Swetnam & Falk, 2014

Paper/Book

Application of Metabolic Scaling Theory to reduce error in local maxima tree segmentation from aerial LiDAR

Swetnam T.L. and Falk D.A. (2014)
Forest Ecology and Management 323: 158–167  

Abstract

Identifying individual trees across large forested landscapes is an important benefit of an aerial LiDAR collection. However, current approaches toward individual tree segmentation of aerial LiDAR data do not always reflect how the allometry of tree canopies change with height, age, or competition for limiting space and resources. We developed a variable-area local maxima (VLM) algorithm that incorporates predictions of the Metabolic Scaling Theory (MST) to reduce the frequency of commission error in a local maxima individual tree inventory derived from aerial LiDAR. By comparing the MST prediction to 663 species of North American champion-sized trees (which include the tallest and the largest trees on the planet), and 610 measured trees in semi-arid conifer forests in Arizona and New Mexico we show the MST canopy radius model rcan = βhα where β is the normalization constant, h is height, and α is a dynamic exponent predicted by MST to be α=1, can be applied as a general model in many water-limited conifer forests. MST also informs the estimate of individual tree bole diameter dbole (which aerial LiDAR does not measure directly) based on two primary size measures easily obtained from the aerial LiDAR: height h and canopy diameter dcan. A two parameter model βh  √dcan is shown to better predict bole diameter (r2 = 0.811, RMSE = 7.66 cm) than a single parameter model of either canopy diameter or height alone: βdαcan (r2 = 0.51 RMSE = 12. 4 cm) or βhα (r2 = 0.753, RMSE = 8.94 cm). By improving methods to identify individual trees and more accurately predict bole diameter, estimates of total forest stand density, structural diversity, above ground biomass and carbon over large landscapes will likewise be improved.

 

Citation

Swetnam T.L. and Falk D.A. (2014): Application of Metabolic Scaling Theory to reduce error in local maxima tree segmentation from aerial LiDAR. Forest Ecology and Management 323: 158–167. DOI: 10.1016/j.foreco.2014.03.016

This Paper/Book acknowledges NSF CZO grant support.


Associated Data

Betasso - Topographic Carbon Storage, GIS/Map Data, LiDAR, Land Cover (2010)
2 components    Betasso    GIS / Remote Sensing, Biology / Ecology, Geomorphology, Hydrology    Tyson Lee Swetnam; Paul Brooks; Holly Barnard; Adrian Harpold; Erika Gallo

Como Creek - Topographic Carbon Storage, GIS/Map Data, LiDAR, Land Cover (2010)
2 components    Boulder Creek Watershed    GIS / Remote Sensing, Biology / Ecology, Geomorphology, Hydrology    Tyson Lee Swetnam; Paul Brooks; Holly Barnard; Adrian Harpold; Erika Gallo

Gordon Gulch - Topographic Carbon Storage, GIS/Map Data, LiDAR, Land Cover (2010)
2 components    Gordon Gulch    GIS / Remote Sensing, Biology / Ecology, Geomorphology, Hydrology    Tyson Lee Swetnam; Paul Brooks; Holly Barnard; Adrian Harpold; Erika Gallo

Jemez River Basin - LiDAR - Snow-off (2010)
5 components    Jemez River Basin    GIS / Remote Sensing    Qinghua Guo; Jon Pelletier; Robert Parmenter; Craig Allen; Barbara Judy; Matej Durcik

Jemez River Basin - LiDAR - Snow-on (2010)
4 components    Jemez River Basin    GIS / Remote Sensing    Qinghua Guo; Jon Pelletier; Matej Durcik