Improved Object-Based Estimation of Forest Aboveground Biomass by Integrating LiDAR Data from GEDI and ICESat-2 with Multi-Sensor Images in a Heterogeneous Mountainous Region

Accurate and effective mapping of forest aboveground biomass (AGB) in heterogeneous mountainous regions is a huge challenge but an urgent demand for resource managements and carbon storage monitoring. Conventional studies have related the plot-measured or LiDAR-based biomass to remote sensing data u...

Full description

Bibliographic Details
Main Authors: Lin Chen, Chunying Ren, Guangdao Bao, Bai Zhang, Zongming Wang, Mingyue Liu, Weidong Man, Jiafu Liu
Format: Article
Language:English
Published: MDPI AG 2022-06-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/14/12/2743
_version_ 1797482736659726336
author Lin Chen
Chunying Ren
Guangdao Bao
Bai Zhang
Zongming Wang
Mingyue Liu
Weidong Man
Jiafu Liu
author_facet Lin Chen
Chunying Ren
Guangdao Bao
Bai Zhang
Zongming Wang
Mingyue Liu
Weidong Man
Jiafu Liu
author_sort Lin Chen
collection DOAJ
description Accurate and effective mapping of forest aboveground biomass (AGB) in heterogeneous mountainous regions is a huge challenge but an urgent demand for resource managements and carbon storage monitoring. Conventional studies have related the plot-measured or LiDAR-based biomass to remote sensing data using pixel-based approaches. The object-based relationship between AGB and multi-source data from LiDAR, multi-frequency radar, and optical sensors were insufficiently studied. It deserves the further exploration that maps forest AGB using the object-based approach and combines LiDAR data with multi-sensor images, which has the smaller uncertainty of positional discrepancy and local heterogeneity, in heterogeneous mountainous regions. To address the improvement of mapping accuracy, satellite LiDAR data from GEDI and ICEsat-2, and images of ALOS-2 yearly mosaic L band SAR (Synthetic Aperture Radar), Sentinel-1 C band SAR, Sentinel-2 MSI, and ALOS-1 DSM were combined for pixel- and object-based forest AGB mapping in a vital heterogeneous mountainous forest. For the object-based approach, optimized objects during a multiresolution segmentation were acquired by the ESP (Estimation of the Scale Parameter) tool, and suitable predictors were selected using an algorithm named VSURF (Variable Selection Using Random Forests). The LiDAR variables at the footprint-level were extracted to connect field plots to the multi-sensor objects as a linear bridge. It was shown that forests’ AGB values varied by elevations with a mean value of 142.58 Mg/ha, ranging from 12.61 to 514.28 Mg/ha. The north slope with the lowest elevation (<1100 m) had the largest mean AGB, while the smallest mean AGB was located in the south slope with the altitude above 2000 m. Using independent validation samples, it was indicated by the accuracy comparison that the object-based approach performed better on the precision with relative improvement based on root-mean-square errors (RI<sub>RMSE</sub>) of 4.46%. The object-based approach also selected more optimized predictors and markedly decreased the prediction time than the pixel-based analysis. Canopy cover and height explained forest AGB with their effects on biomass varying according to the elevation. The elevation from DSM and variables involved in red-edge bands from MSI were the most contributive predictors in heterogeneous temperate forests. This study is a pioneering exploration of object-based AGB mapping by combining satellite data from LiDAR, MSI, and SAR, which offers an improved methodology for regional carbon mapping in the heterogeneous mountainous forests.
first_indexed 2024-03-09T22:37:45Z
format Article
id doaj.art-68f551d3285f4341bcae94bd8ad7b3d6
institution Directory Open Access Journal
issn 2072-4292
language English
last_indexed 2024-03-09T22:37:45Z
publishDate 2022-06-01
publisher MDPI AG
record_format Article
series Remote Sensing
spelling doaj.art-68f551d3285f4341bcae94bd8ad7b3d62023-11-23T18:46:05ZengMDPI AGRemote Sensing2072-42922022-06-011412274310.3390/rs14122743Improved Object-Based Estimation of Forest Aboveground Biomass by Integrating LiDAR Data from GEDI and ICESat-2 with Multi-Sensor Images in a Heterogeneous Mountainous RegionLin Chen0Chunying Ren1Guangdao Bao2Bai Zhang3Zongming Wang4Mingyue Liu5Weidong Man6Jiafu Liu7Institute of Remote Sensing and Earth Sciences, Hangzhou Normal University, Zhejiang Provincial Key Laboratory of Urban Wetlands and Regional Change, Hangzhou 311121, ChinaKey Laboratory of Wetland Ecology and Environment, Northeast Institute of Geography and Agroecology, Chinese Academy of Sciences, Changchun 130102, ChinaJilin Provincial Academy of Forestry Sciences, Changchun 130033, ChinaKey Laboratory of Wetland Ecology and Environment, Northeast Institute of Geography and Agroecology, Chinese Academy of Sciences, Changchun 130102, ChinaKey Laboratory of Wetland Ecology and Environment, Northeast Institute of Geography and Agroecology, Chinese Academy of Sciences, Changchun 130102, ChinaHebei Key Laboratory of Mining Development and Security Technology, Hebei Industrial Technology Institute of Mine Ecological Remediation, College of Mining Engineering, North China University of Science and Technology, Tangshan 063210, ChinaHebei Key Laboratory of Mining Development and Security Technology, Hebei Industrial Technology Institute of Mine Ecological Remediation, College of Mining Engineering, North China University of Science and Technology, Tangshan 063210, ChinaCollege of Tourism and Geographic Sciences, Jilin Normal University, Siping 136000, ChinaAccurate and effective mapping of forest aboveground biomass (AGB) in