Remote sensing for continuous cover forestry: quantifying spatial structure and canopy gap distribution.
dc.contributor.advisor
Malthus, Tim
en
dc.contributor.author
Gaulton, Rachel
en
dc.date.accessioned
2010-05-19T13:45:27Z
dc.date.available
2010-05-19T13:45:27Z
dc.date.issued
2009
dc.description.abstract
The conversion of UK even-aged conifer plantations to continuous cover forestry (CCF), a
form of forest management that maintains forest cover over time and avoids clear-cutting,
requires more frequent and spatially explicit monitoring of forest structure than traditional
systems. Key aims of CCF management are to increase the spatial heterogeneity of
forest stands and to make increased use of natural regeneration, but judging success
in meeting these objectives and allowing an adaptive approach to management requires
information on spatial structure at a within-stand scale. Airborne remote sensing provides
an alternative approach to field survey and has potential to meet these monitoring needs
over large areas. An integral part of CCF is the creation of canopy gaps, allowing
regeneration by increasing understorey light levels. This study examined the use of
airborne lidar and passive optical data for the identification and characterisation of canopy
gaps within UK Sitka spruce (Picea sitchensis) plantations. The potential for using the
distribution of canopy and gaps within a stand to quantify spatial heterogeneity and allow
the detection of changes in spatial structure, between stands and over time, was assessed.
Detailed field surveys of six study plots, located in three UK spruce plantations, allowed
assessment of the accuracy of gap delineation from remotely sensed data. Airborne data
(multispectral, hyperspectral and lidar) were acquired for all sites. A novel approach
to the delineation of gaps from lidar data was developed, delineating gaps directly from
the lidar point cloud, avoiding the interpolation errors (and associated under-estimation
of gap area) resulting from conversion to a canopy height model. This method resulted
in improved accuracy of delineation compared to past techniques (overall accuracy of
78% compared to field gap delineations), especially when applied to lidar data collected
at relatively low point densities. However, lidar data can be costly to acquire and
provides little information about the presence of natural regeneration or other understorey
vegetation within gaps. For these reasons, the potential of passive optical (and in
particular, hyperspectral) data for gap delineation was also considered. The use of spectral
indices, based on shortwave infrared reflectance or hyperspectral characteristics of the red-
edge and chlorophyll absorption well, were shown to enhance the discrimination of canopy
and gap and reduce the influence of illumination conditions. An average overall accuracy
of 71% was obtained using hyperspectral characteristics for gap delineation, suggesting the use of optical data compares reasonably to results from lidar. Methods based on
shortwave infrared (SWIR) reflectance were shown to be sensitive to within gap vegetation
type, with SWIR reflectance being lower in the presence of natural regeneration. Potential
for using optical data to classify within gap vegetation type was also demonstrated.
Methods of quantifying spatial structure through the use of indices describing variations in
gap size, shape and distribution were found to allow the detection of structural differences
between stands and changes over time. Gap distribution based indices were also found
to be strongly related to alternative methods based on relative tree positions, suggesting
significant potential for consistent monitoring of structural changes during conversion
of plantations to CCF. Remotely sensed delineations of canopy gap distribution may
also allow spatially explicit modelling of understorey light conditions and potential for
regeneration, providing further information to aid the effective management of CCF
forests.
en
dc.identifier.uri
http://hdl.handle.net/1842/3419
dc.language.iso
en
dc.publisher
The University of Edinburgh
en
dc.subject
Geoscience
en
dc.subject
LIDAR
en
dc.subject
Geoscience
en
dc.subject
LIDAR
en
dc.subject
Global Change Research Institute
en
dc.title
Remote sensing for continuous cover forestry: quantifying spatial structure and canopy gap distribution.
en
dc.type
Thesis or Dissertation
en
dc.type.qualificationlevel
Doctoral
en
dc.type.qualificationname
PhD Doctor of Philosophy
en
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