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A method for canopy water content estimation for highly vegetated surfaces-shortwave infrared perpendicular water stress index 被引量:15

A method for canopy water content estimation for highly vegetated surfaces-shortwave infrared perpendicular water stress index
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摘要 In this paper, a new method for canopy water content (FMC) estimation for highly vegetated surfaces- shortwave infrared perpendicular water stress index (SPSI) is developed using NIR, SWIR wavelengths of Enhanced Thematic Mapper Plus (ETM+) on the basis of spectral features and distribution of surface targets with different water conditions in NIR-SWIR spectral space. The developed method is further explored with radiative transfer simulations using PROSPECT, Lillesaeter, SailH and 6S. It is evident from the results of validation derived from satellite synchronous field measurements that SPSI is highly correlated with FMC, coefficient of determination (R squared) and root mean square error are 0.79 and 26.41%. The paper concludes that SPSI has a potential in vegetation water content estimation in terms of FMC. In this paper, a new method for canopy water content (FMC) estimation for highly vegetated surfaces-shortwave infrared perpendicular water stress index (SPSI) is developed using NIR, SWIR wavelengths of Enhanced Thematic Mapper Plus (ETM+) on the basis of spectral features and distribution of surface targets with different water conditions in NIR-SWIR spectral space. The developed method is further explored with radiative transfer simulations using PROSPECT, Lillesaeter, SailH and 6S. It is evident from the results of validation derived from satellite synchronous field measurements that SPSI is highly correlated with FMC, coefficient of determination (R squared) and root mean square error are 0.79 and 26.41%. The paper concludes that SPSI has a potential in vegetation water content estimation in terms of FMC.
出处 《Science China Earth Sciences》 SCIE EI CAS 2007年第9期1359-1368,共10页 中国科学(地球科学英文版)
基金 Supported by the Special Funds for the Major State Basic Research Project (973) (Grant No. G2000077900) the High-Tech Research and Development Program of China (Grant No. 2001AA135110) EAGLE (Exploitation of AnGular Effects in Land Surface Observation From Satellites in the Sixth Framework Program (FP6) of EU) (Grant No. SST3CT2003502057)
关键词 leaf WATER content shortwave INFRARED PERPENDICULAR WATER stress index (SPSI) remote ESTIMATION of vegetation WATER CONTENT leaf water content shortwave infrared perpendicular water stress index (SPSI) remote estimation of vegetation water content
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