基于地面观测的作物物候反演精度评价

Jianhong Liu, Xin Huang
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引用次数: 1

摘要

作物物候信息是作物生长监测、粮食产量预测、作物模型模拟和作物对气候变化响应的重要参数。提高作物物候参数的检索精度有助于气候变化、全球碳平衡等方面的研究。本文主要研究了基于动态阈值模型的农作物SOS和EOS遥感检索精度评估。以2015年和2016年中国气象局(CMA)和中国生态系统研究网络(CERN)的作物生长发育地面观测记录为参考数据。首先,我们改进了动态阈值模型,保证了SOS和EOS检测的100%检索率。然后,利用改进的动态阈值模型,从中分辨率成像光谱仪(MODIS)的归一化植被指数(NDVI)时间序列中检索不同阈值下不同作物的SOS和EOS。准确度评估表明,最常用的20%或50%阈值并不是检索所有作物SOS和EOS的最佳阈值。另外,使用相同的阈值来检索SOS和EOS是不合适的。不同作物的SOS和EOS的最优阈值存在较大差异。
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Evaluating crop phenology retrieving accuracies based on ground observations
Crop phenological information is an important parameter for crop growth monitoring, grain yield prediction, crop model simulation and crop’s response to climate change. Improving the accuracy of the retrieved crop phenology parameters contributes to researches about climate change, global carbon balance, etc. This paper focuses on assessing the retrieval accuracy of crop SOS and EOS by remote sensing based on the dynamic threshold model. Ground observations of crop growth and development records from China Meteorological Administration (CMA) and Chinese Ecosystem Research Network (CERN) in 2015 and 2016 were used as reference data. Firstly, we improved the dynamic threshold model to ensure the 100% retrieval rate for detecting SOS and EOS. Then, we retrieved the SOS and EOS of different crops under different thresholds by the improved dynamic threshold model from the Normalized Difference Vegetation Index (NDVI) time series derived from MODerate-resolution Imaging Spectroradiometer (MODIS). Accuracy assessment indicated that the mostly used 20% or 50% threshold is not the optimal threshold for retrieving all crops’ SOS and EOS. In additional, it is inappropriate to use the same threshold to retrieve SOS and EOS. There is a big difference between the optimal thresholds for retrieving SOS and EOS of different crops.
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