| Literature DB >> 22163513 |
Abstract
Remote sensing imagery is being used intensively to estimate the biochemical content of vegetation (e.g., chlorophyll, nitrogen, and lignin) at the leaf level. As a result of our need for vegetation biochemical information and our increasing ability to obtain canopy spectral data, a few techniques have been explored to scale leaf-level biochemical content to the canopy level for forests and crops. However, due to the contribution of non-green materials (i.e., standing dead litter, rock, and bare soil) from canopy spectra in semi-arid grasslands, it is difficult to obtain information about grassland biochemical content from remote sensing data at the canopy level. This paper summarizes available methods used to scale biochemical information from the leaf level to the canopy level and groups these methods into three categories: direct extrapolation, canopy-integrated approach, and inversion of physical models. As for semi-arid heterogeneous grasslands, we conclude that all methods are useful, but none are ideal. It is recommended that future research should explore a systematic upscaling framework which combines spatial pattern analysis, canopy-integrated approach, and modeling methods to retrieve vegetation biochemical content at the canopy level.Entities:
Keywords: canopy level; hyperspectral remote sensing; leaf level; scaling; semi-arid grasslands; vegetation biochemical content
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Year: 2010 PMID: 22163513 PMCID: PMC3231094 DOI: 10.3390/s101211072
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.Hyperspectral response curves (a) of a semi-arid grassland and a green grass site. Three primary atmospheric water absorption (noisy) regions (1,361–1,395 nm, 1,811–1,925 nm, 2,350–2,500 nm) for the field measurements were deleted [1,28]. Photographs (b) and (c) were taken from the plots where the spectral reflectances were collected.