Abstract

Accurate measurement of forest growing stem volume (GSV) is important for forest resource management and ecosystem dynamics monitoring. Optical remote sensing imagery has great application prospects in forest GSV estimation on regional and global scales as it is easily accessible, has a wide coverage, and mature technology. However, their application is limited by cloud coverage, data stripes, atmospheric effects, and satellite sensor errors. Combining multi-sensor data can reduce such limitations as it increases the data availability, but also causes the multi-dimensional problem that increases the difficulty of feature selection. In this study, GaoFen-2 (GF-2) and Sentinel-2 images were integrated, and feature variables and data scenarios were derived by a proposed adaptive feature variable combination optimization (AFCO) program for estimating the GSV of coniferous plantations. The AFCO algorithm was compared to four traditional feature variable selection methods, namely, random forest (RF), stepwise random forest (SRF), fast iterative feature selection method for k-nearest neighbors (KNN-FIFS), and the feature variable screening and combination optimization procedure based on the distance correlation coefficient and k-nearest neighbors (DC-FSCK). The comparison indicated that the AFCO program not only considered the combination effect of feature variables, but also optimized the selection of the first feature variable, error threshold, and selection of the estimation model. Furthermore, we selected feature variables from three datasets (GF-2, Sentinel-2, and the integrated data) following the AFCO and four other feature selection methods and used the k-nearest neighbors (KNN) and random forest regression (RFR) to estimate the GSV of coniferous plantations in northern China. The results indicated that the integrated data improved the GSV estimation accuracy of coniferous plantations, with relative root mean square errors (RMSErs) of 15.0% and 19.6%, which were lower than those of GF-2 and Sentinel-2 data, respectively. In particular, the texture feature variables derived from GF-2 red band image have a significant impact on GSV estimation performance of the integrated dataset. For most data scenarios, the AFCO algorithm gained more accurate GSV estimates, as the RMSErs were 30.0%, 23.7%, 17.7%, and 17.5% lower than those of RF, SRF, KNN-FIFS, and DC-FSCK, respectively. The GSV distribution map obtained by the AFCO method and RFR model matched the field observations well. This study provides some insight into the application of optical images, optimization of the feature variable combination, and modeling algorithm selection for estimating the GSV of coniferous plantations.

Highlights

  • Forests are the largest carbon sinks in terrestrial ecosystems and play a crucial role in the global carbon cycle [1,2]

  • The Adaptive Feature Combination Optimization Program (AFCO) was compared to four methods in this study: random forest (RF), stepwise random forest (SRF), KNN-FIFS, and the feature variable screening and combination optimization procedure was based on the distance correlation coefficient and k-nearest neighbors (DC-FSCK)

  • A novel method (AFCO) was proposed and used to select the optimal combination of feature variables from integrated GF-2 and Sentinel-2 image data, and the results demonstrate the superiority of the AFCO method and potential of using integrated

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Summary

Introduction

Forests are the largest carbon sinks in terrestrial ecosystems and play a crucial role in the global carbon cycle [1,2]. The forest growing stem volume (GSV) is the total trunk volume of various living standing trees per unit forested area, which reflects the quality of forest resources and health of the forest ecosystem [3,4]. Accurate forest GSV measurement is vital for the dynamic monitoring of regional-scale forest carbon storage [5,6,7]. The traditional GSV measurement method often disturbs the ecological environment and is expensive and laborious [5]. Remote sensing technology has significant advantages, such as wide coverage, low cost, and high efficiency, and has been widely applied in forest GSV estimation [3,4,5,6]. Owing to the complexity and spatial heterogeneity of forest ecosystems, forest GSV estimation by remote sensing has led to many uncertainties [8,9,10]

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