USING THE TWO-LEVEL MODEL WITH TANDEM-X FOR LARGE-SCALE FOREST MAPPING

This study applies the two-level model to predict stem volume (VOL), presented as wall-to-wall rasters. The SAR data were acquired with the TanDEM-X system and 518 scenes covered the entire Sweden. For comparison, a multiple linear regression model is also evaluated. Compared to earlier studies, the...

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Published in:IGARSS 2019 - 2019 IEEE International Geoscience and Remote Sensing Symposium
Main Authors: Persson, Henrik J., Soja, Maciej J., Fransson, Johan E. S., Ulander, Lars
Language:unknown
Published: 2019
Subjects:
Online Access:https://doi.org/10.1109/IGARSS.2019.8899886
https://research.chalmers.se/en/publication/516361
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author Persson, Henrik J.
Soja, Maciej J.
Fransson, Johan E. S.
Ulander, Lars
author_facet Persson, Henrik J.
Soja, Maciej J.
Fransson, Johan E. S.
Ulander, Lars
author_sort Persson, Henrik J.
collection Unknown
container_start_page 4484
container_title IGARSS 2019 - 2019 IEEE International Geoscience and Remote Sensing Symposium
description This study applies the two-level model to predict stem volume (VOL), presented as wall-to-wall rasters. The SAR data were acquired with the TanDEM-X system and 518 scenes covered the entire Sweden. For comparison, a multiple linear regression model is also evaluated. Compared to earlier studies, the model parameters are fitted separately for each satellite scene. The prediction accuracy at the stand-level is evaluated using field inventoried reference stands within one scene, located in Northern Sweden and provided by a Swedish forest company. The results from the two models were similar, with an RMSE of 34.8 m(3)/ha and 32.9 m(3)/ha at the stand-level, respectively, and the corresponding biases were 14.3 m(3)/ha and 12.1 m(3)/ha. The error is significantly lower, compared to a previous study (52-65 m(3)/ha) where a universal multiple linear regression model was used for all scenes. It can be concluded, that using model parameters fitted at the local scene appears to improve the prediction performance in terms of RMSE, but no significant difference could be determined between predictions based on the two-level model or multiple linear regression, evaluated in this study.
genre Northern Sweden
genre_facet Northern Sweden
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op_container_end_page 4487
op_doi https://doi.org/10.1109/IGARSS.2019.8899886
op_relation http://dx.doi.org/10.1109/IGARSS.2019.8899886
https://research.chalmers.se/en/publication/516361
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spelling ftchalmersuniv:oai:research.chalmers.se:516361 2025-06-15T14:44:29+00:00 USING THE TWO-LEVEL MODEL WITH TANDEM-X FOR LARGE-SCALE FOREST MAPPING Persson, Henrik J. Soja, Maciej J. Fransson, Johan E. S. Ulander, Lars 2019 text https://doi.org/10.1109/IGARSS.2019.8899886 https://research.chalmers.se/en/publication/516361 unknown http://dx.doi.org/10.1109/IGARSS.2019.8899886 https://research.chalmers.se/en/publication/516361 Remote Sensing Electrical Engineering Electronic Engineering Information Engineering InSAR TanDEM-X national mapping stem volume forest 2019 ftchalmersuniv https://doi.org/10.1109/IGARSS.2019.8899886 2025-05-19T04:26:15Z This study applies the two-level model to predict stem volume (VOL), presented as wall-to-wall rasters. The SAR data were acquired with the TanDEM-X system and 518 scenes covered the entire Sweden. For comparison, a multiple linear regression model is also evaluated. Compared to earlier studies, the model parameters are fitted separately for each satellite scene. The prediction accuracy at the stand-level is evaluated using field inventoried reference stands within one scene, located in Northern Sweden and provided by a Swedish forest company. The results from the two models were similar, with an RMSE of 34.8 m(3)/ha and 32.9 m(3)/ha at the stand-level, respectively, and the corresponding biases were 14.3 m(3)/ha and 12.1 m(3)/ha. The error is significantly lower, compared to a previous study (52-65 m(3)/ha) where a universal multiple linear regression model was used for all scenes. It can be concluded, that using model parameters fitted at the local scene appears to improve the prediction performance in terms of RMSE, but no significant difference could be determined between predictions based on the two-level model or multiple linear regression, evaluated in this study. Other/Unknown Material Northern Sweden Unknown IGARSS 2019 - 2019 IEEE International Geoscience and Remote Sensing Symposium 4484 4487
spellingShingle Remote Sensing
Electrical Engineering
Electronic Engineering
Information Engineering
InSAR
TanDEM-X
national mapping
stem volume
forest
Persson, Henrik J.
Soja, Maciej J.
Fransson, Johan E. S.
Ulander, Lars
USING THE TWO-LEVEL MODEL WITH TANDEM-X FOR LARGE-SCALE FOREST MAPPING
title USING THE TWO-LEVEL MODEL WITH TANDEM-X FOR LARGE-SCALE FOREST MAPPING
title_full USING THE TWO-LEVEL MODEL WITH TANDEM-X FOR LARGE-SCALE FOREST MAPPING
title_fullStr USING THE TWO-LEVEL MODEL WITH TANDEM-X FOR LARGE-SCALE FOREST MAPPING
title_full_unstemmed USING THE TWO-LEVEL MODEL WITH TANDEM-X FOR LARGE-SCALE FOREST MAPPING
title_short USING THE TWO-LEVEL MODEL WITH TANDEM-X FOR LARGE-SCALE FOREST MAPPING
title_sort using the two-level model with tandem-x for large-scale forest mapping
topic Remote Sensing
Electrical Engineering
Electronic Engineering
Information Engineering
InSAR
TanDEM-X
national mapping
stem volume
forest
topic_facet Remote Sensing
Electrical Engineering
Electronic Engineering
Information Engineering
InSAR
TanDEM-X
national mapping
stem volume
forest
url https://doi.org/10.1109/IGARSS.2019.8899886
https://research.chalmers.se/en/publication/516361