您的位置: 专家智库 > >

中国博士后科学基金(20100471276)

作品数:3 被引量:9H指数:2
相关作者:孙健顾玲嘉赵凯郑兴明更多>>
相关机构:中国科学院吉林大学更多>>
发文基金:中国博士后科学基金国家自然科学基金中国科学院知识创新工程重要方向项目更多>>
相关领域:自动化与计算机技术航空宇航科学技术天文地球更多>>

文献类型

  • 3篇中文期刊文章

领域

  • 3篇自动化与计算...
  • 1篇天文地球
  • 1篇航空宇航科学...

主题

  • 2篇空间分辨率
  • 2篇AMSR-E
  • 1篇地球观测
  • 1篇地球观测系统
  • 1篇遥感
  • 1篇灾害
  • 1篇微波遥感
  • 1篇像元
  • 1篇像元分解
  • 1篇亮温
  • 1篇涝灾
  • 1篇混合像元
  • 1篇混合像元分解
  • 1篇洪涝
  • 1篇洪涝灾害
  • 1篇分辨率
  • 1篇高空间分辨率
  • 1篇被动微波
  • 1篇被动微波遥感
  • 1篇NORTHE...

机构

  • 1篇吉林大学
  • 1篇中国科学院

作者

  • 1篇郑兴明
  • 1篇赵凯
  • 1篇顾玲嘉
  • 1篇孙健

传媒

  • 2篇Chines...
  • 1篇遥感技术与应...

年份

  • 1篇2012
  • 2篇2011
3 条 记 录,以下是 1-3
排序方式:
被动微波遥感数据超分辨率增强与混合像元分解研究综述被引量:4
2012年
星载被动微波遥感数据以其全天候、穿透性以及不受云干扰等特点,在全球变化研究领域取得了广泛的应用,然而其较低的空间分辨率,限制了后期地物参数的反演精度。对国内外被动微波遥感数据空间分辨率提高方法进行介绍,重点介绍了基于图像处理技术的超分辨率增强和混合像元分解方法。通过对两类方法的介绍和评价,展望被动微波遥感数据混合像元分解方法的研究前景。被动微波遥感数据空间分辨率的有效提高,可以为更多的研究和应用领域服务。
顾玲嘉赵凯孙健郑兴明
关键词:空间分辨率混合像元分解
Comparative Analysis of Microwave Brightness Temperature Data in Northeast China Using AMSR-E and MWRI Products被引量:7
2011年
With such significant advantages as all-day observation, penetrability and all-weather coverage, passive mi-crowave remote sensing technique has been widely applied in the research of global environmental change. As the sat-ellite-based passive microwave remote sensor, the Advanced Microwave Scanning Radiometer-Earth Observing Sys-tem (AMSR-E) loaded on NASA's (National Aeronautics and Space Administration of USA) Aqua satellite has been popularly used in the field of microwave observation. The Microwave Radiation Imager (MWRI) loaded on the Chi-nese FengYun-3A (FY-3A) satellite is an AMSR-E-like conical scanning microwave sensor, but there are few reports about MWRI data. This paper firstly proposed an optimal spatial position matching algorithm from rough to exact for the position matching between AMSR-E and MWRI data, then taking Northeast China as an example, comparatively analyzed the microwave brightness temperature data derived from AMSR-E and MWRI. The results show that when the antenna footprints of the two sensors are filled with either full water, or full land, or mixed land and water with ap-proximate proportion, the errors of brightness temperature between AMSR-E and MWRI are usually in the range from -10 K to +10 K. In general, the residual values of brightness temperature between the two microwave sensors with the same spatial resolution are in the range of ±3 K. Because the spatial resolution of AMSR-E is three times as high as that of MWRI, the results indicate that the quality of MWRI data is better. The research can provide useful information for the MWRI data application and microwave unmixing method in the future.
GU LingjiaZHAO KaiZHANG ShuwenZHANG Shuang
关键词:亮温地球观测系统
An AMSR-E Data Unmixing Method for Monitoring Flood and Waterlogging Disaster被引量:2
2011年
Spectral remote sensing technique is usually used to monitor flood and waterlogging disaster.Although spectral remote sensing data have many advantages for ground information observation,such as real time and high spatial resolution,they are often interfered by clouds,haze and rain.As a result,it is very difficult to retrieve ground information from spectral remote sensing data under those conditions.Compared with spectral remote sensing tech-nique,passive microwave remote sensing technique has obvious superiority in most weather conditions.However,the main drawback of passive microwave remote sensing is the extreme low spatial resolution.Considering the wide ap-plication of the Advanced Microwave Scanning Radiometer-Earth Observing System(AMSR-E) data,an AMSR-E data unmixing method was proposed in this paper based on Bellerby's algorithm.By utilizing the surface type classifi-cation results with high spatial resolution,the proposed unmixing method can obtain the component brightness tem-perature and corresponding spatial position distribution,which effectively improve the spatial resolution of passive microwave remote sensing data.Through researching the AMSR-E unmixed data of Yongji County,Jilin Provinc,Northeast China after the worst flood and waterlogging disaster occurred on July 28,2010,the experimental results demonstrated that the AMSR-E unmixed data could effectively evaluate the flood and waterlogging disaster.
GU LingjiaZHAO KaiZHANG ShuangZHENG Xingming
关键词:洪涝灾害高空间分辨率被动微波遥感
共1页<1>
聚类工具0