heterogeneous mountainous regions is a huge challenge but an urgent demand for resource managements and carbon storage monitoring. Conventional studies have related the plot-measured or LiDAR-based biomass to remote sensing data using pixel-based approaches. The object-based relationship between AGB and multi-source data from LiDAR, multi-frequency radar, and optical sensors were insufficiently studied. It deserves the further exploration that maps forest AGB using the object-based approach and combines LiDAR data with multi-sensor images, which has the smaller uncertainty of positional discrepancy and local heterogeneity, in heterogeneous mountainous regions. To address the improvement of mapping accuracy, satellite LiDAR data from GEDI and ICEsat-2, and images of ALOS-2 yearly mosaic L band SAR (Synthetic Aperture Radar), Sentinel-1 C band SAR, Sentinel-2 MSI, and ALOS-1 DSM were combined for pixel- and object-based forest AGB mapping in a vital heterogeneous mountainous forest. For the object-based approach, optimized objects during a multiresolution segmentation were acquired by the ESP (Estimation of the Scale Parameter) tool, and suitable predictors were selected using an algorithm named VSURF (Variable Selection Using Random Forests). The LiDAR variables at the footprint-level were extracted to connect field plots to the multi-sensor objects as a linear bridge. It was shown that forests’ AGB values varied by elevations with a mean value of 142.58 Mg/ha, ranging from 12.61 to 514.28 Mg/ha. The north slope with the lowest elevation (<1100 m) had the largest mean AGB, while the smallest mean AGB was located in the south slope with the altitude above 2000 m. Using independent validation samples, it was indicated by the accuracy comparison that the object-based approach performed better on the precision with relative improvement based on root-mean-square errors (RI<sub>RMSE</sub>) of 4.46%. The object-based approach also selected more optimized predictors and markedly decreased the prediction time than the pixel-based analysis. Canopy cover and height explained forest AGB with their effects on biomass varying according to the elevation. The elevation from DSM and variables involved in red-edge bands from MSI were the most contributive predictors in heterogeneous temperate forests. This study is a pioneering exploration of object-based AGB mapping by combining satellite data from LiDAR, MSI, and SAR, which offers an improved methodology for regional carbon mapping in the heterogeneous mountainous forests.https://www.mdpi.com/2072-4292/14/12/2743GEDI LiDARICESAT-2 LiDARobject-based approachheterogeneous mountainous forestsforest aboveground biomass
spellingShingle Lin Chen
Chunying Ren
Guangdao Bao
Bai Zhang
Zongming Wang
Mingyue Liu
Weidong Man
Jiafu Liu
Improved Object-Based Estimation of Forest Aboveground Biomass by Integrating LiDAR Data from GEDI and ICESat-2 with Multi-Sensor Images in a Heterogeneous Mountainous Region
Remote Sensing
GEDI LiDAR
ICESAT-2 LiDAR
object-based approach
heterogeneous mountainous forests
forest aboveground biomass
title Improved Object-Based Estimation of Forest Aboveground Biomass by Integrating LiDAR Data from GEDI and ICESat-2 with Multi-Sensor Images in a Heterogeneous Mountainous Region
title_full Improved Object-Based Estimation of Forest Aboveground Biomass by Integrating LiDAR Data from GEDI and ICESat-2 with Multi-Sensor Images in a Heterogeneous Mountainous Region
title_fullStr Improved Object-Based Estimation of Forest Aboveground Biomass by Integrating LiDAR Data from GEDI and ICESat-2 with Multi-Sensor Images in a Heterogeneous Mountainous Region
title_full_unstemmed Improved Object-Based Estimation of Forest Aboveground Biomass by Integrating LiDAR Data from GEDI and ICESat-2 with Multi-Sensor Images in a Heterogeneous Mountainous Region
title_short Improved Object-Based Estimation of Forest Aboveground Biomass by Integrating LiDAR Data from GEDI and ICESat-2 with Multi-Sensor Images in a Heterogeneous Mountainous Region
title_sort improved object based estimation of forest aboveground biomass by integrating lidar data from gedi and icesat 2 with multi sensor images in a heterogeneous mountainous region
topic GEDI LiDAR
ICESAT-2 LiDAR
object-based approach
heterogeneous mountainous forests
forest aboveground biomass
url https://www.mdpi.com/2072-4292/14/12/2743
work_keys_str_mv AT linchen improvedobjectbasedestimationofforestabovegroundbiomassbyintegratinglidardatafromgediandicesat2withmultisensorimagesinaheterogeneousmountainousregion
AT chunyingren improvedobjectbasedestimationofforestabovegroundbiomassbyintegratinglidardatafromgediandicesat2withmultisensorimagesinaheterogeneousmountainousregion
AT guangdaobao improvedobjectbasedestimationofforestabovegroundbiomassbyintegratinglidardatafromgediandicesat2withmultisensorimagesinaheterogeneousmountainousregion
AT baizhang improvedobjectbasedestimationofforestabovegroundbiomassbyintegratinglidardatafromgediandicesat2withmultisensorimagesinaheterogeneousmountainousregion
AT zongmingwang improvedobjectbasedestimationofforestabovegroundbiomassbyintegratinglidardatafromgediandicesat2withmultisensorimagesinaheterogeneousmountainousregion
AT mingyueliu improvedobjectbasedestimationofforestabovegroundbiomassbyintegratinglidardatafromgediandicesat2withmultisensorimagesinaheterogeneousmountainousregion
AT weidongman improvedobjectbasedestimationofforestabovegroundbiomassbyintegratinglidardatafromgediandicesat2withmultisensorimagesinaheterogeneousmountainousregion
AT jiafuliu improvedobjectbasedestimationofforestabovegroundbiomassbyintegratinglidardatafromgediandicesat2withmultisensorimagesinaheterogeneousmountainousregion