2002
DOI: 10.1016/s0034-4257(02)00047-0
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Multiscale analysis and validation of the MODIS LAI productI. Uncertainty assessment

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Cited by 174 publications
(118 citation statements)
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“…. on between these two biomes does not cause large errors (<0.30), which is consistent with deterministic findings from earlier LAI collections [21,30,31].…”
Section: Misclassification Induced Lai Errors (Mies)supporting
confidence: 90%
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“…. on between these two biomes does not cause large errors (<0.30), which is consistent with deterministic findings from earlier LAI collections [21,30,31].…”
Section: Misclassification Induced Lai Errors (Mies)supporting
confidence: 90%
“…Confidence in our results will be enhanced when data for the proportion of the secondary biome becomes available. Information about the fractional vegetation cover (FVC) can be explored to study the impact on LAI retrievals [31]. The effects of FVC will be quantified when the full MODIS vegetation continuous field (VCF) products (MOD44B), including the percentage of trees, grasses and bare ground, are refined (MODIS Land.…”
Section: Future Prospectsmentioning
confidence: 99%
“…This is particularly complex to achieve at the scale of medium and coarse resolution satellite sensor data due to land cover heterogeneity and poor spatial correspondence between ESU and image pixel as a result of geolocation errors [23][24][25]. Direct comparisons between estimates of a variable in the field and products derived from a satellite sensor data are feasible for large homogenous areas [26][27][28]. However, where the land surface landscape is heterogeneous, alternative validation approaches are required.…”
Section: Validation Of Eo-based Medium Spatial Resolution CCC Productsmentioning
confidence: 99%
“…However, where the land surface landscape is heterogeneous, alternative validation approaches are required. Several regional and global validation studies [26,29] have used fine spatial resolution remotely sensed data (10-30 m) to map biophysical variables as an intermediate step in scale between field biophysical estimates and medium or coarser spatial resolution satellite sensor imagery. For instance, validation of MERIS biophysical variables by the VALERI group (http://www.avignon.inra.fr/valeri/) involved first, establishing statistical 'transfer functions' between fine spatial resolution (e.g., 20 m) satellite sensor images and field biophysical estimates.…”
Section: Validation Of Eo-based Medium Spatial Resolution CCC Productsmentioning
confidence: 99%
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