首页> 外文会议>International Symposium on Remote Sensing of Environment >A DYNAMIC THRESHOLD CLOUD DETECTING APPROACH BASED ON THE BRIGHTNESS TEMPERATURE FROM FY-2 VISSR DATA
【24h】

A DYNAMIC THRESHOLD CLOUD DETECTING APPROACH BASED ON THE BRIGHTNESS TEMPERATURE FROM FY-2 VISSR DATA

机译:基于FY-2 VISSR数据亮度温度的动态阈值云检测方法

获取原文

摘要

The traditional statistical methods and radiation transfer theory methods for cloud detecting have a high adaptability just only in those areas with a uniform surface coverage and noncomplex terrain. Therefore, adapted to large spatial and temporal scales, in this work a cloud detection method is developed, seeking the main influencing factors of the change of Brightness Temperature(BT) of clear sky and their relationships, researching the change regularity and normal fluctuation range of BT on the basis of function fitting, setting the cloud detecting dynamic threshold depending on the cloud spectral characteristics, and making accuracy assessment in order to ensure higher adaptability and accuracy of this cloud detecting method. In this paper, a dynamic threshold algorithm is presented for cloud detection using daytime imagery from the VISSR sensor on board FY-2C/D/E, which is the first generation geostationary satellite. And the land surface/brightness temperature influence functions are analysis and established, including latitude, longitude, altitude, time, land cover. The theoretical temperature value of clear sky can be calculated through these influence functions. Then, the dynamic threshold cloud detection model is proposed based on the high temporal resolution of VISSR data Meanwhile, the land surface emissivity is considered as the main factor to the change range of brightness temperature which determines the dynamic threshold for cloud detection Finally, the dynamic threshold cloud detecting model is evaluated using FY-2C/D/E VISSR data covering China, and the Kappa of dynamic method is maximum, equalling 0 6195, which is much higher than the indexes for the reflectivity and BT fixed methods, equalling 0.4511 and 0.403, respectively Consequently, the dynamic threshold cloud detecting method provides an important improvement because the spatial, temporal and geographic characteristics were considered into the model.
机译:仅在具有均匀表面覆盖和非复杂地形的区域中,用于云检测的传统统计方法和辐射传输理论方法才具有较高的适应性。因此,为适应大时空尺度,本工作开发了一种云探测方法,寻找晴空明亮温度(BT)变化的主要影响因素及其关系,研究云的变化规律和正常波动范围。 BT在功能拟合的基础上,根据云光谱特征设置云检测动态阈值,并进行准确性评估,以确保该云检测方法具有更高的适应性和准确性。本文提出了一种动态阈值算法,该算法使用第一天对地静止卫星FY-2C / D / E上的VISSR传感器的白天图像进行云检测。分析并建立了地表/亮度温度影响函数,包括纬度,经度,海拔,时间,土地覆盖率。通过这些影响函数可以计算出晴朗天空的理论温度值。然后,基于VISSR数据的高时间分辨率,提出了动态阈值云探测模型。同时,将地表发射率作为影响亮度温度变化范围的主要因素,确定了云探测的动态阈值。使用覆盖中国的FY-2C / D / E VISSR数据评估了阈值云检测模型,动态方法的Kappa最大,等于0 6195,这比反射率和BT固定方法的指标高得多,等于0.4511和因此,动态阈值云检测方法提供了重要的改进,因为模型中考虑了空间,时间和地理特征。

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