A comprehensive review of spatial-temporal-spectral information reconstruction techniques

IF 5.7 Q1 ENVIRONMENTAL SCIENCES Science of Remote Sensing Pub Date : 2023-09-14 DOI:10.1016/j.srs.2023.100102
Qunming Wang , Yijie Tang , Yong Ge , Huan Xie , Xiaohua Tong , Peter M. Atkinson
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引用次数: 1

Abstract

Fine spatial resolution remote sensing images are crucial sources of data for monitoring the Earth's surface. Due to defects in sensors and the complicated imaging environment, however, fine spatial resolution images always suffer from various degrees of information loss. According to the basic attributes of remote sensing images, the information loss generally falls into three dimensions, that is, the spatial, temporal and spectral dimensions. In recent decades, many methods have been developed to cope with this information loss problem in the three dimensions, which are termed spatial reconstruction, temporal reconstruction and spectral reconstruction in this paper. This paper presents a comprehensive review of all three types of reconstruction. First, a systematic introduction and review of the achievements is provided, including the refined general mathematical framework and diagram for each of the three parts. Second, the applications in various areas (e.g., meteorology, ecology and environmental science) are introduced. Third, the challenges and recent advances of spatial-temporal-spectral information reconstruction are summarized, such as the efforts for dealing with abrupt land cover changes in spatial reconstruction, inconsistency in multi-scale data acquired by different sensors in temporal reconstruction, and point spread function (PSF) effect in spectral reconstruction. Finally, several thoughts are given for future prospects.

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时空光谱信息重建技术综述
精细空间分辨率遥感图像是地球表面监测的重要数据来源。然而,由于传感器本身的缺陷和复杂的成像环境,精细空间分辨率图像往往存在不同程度的信息丢失。根据遥感影像的基本属性,信息损失一般分为空间、时间和光谱三个维度。近几十年来,人们发展了许多方法来处理这一三维信息丢失问题,本文主要包括空间重建、时间重建和光谱重建。本文对这三种类型的重建进行了全面的回顾。首先,对研究成果进行了系统的介绍和回顾,包括对三部分的一般数学框架和图表进行了细化。其次,介绍了在各个领域(如气象学、生态学和环境科学)的应用。第三,总结了时空光谱信息重建面临的挑战和最新进展,包括在空间重建中处理土地覆盖突变的努力,在时间重建中不同传感器获取的多尺度数据不一致,以及在光谱重建中点扩展函数(PSF)效应。最后,对未来的发展前景提出了几点思考。
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