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Remote Sensing Technology and Application  2001, Vol. 16 Issue (4): 248-251    DOI: 10.11873/j.issn.1004-0323.2001.4.248
    
Study on Hyperspectral Remote Sensing in Agriculture
TANG Yan-lin, HUANG Jing-feng
(Institute of Remote Sensing&Information System Application Zhejiang University,Hangzhou, 310029,China)
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Abstract  

:With the development of computer technology and aerial and space technology, remote sensing moni-toring has been become a simple, fast and high effective monitoring method, and extensively being used on geo-logical prospecting, environmental monitoring, weather forcast and agriculture. It achieve considerable success.Because of hyperspectral resolving power, extra-multi-band and large information capacity, hyperspectral re-mote sensing is a powerful means used to observe the earth and the key of moden remote sensing, and has awidespread application prospects in agriculture. Hyperspectral data (especially differential hyperspectrum) arecorrelate to leaf area index (LAI), leaf chlorophyll density (CH. D) and other biochemical contents such asprotein and so on. It is introduced on the difficult problems, present and future of hyperspectral remote sensingin agriculture in this article.

Key words:  Hyperspectrum      Remote sensing technology      Agriculture application study     
Published:  26 December 2011
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TANG Yan-lin
HUANG Jing-feng

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TANG Yan-lin, HUANG Jing-feng. Study on Hyperspectral Remote Sensing in Agriculture. Remote Sensing Technology and Application, 2001, 16(4): 248-251.

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http://www.rsta.ac.cn/EN/10.11873/j.issn.1004-0323.2001.4.248     OR     http://www.rsta.ac.cn/EN/Y2001/V16/I4/248

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