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首页> 外文期刊>International journal of remote sensing >Estimating canopy cover in artificial forests using high spatial resolution GF-1 and ZY-3 images: across-sensor and across-site comparison
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Estimating canopy cover in artificial forests using high spatial resolution GF-1 and ZY-3 images: across-sensor and across-site comparison

机译:使用高空间分辨率GF-1和ZY-3估算人工林中的遮篷覆盖:穿越传感器和跨场比较

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摘要

Canopy cover is an important parameter in forest ecosystems and has diverse applications in a wide variety of fields. However, estimation of forest canopy cover from high spatial resolution images is an arduous task. To evaluate the utility of high spatial resolution images for estimation of canopy cover of artificial forests, the performance of canopy cover estimation models across sensors and across sites was evaluated. Choosing Wangyedian Forest Farm and Gaofeng Forest Farm as experimental areas, based on Chinese high spatial resolution Gaofen-1 (GF-1) and Ziyuan-3 (ZY-3) satellite images, three models, namely multiple linear regression (MLR), generalized additive model (GAM), and Random Forest (RF) were established. The capabilities of the two data sources and three model types to estimate canopy cover of the forests were compared and the portability of the three models across sensors and sites was analysed. The ranges of the root mean square error (RMSE) and relative root mean square error (rRMSE) of the MLR, GAM, and RF models for each study area established from GF-1 and ZY-3 were 0.0632-0.1205 and 9.98-19.93%, respectively. GF-1 showed better performance than ZY-3 when using the same model type. Whether the objective was across sensors or across sites transplantation, the accuracy of the model decreased with transplantation of the model. The MLR model was non-significant when transplanted across sites and model migration failed, whereas across sensors and across sites transplantation of RF and GAM models was successful. The three evaluation indices of transplanted GAM models were significantly superior to those of transplanted RF and MLR models. Thus, the GAM model showed strong portability and the highest model stability.
机译:Canopy Cover是森林生态系统中的一个重要参数,在各种领域拥有多种应用。然而,从高空间分辨率图像估计森林覆盖覆盖是艰巨的任务。为了评估高空间分辨率图像的效用,以估计人为林的冠层覆盖,评估了传感器跨越传感器和跨地网站的俯视估计模型的性能。选择王义森林农场和高峰森林农场作为实验领域,基于中国高空间分辨率高芬-1(GF-1)和Ziyuan-3(ZY-3)卫星图像,三种模型,即多元线性回归(MLR),广义建立了添加剂模型(GAM)和随机森林(RF)。比较了两个数据源和三种模型类型来估算森林的冠层覆盖的功能,分析了传感器和网站上的三种模型的可移植性。来自GF-1和ZY-3建立的每项研究区域的MLR,GAM和RF模型的根均方误差(RMSE)和相对根均线误差(RRMSE)的范围为0.0632-0.1205和9.98-19.93 %, 分别。使用相同的型号类型,GF-1显示出比ZY-3更好的性能。无论目标是否跨越传感器或跨网点移植,模型的准确性都会随着模型的移植而降低。当移植站点和模型迁移时,MLR模型是非显着的,而跨越传感器和跨站点的RF和GAM模型的移植成功。移植的GAM模型的三个评估指标显着优于移植的RF和MLR模型。因此,GAM模型表现出强大的便携性和最高的模型稳定性。

著录项

  • 来源
    《International journal of remote sensing》 |2021年第18期|7166-7187|共22页
  • 作者

    Wang Ling; Mao Xuegang;

  • 作者单位

    Northeast Forestry Univ Sch Forestry Harbin Peoples R China;

    Northeast Forestry Univ Sch Forestry Harbin Peoples R China|Northeast Forestry Univ Key Lab Sustainable Forest Ecosyst Management Minist Educ Harbin Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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