Advances in Remote Sensing for Global Forest Monitoring

The topics of the book cover forest parameter estimation, methods to assess land cover and change, forest disturbances and degradation, and forest soil drought estimations. Airborne laser scanner data, aerial images, as well as data from passive and active sensors of different spatial, spectral and...

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Year of Publication:2021
Language:English
Physical Description:1 electronic resource (352 p.)
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245 1 0 |a Advances in Remote Sensing for Global Forest Monitoring 
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520 |a The topics of the book cover forest parameter estimation, methods to assess land cover and change, forest disturbances and degradation, and forest soil drought estimations. Airborne laser scanner data, aerial images, as well as data from passive and active sensors of different spatial, spectral and temporal resolutions have been utilized. Parametric and non-parametric methods including machine and deep learning methods have been employed. Uncertainty estimation is a key topic in each study. In total, 15 articles are included, of which one is a review article dealing with methods employed in remote sensing aided greenhouse gas inventories, and one is the Editorial summary presenting a short review of each article. 
546 |a English 
650 7 |a Research & information: general  |2 bicssc 
650 7 |a Environmental economics  |2 bicssc 
653 |a forest structure change 
653 |a EBLUP 
653 |a small area estimation 
653 |a multitemporal LiDAR and stand-level estimates 
653 |a forest cover 
653 |a Sentinel-1 
653 |a Sentinel-2 
653 |a data fusion 
653 |a machine-learning 
653 |a Germany 
653 |a South Africa 
653 |a temperate forest 
653 |a savanna 
653 |a classification 
653 |a Sentinel 2 
653 |a land use land cover 
653 |a improved k-NN 
653 |a logistic regression 
653 |a random forest 
653 |a support vector machine 
653 |a statistical estimator 
653 |a IPCC good practice guidelines 
653 |a activity data 
653 |a emissions factor 
653 |a removals factor 
653 |a Picea crassifolia Kom 
653 |a compatible equation 
653 |a nonlinear seemingly unrelated regression 
653 |a error-in-variable modeling 
653 |a leave-one-out cross-validation 
653 |a digital surface model 
653 |a digital terrain model 
653 |a canopy height model 
653 |a constrained neighbor interpolation 
653 |a ordinary neighbor interpolation 
653 |a point cloud density 
653 |a stereo imagery 
653 |a remotely sensed LAI 
653 |a field measured LAI 
653 |a validation 
653 |a magnitude 
653 |a uncertainty 
653 |a temporal dynamics 
653 |a state space models 
653 |a forest disturbance mapping 
653 |a near real-time monitoring 
653 |a CUSUM 
653 |a NRT monitoring 
653 |a deforestation 
653 |a degradation 
653 |a tropical forest 
653 |a tropical peat 
653 |a forest type 
653 |a deep learning 
653 |a FCN8s 
653 |a CRFasRNN 
653 |a GF2 
653 |a dual-FCN8s 
653 |a random forests 
653 |a error propagation 
653 |a bootstrapping 
653 |a Landsat 
653 |a LiDAR 
653 |a La Rioja 
653 |a forest area change 
653 |a data assessment 
653 |a uncertainty evaluation 
653 |a inconsistency 
653 |a forest monitoring 
653 |a drought 
653 |a time series satellite data 
653 |a Bowen ratio 
653 |a carbon flux 
653 |a boreal forest 
653 |a windstorm damage 
653 |a synthetic aperture radar 
653 |a C-band 
653 |a genetic algorithm 
653 |a multinomial logistic regression 
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700 1 |a Praks, Jaan  |4 edt 
700 1 |a Wang, Guangxing  |4 edt 
700 1 |a Waser, Lars T.  |4 edt 
700 1 |a Tomppo, Erkki  |4 oth 
700 1 |a Praks, Jaan  |4 oth 
700 1 |a Wang, Guangxing  |4 oth 
700 1 |a Waser, Lars T.  |4 oth 
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