基于深度学习的异质农业区智能农业应用的时空融合卫星图像重建

A. Htitiou, A. Boudhar, Y. Lebrini, T. Benabdelouahab
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引用次数: 3

摘要

摘要遥感提供了各种地表参数(如植被指数、地表温度、土壤湿度、叶面积指数和蒸散)的空间明确和时间连续观测数据,可广泛用于不同尺度和背景下的各种应用。其中一个主要应用是农业监测,基于精准农业的智能系统需要一组高分辨率的卫星图像,在时间和空间上捕捉物候阶段和精细的空间细节,特别是在具有各种空间异质性和时间变化的景观中。由于需要在空间和时间分辨率和/或云量的影响之间进行权衡,单个传感器有时无法提供这些要求。Landsat-8 (L8)和Sentinel-2 (S2)卫星的新一代多光谱传感器的数据可用性为此类应用提供了前所未有的选择。鉴于此,目前的研究旨在展示这些光学传感器的协同使用如何有效地支持这样的应用。为此,本文提出了一种深度学习时空数据融合方法,以满足对植被指数密集时间序列进行精细空间分辨率预测的需求。结果表明,该方法可以获得更精确的融合NDVI时间序列数据,能够推导出单一作物田的物候阶段和特征,同时在这种异质性景观中保留更多的空间细节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DEEP LEARNING-BASED RECONSTRUCTION OF SPATIOTEMPORALLY FUSED SATELLITE IMAGES FOR SMART AGRICULTURE APPLICATIONS IN A HETEROGENEOUS AGRICULTURAL REGION
Abstract. Remote sensing offers spatially explicit and temporally continuous observational data of various land surface parameters such as vegetation index, land surface temperature, soil moisture, leaf area index, and evapotranspiration, which can be widely leveraged for various applications at different scales and contexts. One of the main applications is agricultural monitoring, where a smart system based on precision agriculture requires a set of satellite images with a high resolution, both in time and space to capture the phenological stages and fine spatial details, especially in landscapes with various spatial heterogeneity and temporal variation. These requirements sometimes cannot be provided by a single sensor due to the trade-off required between spatial and temporal resolutions and/or the influence of cloud cover. The data availability of new generation multispectral sensors of Landsat-8 (L8) and Sentinel-2 (S2) satellites offers unprecedented options for such applications. Given this, the current study aims to display how the synergistic use of these optical sensors can efficiently support such an application. Herein, this study proposes a deep learning spatiotemporal data fusion method to fill the need for predicting a dense time series of vegetation index with fine spatial resolution. The results show that the developed method creates more accurate fused NDVI time-series data that were able to derive phenological stages and characteristics in single-crop fields, while keeps more spatial details in such a heterogeneous landscape.
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