Ds. Culvenor et al., A spatial clustering approach to automated tree crown delineation, AUTOMATED INTERPRETATION OF HIGH SPATIAL RESOLUTION DIGITAL IMAGERY FOR FORESTRY, INTERNATIONAL FORUM, 1999, pp. 67-80
Forest resource information is increasingly needed at fine spatial scales f
or use in operational to strategic management programs. Applications includ
e multiple-use management, planning harvesting operations and silvicultural
prescriptions, and ensuring the maintenance of biodiversity and ecological
sustainability. High resolution remotely sensed imagery is one data source
that has demonstrated, and continues to demonstrate, great promise. The be
nefits of high spatial resolution data include the potential to apply algor
ithms capable of automatically delineating individual tree crowns in the im
agery.
These algorithms commonly search for distinct spectral patterns in the fore
st scene and use specific image features for the automated delineation of i
ndividual tree crowns. These include the spectral maxima and minima, being
indicative of crown centroids and boundaries respectively.
This paper describes a threshold-based spatial clustering approach to tree
crown delineation. The algorithm is designed for application in Australian
native forests, where the dominant genus, Eucalyptus, typically exhibits lo
w foliage density and complex crown structure. Algorithm features designed
to minimise crown segmentation were therefore key considerations.
The effects of distortions in high resolution imagery is also discussed, pa
rticularly those variables that will influence the spectral 'topography' of
the forest canopy, notably sun angle and viewing geometry. To achieve this
, a 3-Dimensional simulation model has been developed which allows bi-direc
tional reflectance and off-nadir viewing angle effects to be investigated.