Abstract

It is anticipated that many of the future forest mapping applications will be based on three-dimensional (3D) point clouds. A comparison study was conducted to verify the explanatory power and information contents of several 3D remote sensing data sources on the retrieval of above ground biomass (AGB), stem volume (VOL), basal area (G), basal-area weighted mean diameter (Dg) and Lorey’s mean height (Hg) at the plot level, utilizing the following data: synthetic aperture radar (SAR) Interferometry, SAR radargrammetry, satellite-imagery having stereo viewing capability, airborne laser scanning (ALS) with various densities (0.8–6 pulses/m2) and aerial stereo imagery. Laser scanning is generally known as the primary source providing a 3D point cloud. However, photogrammetric, radargrammetric and interferometric techniques can be used to produce 3D point clouds from space- and air-borne stereo images. Such an image-based point cloud could be utilized in a similar manner as ALS providing that accurate digital terrain model is available. In this study, the performance of these data sources for providing point cloud data was evaluated with 91 sample plots that were established in Evo, southern Finland within a boreal forest zone and surveyed in 2014 for this comparison. The prediction models were built using random forests technique with features derived from each data sources as independent variables and field measurements of forest attributes as response variable. The relative root mean square errors (RMSEs) varied in the ranges of 4.6% (0.97 m)–13.4% (2.83 m) for Hg, 11.7% (3.0 cm)–20.6% (5.3 cm) for Dg, 14.8% (4.0 m2/ha)–25.8% (6.9 m2/ha) for G, 15.9% (43.0 m3/ha)–31.2% (84.2 m3/ha) for VOL and 14.3% (19.2 Mg/ha)–27.5% (37.0 Mg/ha) for AGB, respectively, depending on the data used. Results indicate that ALS data achieved the most accurate estimates for all forest inventory attributes. For image-based 3D data, high-altitude aerial images and WorldView-2 satellite optical image gave similar results for Hg and Dg, which were only slightly worse than those of ALS data. As expected, spaceborne SAR data produced the worst estimates. WorldView-2 satellite data performed well, achieving accuracy comparable to the one with ALS data for G, VOL and AGB estimation. SAR interferometry data seems to contain more information for forest inventory than SAR radargrammetry and reach a better accuracy (relative RMSE decreased from 13.4% to 9.5% for Hg, 20.6% to 19.2% for Dg, 25.8% to 20.9% for G, 31.2% to 22.0% for VOL and 27.5% to 20.7% for AGB, respectively). However, the availability of interferometry data is limited. The results confirmed the high potential of all 3D remote sensing data sources for forest inventory purposes. However, the assumption of using other than ALS data is that there exist a high quality digital terrain model, in our case it was derived from ALS.

Highlights

  • Today, it is anticipated that many of the future remote sensing processes for forestry will be based on point cloud processing or on elevation models

  • E.g., digital photogrammetry (DP) or radargrammetry, transform two-dimensional (2D) images into 3D data by spatial intersection based on two or more images taken from different positions

  • We compared performance of 3D point cloud measured from very high resolution space-borne and airborne imagery and Airborne laser scanning (ALS) point cloud for their capabilities in retrieval of forest inventory attributes in the area-based context

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Summary

Introduction

It is anticipated that many of the future remote sensing processes for forestry will be based on point cloud processing or on elevation models. There are a limited number of studies that have investigated the accuracy of forest inventory attributes estimated using point cloud derived from various data sources Most of these studies focused on digital aerial images and ALS data. Nurminen et al [13] compared relative accuracies of mean height, diameter at breast height and volume derived from ALS and aerial image-based point clouds and reported a comparable accuracy from both datasets. We compared performance of 3D point cloud measured from very high resolution space-borne and airborne imagery and ALS point cloud for their capabilities in retrieval of forest inventory attributes in the area-based context. The performance of 3D data was evaluated with 91 sample plots of size 32 m 32 m and 16 m 16 m in Evo, southern Finland

Test Site
Field Data
Airborne Laser Scanning Data
Open ALS Data
Aerial Images
WorldView-2 Satellite Imagery
TerraSAR-X Satellite Data
TanDEM-X SAR Interferometry Data
Methods
Data Co-Registration
Plot Feature Derivation
Data CFeoa-tuRreegistration
Prediction of Forest Inventory Attributes
Evaluation of Accuracy
Image-based Point Cloud versus ALS Point Cloud
Accuracy of Plot Attribute Estimation
Feature Importance
Effect of Plot Size
Full Text
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