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Retrieval of 30-m-Resolution Leaf Area Index From China HJ-1 CCD Data and MODIS Products Through a Dynamic Bayesian Network

机译:通过动态贝叶斯网络从中国HJ-1 CCD数据和MODIS产品中检索30 m分辨率叶面积指数

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摘要

The leaf area index (LAI) is a characteristic parameter of vegetation canopies. This parameter is significant in research on global climate change and ecological environments. The China HJ-1 satellite has a revisit cycle of four days and provides CCD (HJ-1 CCD) data with a resolution of 30 m. However, the HJ-1 CCD is incapable of obtaining observations at multiple angles. This is problematic because single-angle observations provide insufficient data for determining the LAI. This article proposes a new method for determining the LAI using the HJ-1 CCD data. The proposed method uses background knowledge of the dynamic land surface processes that is extracted from MODerate resolution Imaging Spectroradiometer (MODIS) LAI data with a resolution of 1 km. The proposed method was implemented in a dynamitic Bayesian network scheme by integrating an LAI dynamic process model and a canopy reflectance model with the remotely sensed data. The validation was conducted using field LAI data collected in the Guantao County of the Hebei Province in China. The results showed that the determination coefficient between the estimated and the measured LAI was 0.791, and the RMSE was 0.61. The results suggest that this algorithm can be widely applied to determine high-resolution leaf area indexes using data from the China HJ-1 satellite even if the information from single-angle observations are insufficient for quantitative application.
机译:叶面积指数(LAI)是植被冠层的特征参数。该参数对全球气候变化和生态环境的研究具有重要意义。中国HJ-1卫星的重访周期为4天,并提供分辨率为30 m的CCD(HJ-1 CCD)数据。但是,HJ-1 CCD无法获得多个角度的观察结果。这是有问题的,因为单角度观测提供的数据不足以确定LAI。本文提出了一种使用HJ-1 CCD数据确定LAI的新方法。所提出的方法使用了动态陆地表面过程的背景知识,该知识是从分辨率为1 km的现代分辨率成像光谱仪(MODIS)LAI数据中提取的。通过将LAI动态过程模型和树冠反射模型与遥感数据相集成,在动态贝叶斯网络方案中实现了该方法。验证是使用在中国河北省观陶县收集的现场LAI数据进行的。结果表明,估计的LAI与测得的LAI之间的测定系数为0.791,RMSE为0.61。结果表明,即使来自单角度观测的信息不足以进行定量应用,该算法也可以广泛地用于利用来自中国HJ-1卫星的数据确定高分辨率叶面积指数。

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