Today, non-expensive remote sensing (RS) data from different sensors and platforms can be obtained at short intervals and be used for assessing several kinds of forest characteristics at the level of plots, stands and landscapes. Methods such as composite estimation and data assimilation can be used for combining the different sources of information to obtain up-to-date and precise estimates of the characteristics of interest. In composite estimation a standard procedure is to assign weights to the different individual estimates inversely proportional to their variance. However, in case the estimates are correlated, the correlations must be considered in assigning weights or otherwise a composite estimator may be inefficient and its varianc...
Data assimilation techniques were used to estimate forest stand data in 2011 by sequentially combini...
A two-level model (TLM) is introduced and investigated for the estimation of forest height and canop...
With the rise in high resolution remote sensing technologies there has been an explosion in the amou...
Today, non-expensive remote sensing (RS) data from different sensors and platforms can be obtained a...
There is a continuous need for accurate forest description. Forest data at stand level is required i...
Data assimilation (DA) is often used for merging observations to improve the predictions of the curr...
The statistical framework of data assimilation provides methods for utilizing new data for obtaining...
This discussion paper addresses (1) the challenge of concisely reporting uncertainties in forest rem...
Field inventoried data are often used as references (ground truth) in forest remote sensing studies....
Individual trees have been shown to exhibit strong relationships between DBH, height and volume. Oft...
It is important to monitor forests in order to understand the impacts of global climate changes on t...
Approaches to deriving forest information from laser scanner data have generally made use of two met...
Airborne Laser Scanning (ALS) has implied a disruptive transformation of how data are gathered for f...
Data assimilation techniques were used to estimate forest stand data in 2011 by sequentially combini...
A two-level model (TLM) is introduced and investigated for the estimation of forest height and canop...
With the rise in high resolution remote sensing technologies there has been an explosion in the amou...
Today, non-expensive remote sensing (RS) data from different sensors and platforms can be obtained a...
There is a continuous need for accurate forest description. Forest data at stand level is required i...
Data assimilation (DA) is often used for merging observations to improve the predictions of the curr...
The statistical framework of data assimilation provides methods for utilizing new data for obtaining...
This discussion paper addresses (1) the challenge of concisely reporting uncertainties in forest rem...
Field inventoried data are often used as references (ground truth) in forest remote sensing studies....
Individual trees have been shown to exhibit strong relationships between DBH, height and volume. Oft...
It is important to monitor forests in order to understand the impacts of global climate changes on t...
Approaches to deriving forest information from laser scanner data have generally made use of two met...
Airborne Laser Scanning (ALS) has implied a disruptive transformation of how data are gathered for f...
Data assimilation techniques were used to estimate forest stand data in 2011 by sequentially combini...
A two-level model (TLM) is introduced and investigated for the estimation of forest height and canop...
With the rise in high resolution remote sensing technologies there has been an explosion in the amou...