Abstract

Individual Tree Detection (ITD) algorithms that use Airborne Laser Scanning (ALS) data can provide accurate tree locations and measurements of tree-level attributes that are required for stand-to-landscape scale forest inventory and supply chain management. While numerous ITD algorithms exist, few have been assessed for accuracy in stands with complex forest structure and composition, limiting their utility for operational application. In this study, we conduct a preliminary assessment of the ability of the ForestView® algorithm created by Northwest Management Incorporated to detect individual trees, classify tree species, live/dead status, canopy position, and estimate height and diameter at breast height (DBH) in a mixed coniferous forest with an average tree density of 543 (s.d. ±387) trees/hectare. ITD accuracy was high in stands with lower canopy cover (recall: 0.67, precision: 0.8) and lower in stands with higher canopy cover (recall: 0.36, precision: 0.67), mainly owing to omission of suppressed trees that were not detected under the dominant tree canopy. Tree species that were well-represented within the study area had high classification accuracies (producer’s/user’s accuracies > ~60%). The similarity between the ALS estimated and observed tree attributes was high, with no statistical difference in the ALS estimated height and DBH distributions and the field observed height and DBH distributions. RMSEs for tree-level height and DBH were 0.69 m and 7.2 cm, respectively. Overall, this algorithm appears comparable to other ITD and measurement algorithms, but quantitative analyses using benchmark datasets in other forest types and cross-comparisons with other ITD algorithms are needed.

Highlights

  • Accepted: 19 December 2021Sustainable forest inventory and supply chain management relies on accurate and up-to-date information that describes the dynamic changes in composition, structure, and health of forest stands

  • This study was conducted on the University of Idaho Experimental Forest (UIEF), which is located on the Palouse Range in north-central Idaho, USA (Figure 1)

  • We evaluated the accuracy of modeled tree height and diameter at breast height (DBH) using regression-based equivalence tests [61]

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Summary

Introduction

Sustainable forest inventory and supply chain management relies on accurate and up-to-date information that describes the dynamic changes in composition, structure, and health of forest stands. This data is essential to accurately forecast growth and yield over large areas and where field inventory access is limited due to natural hazards or topography [1,2]. Individual Tree Detection (ITD), species determination, and measurement of structural attributes using ALS approaches have been long sought-after goals in precision Many challenges remain in tree-level data acquisition, including the difficulty of identifying individual trees and tree species in forests with complex composition and structure [9,10].

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