Mapping Forest Canopy Height Across Large Areas by Upscaling ALS Estimates with Freely Available Satellite Data

Operational assessment of forest structure is an on-going challenge for land managers, particularly over large, remote or inaccessible areas. Here, we present an easily adopted method for generating a continuous map of canopy height at a 30 m resolution, demonstrated over 2.9 million hectares of hig...

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Main Authors: Phil Wilkes, Simon D. Jones, Lola Suarez, Andrew Mellor, William Woodgate, Mariela Soto-Berelov, Andrew Haywood, Andrew K. Skidmore
Format: Article
Language:English
Published: MDPI AG 2015-09-01
Series:Remote Sensing
Subjects:
ALS
Online Access:http://www.mdpi.com/2072-4292/7/9/12563
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spelling doaj-4d783709728746e5811b7d0ee540dc6a2020-11-24T21:04:07ZengMDPI AGRemote Sensing2072-42922015-09-0179125631258710.3390/rs70912563rs70912563Mapping Forest Canopy Height Across Large Areas by Upscaling ALS Estimates with Freely Available Satellite DataPhil Wilkes0Simon D. Jones1Lola Suarez2Andrew Mellor3William Woodgate4Mariela Soto-Berelov5Andrew Haywood6Andrew K. Skidmore7School of Mathematical and Geospatial Sciences, RMIT University, GPO Box 2476, Melbourne, VIC 3001, AustraliaSchool of Mathematical and Geospatial Sciences, RMIT University, GPO Box 2476, Melbourne, VIC 3001, AustraliaSchool of Mathematical and Geospatial Sciences, RMIT University, GPO Box 2476, Melbourne, VIC 3001, AustraliaSchool of Mathematical and Geospatial Sciences, RMIT University, GPO Box 2476, Melbourne, VIC 3001, AustraliaSchool of Mathematical and Geospatial Sciences, RMIT University, GPO Box 2476, Melbourne, VIC 3001, AustraliaSchool of Mathematical and Geospatial Sciences, RMIT University, GPO Box 2476, Melbourne, VIC 3001, AustraliaCooperative Research Centre for Spatial Information, Level 5, 204 Lygon Street, Carlton, VIC 3053, AustraliaITC, University of Twente, PO Box 217, NL-7000 AE Enschede, The NetherlandsOperational assessment of forest structure is an on-going challenge for land managers, particularly over large, remote or inaccessible areas. Here, we present an easily adopted method for generating a continuous map of canopy height at a 30 m resolution, demonstrated over 2.9 million hectares of highly heterogeneous forest (canopy height 0–70 m) in Victoria, Australia. A two-stage approach was utilized where Airborne Laser Scanning (ALS) derived canopy height, captured over ~18% of the study area, was used to train a regression tree ensemble method; random forest. Predictor variables, which have a global coverage and are freely available, included Landsat Thematic Mapper (Tasselled Cap transformed), Moderate Resolution Imaging Spectroradiometer Normalized Difference Vegetation Index time series, Shuttle Radar Topography Mission elevation data and other ancillary datasets. Reflectance variables were further processed to extract additional spatial and temporal contextual and textural variables. Modeled canopy height was validated following two approaches; (i) random sample cross validation; and (ii) with 108 inventory plots from outside the ALS capture extent. Both the cross validation and comparison with inventory data indicate canopy height can be estimated with a Root Mean Square Error (RMSE) of ≤ 31% (~5.6 m) at the 95th percentile confidence interval. Subtraction of the systematic component of model error, estimated from training data error residuals, rescaled canopy height values to more accurately represent the response variable distribution tails e.g., tall and short forest. Two further experiments were carried out to test the applicability and scalability of the presented method. Results suggest that (a) no improvement in canopy height estimation is achieved when models were constructed and validated for smaller geographic areas, suggesting there is no upper limit to model scalability; and (b) training data can be captured over a small percentage of the study area (~6%) if response and predictor variable variance is captured within the training cohort, however RMSE is higher than when compared to a stratified random sample.http://www.mdpi.com/2072-4292/7/9/12563canopy heightALSLandsatopen-sourcelarge area assessmentrandom forest
collection DOAJ
language English
format Article
sources DOAJ
author Phil Wilkes
Simon D. Jones
Lola Suarez
Andrew Mellor
William Woodgate
Mariela Soto-Berelov
Andrew Haywood
Andrew K. Skidmore
spellingShingle Phil Wilkes
Simon D. Jones
Lola Suarez
Andrew Mellor
William Woodgate
Mariela Soto-Berelov
Andrew Haywood
Andrew K. Skidmore
Mapping Forest Canopy Height Across Large Areas by Upscaling ALS Estimates with Freely Available Satellite Data
Remote Sensing
canopy height
ALS
Landsat
open-source
large area assessment
random forest
author_facet Phil Wilkes
Simon D. Jones
Lola Suarez
Andrew Mellor
William Woodgate
Mariela Soto-Berelov
Andrew Haywood
Andrew K. Skidmore
author_sort Phil Wilkes
title Mapping Forest Canopy Height Across Large Areas by Upscaling ALS Estimates with Freely Available Satellite Data
title_short Mapping Forest Canopy Height Across Large Areas by Upscaling ALS Estimates with Freely Available Satellite Data
title_full Mapping Forest Canopy Height Across Large Areas by Upscaling ALS Estimates with Freely Available Satellite Data
title_fullStr Mapping Forest Canopy Height Across Large Areas by Upscaling ALS Estimates with Freely Available Satellite Data
title_full_unstemmed Mapping Forest Canopy Height Across Large Areas by Upscaling ALS Estimates with Freely Available Satellite Data
title_sort mapping forest canopy height across large areas by upscaling als estimates with freely available satellite data
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2015-09-01
description Operational assessment of forest structure is an on-going challenge for land managers, particularly over large, remote or inaccessible areas. Here, we present an easily adopted method for generating a continuous map of canopy height at a 30 m resolution, demonstrated over 2.9 million hectares of highly heterogeneous forest (canopy height 0–70 m) in Victoria, Australia. A two-stage approach was utilized where Airborne Laser Scanning (ALS) derived canopy height, captured over ~18% of the study area, was used to train a regression tree ensemble method; random forest. Predictor variables, which have a global coverage and are freely available, included Landsat Thematic Mapper (Tasselled Cap transformed), Moderate Resolution Imaging Spectroradiometer Normalized Difference Vegetation Index time series, Shuttle Radar Topography Mission elevation data and other ancillary datasets. Reflectance variables were further processed to extract additional spatial and temporal contextual and textural variables. Modeled canopy height was validated following two approaches; (i) random sample cross validation; and (ii) with 108 inventory plots from outside the ALS capture extent. Both the cross validation and comparison with inventory data indicate canopy height can be estimated with a Root Mean Square Error (RMSE) of ≤ 31% (~5.6 m) at the 95th percentile confidence interval. Subtraction of the systematic component of model error, estimated from training data error residuals, rescaled canopy height values to more accurately represent the response variable distribution tails e.g., tall and short forest. Two further experiments were carried out to test the applicability and scalability of the presented method. Results suggest that (a) no improvement in canopy height estimation is achieved when models were constructed and validated for smaller geographic areas, suggesting there is no upper limit to model scalability; and (b) training data can be captured over a small percentage of the study area (~6%) if response and predictor variable variance is captured within the training cohort, however RMSE is higher than when compared to a stratified random sample.
topic canopy height
ALS
Landsat
open-source
large area assessment
random forest
url http://www.mdpi.com/2072-4292/7/9/12563
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