International Journal of Applied Earth Observations and Geoinformation (Aug 2022)

Estimation of forest stand characteristics using individual tree detection, stochastic geometry and a sequential spatial point process model

  • Lauri Mehtätalo,
  • Adil Yazigi,
  • Kasper Kansanen,
  • Petteri Packalen,
  • Timo Lähivaara,
  • Matti Maltamo,
  • Mari Myllymäki,
  • Antti Penttinen

Journal volume & issue
Vol. 112
p. 102920

Abstract

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Airborne Laser Scanning (ALS) results in point-wise measurements of canopy height, which can further be used for Individual Tree Detection (ITD). However, ITD cannot find all trees because small trees can hide below larger tree crowns. Here we discuss methods where the plot totals and means of tree-level characteristics are estimated in such context. The starting point is a previously presented Horvitz–Thompson-like (HT-like) estimator, where the detectability is based on the larger tree crowns and a tuning parameter α that models the detection condition. We propose a new method which is based on modeling the spatial pattern of hidden tree locations using a sequential spatial point process model, with a tuning parameter θ. We also explore whether the variability of the tuning parameters α and θ can be predicted using ALS features to improve the predictions. The accuracy of stand density, dominant height and mean height is used as comparison criteria in a cross-validation procedure. The HT-like estimator with empirically estimated tuning parameter α performed the best. The overall performance of the new method was comparable. The new method was computationally less demanding, which makes it attractive for practical use.

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