Title of article :
Multiple shadow fractions in spectral mixture analysis of a cotton canopy
Author/Authors :
Fitzgerald، نويسنده , , Glenn J. and Pinter Jr.، نويسنده , , Paul J. and Hunsaker، نويسنده , , Douglas J. and Clarke، نويسنده , , Thomas R.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Shadows are being used more frequently to estimate plant canopy biophysical characteristics. Typically, a zero value is assumed or a threshold value is derived from histogram analysis of imagery to determine the shadow endmember (EM). Here, two distinct shadow EMs were measured in situ for use in spectral mixture analysis of a cotton canopy on five dates in 2003. The four EMs used in the analysis were: sunlit green leaf, sunlit dry soil, self-shadowed leaf, shadowed dry soil. This 4-EM model was compared to a 3-EM model where a zero-value shade EM was used for unmixing with the two sunlit EMs. Multiple endmember spectral mixture analysis (MESMA) was used to allow EM composition to vary across each scene. The analysis and EMs were applied to fine-scale hyperspectral image data collected in the wavelength range, 440 to 810 nm. Ground data collected included percent cover, height, SPAD (a measure of leaf greenness), and chlorophyll a concentration. The normalized difference vegetation index (NDVI) was also compared to the unmixing results. Regression analysis showed that NDVI was equal to the 4-EM model for estimation of percent cover (r2 = 0.95, RMSE = 6.6) although the NDVI y-intercept was closer to zero. The 4-EM model was best for estimating height (r2 = 0.79, RMSE = 0.07 m) and chlorophyll a concentration (r2 = 0.46, RMSE = 7.0 μg/cm2). The 3-EM model and NDVI performed poorly when estimating chlorophyll a concentration. Inclusion of two distinct shadow EMs in the model improved relationships to crop biophysical parameters and was better than assuming one, zero-value shade EM. Since MESMA operates at the pixel level and allows variable EM assignment to each pixel, mapping the spatial variability of shadows and other variables of interest is possible, providing a powerful input to canopy and ecosystem models as well as precision farming.
Keywords :
Shadows , Hyperspectral , MESMA , Cotton , Precision agriculture , PHyTIS , Spectral Mixture Analysis , Shade
Journal title :
Remote Sensing of Environment
Journal title :
Remote Sensing of Environment