Abstract

The development of new methods for estimating precise forest structure parameters is essential for the quantitative evaluation of forest resources. Conventional use of satellite image data, increasing use of terrestrial laser scanning (TLS), and emerging trends in the use of unmanned aerial systems (UASs) highlight the importance of modern technologies in the realm of forest observation. Each technology has different advantages, and this work seeks to incorporate multiple satellite, TLS- and UAS-based remote sensing data sets to improve the ability to estimate forest structure parameters. In this paper, two regression analysis approaches are considered for the estimation: random forest regression (RFR) and support vector regression (SVR). To collect the dependent variable, in situ measurements of individual tree parameters (tree height and diameter at breast height (DBH)) were taken in a Japanese cypress forest using the nondestructive TLS method, which scans the forest to obtain dense and accurate point clouds under the tree canopy. Based on the TLS data, the stem volume was then computed and treated as ground truth information. Topographic and UAS information was then used to calculate various remotely sensed explanatory variables, such as canopy size, canopy cover, and tree height. Canopy cover and canopy shapes were computed via the orthoimages derived from the UAS and watershed segmentation method, respectively. Tree height was computed by combining the digital surface model (DSM) from the UAS and the digital terrain model (DTM) from the TLS data. Topographic variables were computed from the DTM. The backscattering intensity in the satellite imagery was obtained based on L-band (Advanced Land Observing Satellite-2 (ALOS-2) Phased Array type L-band Synthetic Aperture Radar-2 (PALSAR-2)) and C-band (Sentinel-1) synthetic aperture radar (SAR). All satellite (10–25 m resolution), TLS (3.4 mm resolution) and UAS (2.3–4.6 cm resolution) data were then combined, and RFR and SVR were trained; the resulting predictive powers were then compared. The RFR method yielded fitting R2 up to 0.665 and RMSE up to 66.87 m3/ha (rRMSE = 11.95%) depending on the input variables (best result with canopy height, canopy size, canopy cover, and Sentinel-1 data), and the SVR method showed fitting R2 up to 0.519 and RMSE up to 80.12 m3/ha (rRMSE = 12.67%). The RFR outperformed the SVR method, which could delineate the relationship between the variables for better model accuracy. This work has demonstrated that incorporating various remote sensing data to satellite data, especially adding finer resolution data, can provide good estimates of forest parameters at a plot level (10 by 10 m), potentially allowing advancements in precision forestry.

Highlights

  • IntroductionPrecision forestry is a term used for collecting up-to-date information on a forest through implementing modern technologies (e.g., new sensors, cost effective, sustainable, high resolution, etc.) and represents a tool to achieve goals such as sustainable management and usage of forest resources [1]

  • Precision forestry is a term used for collecting up-to-date information on a forest through implementing modern technologies and represents a tool to achieve goals such as sustainable management and usage of forest resources [1]

  • This work experimented with the possibilities for estimating the plot base stem volume using random forest regression (RFR) and support vector regression (SVR), incorporating multi-sensor remote sensing data sets from terrestrial laser scanning (TLS), unmanned aerial systems (UASs) photogrammetry, and synthetic aperture radar (SAR)

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Summary

Introduction

Precision forestry is a term used for collecting up-to-date information on a forest through implementing modern technologies (e.g., new sensors, cost effective, sustainable, high resolution, etc.) and represents a tool to achieve goals such as sustainable management and usage of forest resources [1]. Issues related to cloud cover and ground resolution need to be overcome for better precision Indices such as the normalized difference vegetation index (NDVI) and different radar bands are commonly used to estimate tree parameters for various purposes [15,16,17]. Photogrammetry methods only capture surface information (i.e., the top of the canopy) and cannot collect data on underlying objects, especially in densely forested areas. The results indicate that integrating different sensors can enhance the estimation from the interaction effects as well as intercorrelations between input variables, overcoming the saturation of optical reflectance at dense vegetative areas and SAR influenced by the underlying soil. The first is to improve the estimation of the forest structure parameter including stem volume information utilizing TLS, UAS, and SAR data. Sxevnetri.n6e.l0-1.0w) daesvaevloaiplaedblbeyonthlye fEoSrAV.VSeanntdinVelH-1,wwahsicahvaisiladbulee toontlhyefoarcqVuVisaitniodnVpHla,nwshfoicrhthisisdrueegtioont.he acquisition plans for this region

UAS Observation and Image Processing
Generating Remotely Sensed Variables
Machine Learning Algorithms
Correlation of Each Variables and Validating the Predicted Models
Correlation Matrix for Variable Comparison
UAS Remote Sensing Variables
TLS Variables
Radar Variables
Model Errors
Scale Difference of Multi-Sensor Approach
Data Processing of Point Clouds
Beyond Precision Forestry
Conclusions
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