A mixed pixel-and region-based approach for using airborne laser scanning data for individual tree crown delineation in Pinus radiata D. Don plantations

INTERNATIONAL JOURNAL OF REMOTE SENSING(2013)

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摘要
The aim of this study was to evaluate the use of high-resolution airborne laser scanner ALS data to detect and measure individual trees. We developed and tested a new mixed pixel-and region-based algorithm using Definiens Developer 7.0 for locating individual tree positions and estimating their total heights. We computed a canopy height model CHM of pixel size 0.25 m from dense first-pulse point data 8 pulses m−2 acquired with a small-footprint discrete-return lidar sensor. We validated the results of individual tree segmentation with accurate field measurements made in 37 plots of Monterey pine Pinus radiata D. Don distributed over an area of 36 km2. Fieldwork consisted of labelling all of the trees in each plot and measuring their height and position, for posterior integration of the data from both sources field and lidar. The proposed algorithm correctly detected and linked 59.8% of the trees in the 37 sample plots. We also manually located the trees by using FUSION software to visualize the raw lidar data cloud. However, because the latter method is extremely time-consuming, we only considered 10 randomly selected plots. Manual location correctly detected and linked 71.9% of the trees in this subsample the algorithm correctly detected and measured 63.5% of the trees. The R2 values for the linear model relating field-and lidar-measured heights of the linked trees located manually and with the automatic location algorithm were 0.90 and 0.88, respectively.
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关键词
small-footprint discrete-return lidar sensor,accurate field measurement,mixed pixel-and region-based approach,proposed algorithm,airborne laser,als data,individual tree segmentation,dense first-pulse point data,individual tree,automatic location algorithm,raw lidar data,individual tree position,individual tree crown delineation
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