Abstract

Airborne laser scanner (ALS) data are used to map a range of forest inventory attributes at operational scales. However, when wall-to-wall ALS coverage is cost prohibitive or logistically challenging, alternative approaches are needed for forest mapping. We evaluated an indirect approach for extending ALS-based maps of forest attributes using medium resolution satellite and environmental data. First, we developed ALS-based models and predicted a suite of forest attributes for a 950 km2 study area covered by wall-to-wall ALS data. Then, we used samples extracted from the ALS-based predictions to model and map these attributes with satellite and environmental data for an extended 5600 km2 area with similar forest and ecological conditions. All attributes were predicted well with the ALS data (R2 ≥ 0.83; RMSD% < 26). The satellite and environmental models developed using the ALS-based predictions resulted in increased correspondence between observed and predicted values by 13–49% and decreased prediction errors by 8–28% compared with models developed directly with the ground plots. Improvements were observed for both multiple regression and random forest models, and for the suite of forest attributes assessed. We concluded that the use of ALS-based predictions in this study improved the estimation of forest attributes beyond an approach linking ground plots directly to the satellite and environmental data.

Highlights

  • The increasing availability and decreasing cost of commercial airborne laser scanning (ALS) systems have resulted in widespread application of ALS data for enhancing forest inventories [1,2,3,4]

  • We developed ALS-based prediction models for a suite of forest attributes using ground plots and we predicted these attributes for a study area covered by wall-to-wall ALS data

  • Our results suggest that both random forest and regression models were suitable for predicting forest inventory attributes from ALS data

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Summary

Introduction

The increasing availability and decreasing cost of commercial airborne laser scanning (ALS) systems have resulted in widespread application of ALS data for enhancing forest inventories [1,2,3,4]. ALS data acquisition is not always possible for an entire area of interest due to limited resources or difficulties associated with covering remote or large areas. In such cases, alternative remote sensing data have been used to generate attribute predictions. Among the most common methods are regression [22,23,24], k-nearest neighbors (kNN) [25,26,27], and random forests [28] Multispectral imagery such as Landsat Thematic Mapper (TM) [29,30] or Sentinel-2 (S2) [31] enhance the efficiency and cost effectiveness in mapping forest attributes over large forest landscapes. The use of multispectral imagery alone does not normally reach the level of accuracy possible with wall-to-wall ALS data [32]

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