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Synthesizing Disparate LiDAR and Satellite Datasets through Deep Learning to Generate Wall-to-Wall Regional Inventories for the Complex, Mixed-Species Forests of the Eastern United StatesLight detection and ranging (LiDAR) has become a commonly-used tool for generating remotely-sensed forest inventories. However, LiDAR-derived forest inventories have remained uncommon at a regional scale due to varying parameters among LiDAR data acquisitions and the availability of sufficient calibration data. Here, we present a model using a 3-D convolutional neural network (CNN), a form of deep learning capable of scanning a LiDAR point cloud, combined with coincident satellite data (spectral, phenology, and disturbance history). We compared this approach to traditional modeling used for making forest predictions from LiDAR data (height metrics and random forest) and found that the CNN had consistently lower uncertainty. We then applied the CNN to public data over six New England states in the USA, generating maps of 14 forest attributes at a 10 m resolution over 85% of the region. Aboveground biomass estimates produced a root mean square error of 36 Mg ha−1 (44%) and were within the 97.5% confidence of independent county-level estimates for 33 of 38 or 86.8% of the counties examined. CNN predictions for stem density and percentage of conifer attributes were moderately successful, while predictions for detailed species groupings were less successful. The approach shows promise for improving the prediction of forest attributes from regional LiDAR data and for combining disparate LiDAR datasets into a common framework for large-scale estimation.
Document ID
20220006420
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
Authors
Elias Ayrey
(Pachama, Inc.)
Daniel J Hayes
(University of Maine Orono, Maine, United States)
John B Kilbride
(Oregon State University Corvallis, Oregon, United States)
Shawn Fraver
(University of Maine Orono, Maine, United States)
John A Kershaw, Jr.
(University of New Brunswick Fredericton, New Brunswick, Canada)
Bruce D Cook
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Aaron R Weiskittel
(University of Maine Orono, Maine, United States)
Date Acquired
April 26, 2022
Publication Date
December 16, 2021
Publication Information
Publication: Remote Sensing
Publisher: MDPI
Volume: 13
Issue: 24
Issue Publication Date: December 16, 2021
e-ISSN: 2072-4292
Subject Category
Earth Resources And Remote Sensing
Funding Number(s)
WBS: 217140.04.01.01.13
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
External Peer Committee
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