. non-separable) is considered. Eight weekly images collected from the Hyperion hyper-spectrometer instrument over an agricultural region of Saudi Arabia were used to reconstruct a scene with the presence of cloudy affected pixels over a center-pivot crop. A subset of reflectance values of cloud-free pixels from 50 bands in the spectral range from 426.82 to 884.7 nm at each date, were used as input to fit a parametric family of non-separable and stationary spatio-temporal covariance functions. Applying simple kriging as an interpolator, cloud affected pixels were replaced by cloud-free predicted values per band, obtaining their respective predicted spectral profiles at the same time. An exercise of reconstructing simulated cloudy pixels in a different swath was conducted to assess the model accuracy, achieving root mean square error (RMSE) values per band less than or equal to 3%. The spatial coherence of the results was also checked through absolute error distribution maps demonstrating their consistency.
机译:高光谱遥感图像通常受大气条件的影响,例如云及其阴影,这代表反射数据的污染,并使生物物理变量的提取复杂化作物的酚类循环。本文探讨了基于使用多模数据和时空统计模型的反射率预测的云移除方法。特别地,考虑了一个协方差模型,其捕获数据中的空间和时间分量的行为(即不可分离的)。从沙特阿拉伯农业区域的Hyperion超频仪仪器收集的八次每周图像被用来在中心枢轴作物上存在多云受影响像素的情况来重建场景。每个日期的光谱范围内的50个带中的无云像素的反射率值的子集被用作输入以适合非可分离和静止时空协方差函数的参数系列。应用简单的Kriging作为插值器,云受影响的像素被每条频段的无云预测值所取代,同时获得它们各自的预测光谱分布。进行了在不同的条件下重建模拟多云像素的运动以评估模型精度,从小或等于3%的每个频带实现均方根误差(RMSE)值。还通过绝对错误分布图检查结果的空间相干性,证明了它们的一致性。

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