首页> 外文会议>Conference on remote sensing of clouds and the atmosphere >A neural network approach to cloud removal in single-band SSM/I imagery
【24h】

A neural network approach to cloud removal in single-band SSM/I imagery

机译:神经网络方法在单波段SSM / I图像中去除云

获取原文

摘要

When mappign geophysical variables (e.g. ground albedo) with satellite imagery, it is common practice to create composite maps depicting seasonal or monthly temporal averages. Using data from multiple satellite passes, each location on the earth is represented by a vector of several measurements acquired over the compositing period. Removing the cloud-contaminated values from each measurement vector is a common preprecessing task. The objective of this research is to detect and remove hydrometeor contamination in time-composite 85 GHz (vertically polarized) SSM/I data of the Amazon Basin without reference to any other SSM/I channel. To develop the cloud removal algorithm, a feed-forward neural network was trained using 85 GHz SSm/I brightness values produced through simulation. Since the data was synthetic rather than real, the correct mean brightness value of each vector was known, as well as the level of contamination for each measurement in the vector. The network inputs included several measures designed to emphasize the atypical cool measurements diagnostic of hydrometeor contamination. The desired output of the network was a binary flag indicating whether the presented measurement was contaminated or clean. When the network was tested, 92percent of the synthetic measurements were correctly classified as clean or dirty. The average error remaining in the decontaminated vectors was less than 0.1K.
机译:当使用卫星图像绘制地图地球物理变量(例如地面反照率)时,通常的做法是创建描述季节性或每月时间平均值的复合地图。使用来自多个卫星通道的数据,地球上的每个位置都由在整个合成周期内获取的多个测量值的向量表示。从每个测量向量中删除云污染值是一项常见的前置任务。这项研究的目的是在不参考任何其他SSM / I通道的情况下,检测和消除亚马逊盆地时间合成的85 GHz(垂直极化)SSM / I数据中的水凝物污染。为了开发除云算法,使用了通过仿真产生的85 GHz SSm / I亮度值来训练前馈神经网络。由于数据是合成的,而不是真实的,因此每个向量的正确平均亮度值以及向量中每次测量的污染程度都是已知的。网络输入包括旨在强调对水汽凝结物污染物进行非典型凉爽测量诊断的几种措施。网络的期望输出是一个二进制标志,指示显示的测量结果是否被污染或清洁。在测试网络时,将92%的综合测量值正确分类为干净或脏污。净化后的载体中残留的平均误差小于0.1K。

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