Field inventoried data are often used as references (ground truth) in forest remote sensing studies. However, the reference values are affected by various kinds of errors, which tend to make the reported accuracies of the remote sensing-based predictions worse than they are. The more accurate the remote sensing techniques are becoming, the more pronounced this problem will be. This paper addresses the impact of uncertainties in field reference data due to measurement errors, model errors, and position errors when evaluating the accuracy of biomass predictions from airborne laser scanning at plot level. We present novel theoretical analysis methods that take the interactions of the error sources into account. Further, an error characterizati...
Abstract Background The increasing availability of remotely sensed data has recently challenged the ...
This study investigated the influence of sampling design parameters on biomass prediction accuracy o...
Remote sensing-assisted estimates of aboveground forest biomass are essential for modeling carbon bu...
Field inventoried data are often used as references (ground truth) in forest remote sensing studies....
This discussion paper addresses (1) the challenge of concisely reporting uncertainties in forest rem...
Quantifying the uncertainty of the aboveground biomass (AGB) and carbon (C) stock is crucial for und...
Graduation date: 2015Broad-scale estimates of above ground forest biomass (AGB) are typically produc...
Forest biomass monitoring is at the core of the research agenda due to the critical importance of fo...
Forest biomass monitoring is at the core of the research agenda due to the critical importance of fo...
To the best of our knowledge, one or more authors of this paper were federal employees when contribu...
The evaluation of accuracy is essential for assuring the reliability of ecological models. Usually, ...
Estimates of above ground biomass density in forests are crucial for refining global climate models ...
In estimating aboveground forest biomass (AGB), three sources of error that interact and propagate i...
Uncertainty in above ground forest biomass (AGB) estimates at broad-scale depends primarily on three...
Abstract Background The increasing availability of remotely sensed data has recently challenged the ...
This study investigated the influence of sampling design parameters on biomass prediction accuracy o...
Remote sensing-assisted estimates of aboveground forest biomass are essential for modeling carbon bu...
Field inventoried data are often used as references (ground truth) in forest remote sensing studies....
This discussion paper addresses (1) the challenge of concisely reporting uncertainties in forest rem...
Quantifying the uncertainty of the aboveground biomass (AGB) and carbon (C) stock is crucial for und...
Graduation date: 2015Broad-scale estimates of above ground forest biomass (AGB) are typically produc...
Forest biomass monitoring is at the core of the research agenda due to the critical importance of fo...
Forest biomass monitoring is at the core of the research agenda due to the critical importance of fo...
To the best of our knowledge, one or more authors of this paper were federal employees when contribu...
The evaluation of accuracy is essential for assuring the reliability of ecological models. Usually, ...
Estimates of above ground biomass density in forests are crucial for refining global climate models ...
In estimating aboveground forest biomass (AGB), three sources of error that interact and propagate i...
Uncertainty in above ground forest biomass (AGB) estimates at broad-scale depends primarily on three...
Abstract Background The increasing availability of remotely sensed data has recently challenged the ...
This study investigated the influence of sampling design parameters on biomass prediction accuracy o...
Remote sensing-assisted estimates of aboveground forest biomass are essential for modeling carbon bu...