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A Method for Retrieving Coarse-Resolution Leaf Area Index for Mixed Biomes Using a Mixed-Pixel Correction Factor

Yadong Dong, Jing Li, Ziti Jiao, Qinhuo Liu, Jing Zhao, Baodong Xu, Hu Zhang, Zhaoxing Zhang, Chang Liu, Yuri Knyazikhin, Ranga B. Myneni

2023IEEE Transactions on Geoscience and Remote Sensing25 citationsDOI

Abstract

The leaf area index (LAI) is a key structural parameter of vegetation canopies. Accordingly, several moderate-resolution global LAI products have been produced and widely used in the field of remote sensing. However, the accuracy of the current moderate-resolution global LAI products cannot satisfy the requirements recommended by the LAI application communities, especially in heterogeneous areas composed of mixed land cover types. In this study, we propose a mixed-pixel correction (MPC) method to improve the accuracy of LAI retrievals over heterogeneous areas by considering the influence of heterogeneity caused by the mixture of different biome types with the help of high-resolution land cover maps. The DART-simulated LAI, the aggregated Landsat LAI, and the site-based high-resolution LAI reference maps are used to evaluate the performance of the MPC method. The results indicate that the MPC method can reduce the influences of spatial heterogeneity and biome misclassification to obtain the LAI with much better accuracy than the Moderate Resolution Imaging Spectroradiometer (MODIS) main algorithm, given that the high-resolution land cover map is accurate. The root mean square error (RMSE) (bias) decreases from 0.749 (0.486) to 0.414 (0.087), while the R2 increases from 0.084 to 0.524, and the proportion of pixels that fulfill the uncertainty requirement of the GCOS increases from 38.2% to 84.6% for the results of site-based high-resolution LAI reference maps. Spatially explicit information about vegetation fractional cover can further reduce uncertainties induced by variations in canopy density for the results of DART simulated data. The proposed method shows potential for improving global moderate-resolution LAI products.

Topics & Concepts

Leaf area indexBiomeRemote sensingLand coverModerate-resolution imaging spectroradiometerImage resolutionVegetation (pathology)PixelEnvironmental scienceMean squared errorCanopySpectroradiometerEnhanced vegetation indexNormalized Difference Vegetation IndexVegetation IndexComputer scienceLand useMathematicsStatisticsGeographyReflectivityEcosystemSatelliteEngineeringOpticsAerospace engineeringEcologyComputer visionPathologyMedicinePhysicsArchaeologyArtificial intelligenceBiologyCivil engineeringRemote Sensing in AgricultureLeaf Properties and Growth MeasurementRemote Sensing and LiDAR Applications
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