Automated method for measuring the extent of selective logging damage with airborne LiDAR data

Selective logging has an impact on the global carbon cycle, as well as on the forest micro-climate, and longer-term changes in erosion, soil and nutrient cycling, and fire susceptibility. Our ability to quantify these impacts is dependent on methods and tools that accurately identify the extent and...

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Bibliographic Details
Published in:ISPRS journal of photogrammetry and remote sensing Vol. 139; pp. 228 - 240
Main Authors: Melendy, L., Hagen, S.C., Sullivan, F.B., Pearson, T.R.H., Walker, S.M., Ellis, P., Kustiyo, Sambodo, Ari Katmoko, Roswintiarti, O., Hanson, M.A., Klassen, A.W., Palace, M.W., Braswell, B.H., Delgado, G.M.
Format: Journal Article
Language:English
Published: Elsevier B.V 01-05-2018
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Summary:Selective logging has an impact on the global carbon cycle, as well as on the forest micro-climate, and longer-term changes in erosion, soil and nutrient cycling, and fire susceptibility. Our ability to quantify these impacts is dependent on methods and tools that accurately identify the extent and features of logging activity. LiDAR-based measurements of these features offers significant promise. Here, we present a set of algorithms for automated detection and mapping of critical features associated with logging – roads/decks, skid trails, and gaps – using commercial airborne LiDAR data as input. The automated algorithm was applied to commercial LiDAR data collected over two logging concessions in Kalimantan, Indonesia in 2014. The algorithm results were compared to measurements of the logging features collected in the field soon after logging was complete. The automated algorithm-mapped road/deck and skid trail features match closely with features measured in the field, with agreement levels ranging from 69% to 99% when adjusting for GPS location error. The algorithm performed most poorly with gaps, which, by their nature, are variable due to the unpredictable impact of tree fall versus the linear and regular features directly created by mechanical means. Overall, the automated algorithm performs well and offers significant promise as a generalizable tool useful to efficiently and accurately capture the effects of selective logging, including the potential to distinguish reduced impact logging from conventional logging.
ISSN:0924-2716
1872-8235
DOI:10.1016/j.isprsjprs.2018.02.022