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Comparison of Canopy Closure Estimation of Plantations Using Parametric, Semi-Parametric, and Non-Parametric Models Based on GF-1 Remote Sensing Images

机译:基于GF-1遥感图像的参数,半参数和非参数模型的种植园闭合估计的比较

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Canopy closure (CC) is an important parameter in forest ecosystems and has diverse applications in a wide variety of fields. Canopy closure estimation models, using a combination of measured data and remote sensing data, can largely replace traditional survey methods for CC. However, it is difficult to estimate the forest CC based on high spatial resolution remote sensing images. This study used China Gaofen-1 satellite (GF-1) images, and selected China’s north temperate Wangyedian Forest Farm (WYD) and subtropical Gaofeng Forest Farm (GF) as experimental areas. A parametric model (multiple linear regression (MLR)), non-parametric model (random forest (RF)), and semi-parametric model (generalized additive model (GAM)) were developed. The ability of the three models to estimate the CC of plantations based on high spatial resolution remote sensing GF-1 images and their performance in the two experimental areas was analyzed and compared. The results showed that the decision coefficient ( R 2 ), root mean square error (RMSE), and relative root mean square error (rRMSE) values of the parametric model (MLR), semi-parametric model (GAM), and non-parametric model (RF) for the WYD forest ranged from 0.45 to 0.69, 0.0632 to 0.0953, and 9.98% to 15.05%, respectively, and in the GF forest the R 2 , RMSE, and rRMSE values ranged from 0.40 to 0.59, 0.0967 to 0.1152, and 16.73% to 19.93%, respectively. The best model in the two study areas was the GAM and the worst was the RF. The accuracy of the three models established in the WYD was higher than that in the GF area. The RMSE and rRMSE values for the MLR, GAM, and RF established using high spatial resolution GF-1 remote sensing images in the two test areas were within the scope of existing studies, indicating the three CC estimation models achieved satisfactory results.
机译:Canopy Closure(CC)是森林生态系统中的重要参数,在各种领域拥有多样化的应用。 Canopy闭合估计模型,使用测量数据和遥感数据的组合,可以在很大程度上取代CC的传统调查方法。然而,难以根据高空间分辨率遥感图像估计森林CC。本研究使用中国高芬-1卫星(GF-1)图像,并选择了中国北温带王义林场(WYD)和亚热带高峰林场(GF)作为实验领域。开发了参数模型(多个线性回归(MLR)),非参数模型(随机林(RF))和半导体模型(广义添加剂模型(GAM))。分析了三种模型估算基于高空间分辨率遥感GF-1图像的种植园CC的能力及其在两个实验区域中的性能进行了比较。结果表明,决策系数(R 2),根均方误差(RMSE)和参数模型(MLR),半参数模型(GAM)和非参数的相对根均方误差(RRMSE)值和非参数WYD森林的模型(RF)范围为0.45至0.69,0.0632至0.0953,分别为9.98%至15.05%,而GF森林R 2,RMSE和RRMSE值范围为0.40至0.59,0.0967至0.1152分别为16.73%至19.93%。这两个研究领域的最佳模型是游戏,最坏的是RF。在WYD中建立的三种模型的准确性高于GF区域的准确性。使用高空间分辨率GF-1遥感图像建立的MLR,GAM和RF的RMSE和RRMSE值在现有研究的范围内,指示三种CC估计模型实现了令人满意的结果。

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