Remote sensing technologies for enhancing forest inventories: a review
Remote sensing technologies for enhancing forest inventories: a review
Forest inventory and management requirements are changing rapidly in the context of an increasingly complex set of economic, environmental, and social policy objectives. Advanced remote sensing technologies provide data to assist in addressing these escalating information needs and to support the subsequent development and parameterization of models for an even broader range of information needs. This special issue contains papers that use a variety of remote sensing technologies to derive forest inventory or inventory-related information. Herein, we review the potential of 4 advanced remote sensing technologies, which we posit as having the greatest potential to influence forest inventories designed to characterize forest resource information for strategic, tactical, and operational planning: airborne laser scanning (ALS), terrestrial laser scanning (TLS), digital aerial photogrammetry (DAP), and high spatial resolution (HSR)/very high spatial resolution (VHSR) satellite optical imagery. ALS, in particular, has proven to be a transformative technology, offering forest inventories the required spatial detail and accuracy across large areas and a diverse range of forest types. The coupling of DAP with ALS technologies will likely have the greatest impact on forest inventory practices in the next decade, providing capacity for a broader suite of attributes, as well as for monitoring growth over time.
1-23
White, J.C.
2a3dffea-5fa9-4065-9e4d-34b7abafa1a0
Coops, N.C.
b10725db-8b4c-4338-92b8-ead49cebc80e
Wulder, M.A.
e9b0e7a1-494e-40cf-a1e5-20f487f6c6ff
Vastaranta, M.
50bfb197-f24a-4498-a1ea-f6874fe81669
Hilker, T.
c7fb75b8-320d-49df-84ba-96c9ee523d40
Tompalski, P.
bf36f235-126c-4587-a491-60b002febc1d
White, J.C.
2a3dffea-5fa9-4065-9e4d-34b7abafa1a0
Coops, N.C.
b10725db-8b4c-4338-92b8-ead49cebc80e
Wulder, M.A.
e9b0e7a1-494e-40cf-a1e5-20f487f6c6ff
Vastaranta, M.
50bfb197-f24a-4498-a1ea-f6874fe81669
Hilker, T.
c7fb75b8-320d-49df-84ba-96c9ee523d40
Tompalski, P.
bf36f235-126c-4587-a491-60b002febc1d
White, J.C., Coops, N.C., Wulder, M.A., Vastaranta, M., Hilker, T. and Tompalski, P.
(2016)
Remote sensing technologies for enhancing forest inventories: a review.
Canadian Journal of Remote Sensing: Journal canadien de télédétection, .
(doi:10.1080/07038992.2016.1207484).
Abstract
Forest inventory and management requirements are changing rapidly in the context of an increasingly complex set of economic, environmental, and social policy objectives. Advanced remote sensing technologies provide data to assist in addressing these escalating information needs and to support the subsequent development and parameterization of models for an even broader range of information needs. This special issue contains papers that use a variety of remote sensing technologies to derive forest inventory or inventory-related information. Herein, we review the potential of 4 advanced remote sensing technologies, which we posit as having the greatest potential to influence forest inventories designed to characterize forest resource information for strategic, tactical, and operational planning: airborne laser scanning (ALS), terrestrial laser scanning (TLS), digital aerial photogrammetry (DAP), and high spatial resolution (HSR)/very high spatial resolution (VHSR) satellite optical imagery. ALS, in particular, has proven to be a transformative technology, offering forest inventories the required spatial detail and accuracy across large areas and a diverse range of forest types. The coupling of DAP with ALS technologies will likely have the greatest impact on forest inventory practices in the next decade, providing capacity for a broader suite of attributes, as well as for monitoring growth over time.
Text
29_07_2016_Remote Sen.pdf
- Version of Record
Available under License Other.
More information
Accepted/In Press date: 8 March 2016
e-pub ahead of print date: 27 July 2016
Organisations:
Earth Surface Dynamics
Identifiers
Local EPrints ID: 397764
URI: http://eprints.soton.ac.uk/id/eprint/397764
ISSN: 0703-8992
PURE UUID: 276dcb88-fcff-49ac-b997-e9460ee8edbb
Catalogue record
Date deposited: 29 Jul 2016 10:57
Last modified: 15 Mar 2024 01:22
Export record
Altmetrics
Contributors
Author:
J.C. White
Author:
N.C. Coops
Author:
M.A. Wulder
Author:
M. Vastaranta
Author:
T. Hilker
Author:
P. Tompalski
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics