Individual Tree Species Identification Using Lidar Intensity Data
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چکیده
Tree species identification is important for a variety of natural resource management and monitoring activities including riparian buffer characterization, wildfire risk assessment, biodiversity monitoring, and wildlife habitat assessment. Intensity data recorded for each laser point in a LIDAR system is related to the spectral reflectance of the target material and thus may be useful for differentiating materials and ultimately tree species. The aim of this study is to test if LIDAR intensity data can be used to differentiate tree species. Leaf-off and leaf-on LIDAR data were obtained in the Washington Park Arboretum, Seattle, Washington, USA. Field work was conducted to measure tree locations, tree species and heights, crown base heights, and crown diameters of individual trees for eight broadleaved species and seven coniferous species. LIDAR points from individual trees were identified using the field-measured tree location. Points from adjacent trees were excluded using a new method introduced in this paper. Mean intensity values of laser returns within individual tree crowns were compared between species. We found that the intensity values for different species were related not only to reflective properties of the vegetation, but also to a presence or absence of foliage and the arrangement of foliage and branches within individual tree crowns. Broadleaved and coniferous species showed better classification accuracy using leaf-off data than using leaf-on data. The differences in intensity from different species possibly increase the potential application to describing forest characteristics.
منابع مشابه
Individual tree species identification using LIDAR- derived crown structures and intensity data
Individual tree species identification using LIDAR-derived crown structures and intensity data
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تاریخ انتشار 2008