Evaluation of spatiotemporal fusion methods for high resolution daily NDVI prediction

Amal Ibn El Hobyb, A. Radgui, A. Tamtaoui, A. Er-Raji, D. E. Hadani, M. Merdas, Faouzi Mohamed Smiej
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引用次数: 1

Abstract

The Normalized Difference Vegetation Index was introduced for monitoring vegetation dynamics. This index can be extracted from multispectral sensor data, such as Landsat and MODIS sensors, and therefore the NDVI can be obtained with high spatial resolution but low temporal resolution when using Landsat or with high temporal resolution but low spatial resolution when using MODIS. Spatiotemporal fusion methods were proposed as a solution for this limitation. By using these methods, images with high spatial and high temporal resolution can be obtained. STARFM, ESTARFM and FSDAF are ones of the methods that have been successfully applied for spatiotemporal fusion. The objective of this study is to compare and evaluate these three methods and apply it on actual NDVI Landsat 8 and MODIS data in the region of Tadla in Morocco, to generate daily NDVI at 30m resolution. This evaluation was supervised by experts in CRTS and this through two approaches. The evaluation approach one is applying the three methods to predict Landsat NDVI for 16 days based on predicted images. The evaluation approach two is based on predicting Landsat NDVI for 4 months and evaluating the results with available real Landsat images with statistic parameters. The Results show that only the ESTARFM method can handle the propagation of error for evaluation approach one and it is less sensible to the quality of inputs. For evaluation approach two, the ESTARFM method gives more accurate results than the STARFM and FSDAF method if input two pairs Landsat and MODIS NDVI are used from previous days with a RMSE attending 0,06.
高分辨率NDVI日预测的时空融合方法评价
引入归一化植被指数用于植被动态监测。该指标可以从Landsat和MODIS等多光谱传感器数据中提取,因此使用Landsat可以获得高空间分辨率而低时间分辨率的NDVI,使用MODIS可以获得高时间分辨率而低空间分辨率的NDVI。为了解决这一问题,提出了时空融合方法。利用这些方法可以获得高空间分辨率和高时间分辨率的图像。STARFM、ESTARFM和FSDAF是目前已成功应用于时空融合的方法之一。本研究的目的是比较和评估这三种方法,并将其应用于摩洛哥Tadla地区的实际NDVI Landsat 8和MODIS数据,以生成30m分辨率的每日NDVI。这项评估由CRTS的专家监督,通过两种方式进行。评价方法一是在预测影像的基础上,应用3种方法对Landsat NDVI进行16天的预测。评估方法二是基于4个月的Landsat NDVI预测,并使用具有统计参数的可用真实Landsat图像对结果进行评估。结果表明,只有ESTARFM方法能够处理评价方法1的误差传播,对输入质量的敏感程度较低。对于评估方法二,如果输入两对Landsat和MODIS NDVI, RMSE为0.06,则ESTARFM方法的结果比STARFM和FSDAF方法更准确。
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