Tang Chongjian, Ye Zilin, Long Jiangping, Liu Zhaohua, Zhang Tingchen, Xu Xiaodong, Lin Hui
Research Center of Forestry Remote Sensing & Information Engineering, Central South University of Forestry and Technology, Changsha, China.
Key Laboratory of Forestry Remote Sensing Based Big Data & Ecological Security for Hunan Province, Changsha, China.
Front Plant Sci. 2022 Oct 4;13:949598. doi: 10.3389/fpls.2022.949598. eCollection 2022.
Normally, forest quality (FQ) and site quality (SQ) play an important role in evaluating actual and potential forest productivity. Traditionally, these assessment indices (FQ and SQ) are mainly based on forest parameters extracted from ground measurement (forest height, age, density, forest stem volume (FSV), and DBH), which is labor-intensive and difficult to access in certain remote forest areas. Recently, remote sensing images combined with a small number of samples were gradually applied to map forest parameters because of the various advantages of remote sensing technology, such as low cost, spatial coverage, and high efficiency. However, FQ and SQ related to forest parameters are rarely estimated using remote sensing images and machine learning models. In this study, the Sentinel images and ground samples of planted Chinese fir forest located in the ecological "green-core" area of Changzhutan urban cluster, were initially employed to explore the feasibility of mapping the FQ and SQ. And then, four types of alternative variables (backscattering coefficients (VV and VH), multi-spectral bands, vegetation indices, and texture characteristics) were extracted from Sentinel-1A and Sentinel-2A images, respectively. After selecting variables using a stepwise regression model, three machine learning models (SVR, RF, and KNN) were employed to estimate various forest parameters. Finally, the FQ of the study region was directly mapped by the weights sum of related factors extracted by the factor analysis method, and the SQ was also extracted using mapped forest height and age. The results illustrated that the accuracy of estimated forest parameters (DBH, H, and Age) was significantly higher than FSV, FCC, and Age and the largest and smallest rRMSEs were observed from FSV (0.380.40) and forest height (0.200.21), respectively. Using mapped forest parameters, it also resulted that the rRMSEs of estimated FQ and SQ were 0.19 and 0.15, respectively. Furthermore, after normalization and grading, the grades of forest quality were mainly concentrated in grades I, II, and III in the study region. Though the accuracy of mapping FQ and SQ is limited by the saturation phenomenon, it is significantly proved that using machine learning models and Sentinel images has great potential to indirectly map FQ and SQ.
通常情况下,森林质量(FQ)和立地质量(SQ)在评估现实和潜在的森林生产力方面发挥着重要作用。传统上,这些评估指标(FQ和SQ)主要基于从地面测量中提取的森林参数(林分高度、年龄、密度、森林蓄积量(FSV)和胸径),这一过程劳动强度大,且在某些偏远林区难以实施。近年来,由于遥感技术具有低成本、空间覆盖范围广和高效率等诸多优势,结合少量样本的遥感影像逐渐被应用于森林参数制图。然而,利用遥感影像和机器学习模型来估算与森林参数相关的FQ和SQ的情况却很少见。在本研究中,首先利用位于长株潭城市群生态“绿心”地区的人工杉木林的哨兵影像和地面样本,探讨绘制FQ和SQ的可行性。然后,分别从哨兵 - 1A和哨兵 - 2A影像中提取了四类替代变量(后向散射系数(VV和VH)、多光谱波段、植被指数和纹理特征)。在使用逐步回归模型选择变量后,采用三种机器学习模型(支持向量回归(SVR)、随机森林(RF)和K近邻(KNN))来估算各类森林参数。最后,通过因子分析法提取相关因子的权重和直接绘制研究区域的FQ,并利用绘制的林分高度和年龄来提取SQ。结果表明,估算的森林参数(胸径、树高和年龄)的精度显著高于森林蓄积量、树冠郁闭度和年龄,其中森林蓄积量的相对均方根误差(rRMSE)最大(0.380.40),树高的rRMSE最小(0.200.21)。利用绘制的森林参数,估算的FQ和SQ的rRMSE分别为0.19和0.15。此外,经过归一化和分级后,研究区域内森林质量等级主要集中在I、II和III级。虽然绘制FQ和SQ的精度受到饱和现象的限制,但显著证明了利用机器学习模型和哨兵影像间接绘制FQ和SQ具有巨大潜力。