Title of article
Efficient retrieval of vegetation leaf area index and canopy clumping factor from satellite data to support pollutant deposition assessments
Author/Authors
Ned Nikolov، نويسنده , , Karl Zeller، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2006
Pages
11
From page
539
To page
549
Abstract
Canopy leaf area index (LAI) is an important structural parameter of the vegetation controlling pollutant uptake by terrestrial ecosystems. This paper presents a computationally efficient algorithm for retrieval of vegetation LAI and canopy clumping factor from satellite data using observed Simple Ratios (SR) of near-infrared to red reflectance. The method employs numerical inversion of a physics-based analytical canopy radiative transfer model that simulates the bi-directional reflectance distribution function (BRDF). The algorithm is independent of ecosystem type. The method is applied to 1-km resolution AVHRR satellite images to retrieve a geo-referenced data set of monthly LAI values for the conterminous USA. Satellite-based LAI estimates are compared against independent ground LAI measurements over a range of ecosystem types. Verification results suggest that the new algorithm represents a viable approach to LAI retrieval at continental scale, and can facilitate spatially explicit studies of regional pollutant deposition and trace gas exchange.
Keywords
Vegetation remote sensing , Retrieval algorithm , Seasonal LAI , leaf area index , Canopy density , Clumping factor , LAI data set , Reflectance model , Land surface property , Vegetation patchiness
Journal title
ENVIRONMENTAL POLLUTION
Serial Year
2006
Journal title
ENVIRONMENTAL POLLUTION
Record number
730626
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