卫星图像时间序列预测文献综述:遥感方法与应用

Carlos Lara-Alvarez, Juan J. Flores, Hector Rodriguez-Rangel, Rodrigo Lopez-Farias
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引用次数: 0

摘要

卫星图像时间序列是从遥感图像中产生的时间序列;它们通常与从这些图像中提取的特征或指标相对应。随着遥感图像的日益普及和处理此类数据的新方法的出现,图像时间序列方法已被广泛用于评估时间模式检测、监测、分类、目标检测和特征估计。由于时间序列的研究范围很广,本文重点分析与预测图像时间序列的一个或多个属性值有关的文章。图像时间序列预测(ITSF)问题出现在不同的学科中;大多数学科侧重于通过利用自然资源促进可持续发展和最大限度地减少危险自然现象的致命性来提高生活质量。科学家们根据不同的应用,使用不同的工具或方法来解决这些问题。本综述按应用领域和解决方法对该领域的领先最新成果进行了分析。我们的研究结果表明,人工神经网络、回归树、支持向量回归和细胞自动机是 ITSF 最常用的方法。解决这一问题的应用领域包括可再生能源、农业和土地利用变化。本研究检索并分析了近期图像时间序列预测活动的相关信息,生成了 2009 年至 2021 年期间发表的该领域最相关文章的可复制列表。据作者所知,这是第一份以可再现的方式介绍和分析最相关的最新文章清单的综述,其重点是 ITSF 的应用、技术和研究趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A literature review on satellite image time series forecasting: Methods and applications for remote sensing

A literature review on satellite image time series forecasting: Methods and applications for remote sensing
Satellite image time-series are time series produced from remote sensing images; they generally correspond to features or indicators extracted from those images. With the increasing availability of remote sensing images and new methodologies to process such data, image time-series methods have been used extensively for assessing temporal pattern detection, monitoring, classification, object detection, and feature estimation. Since the study of time series is broad, this article focuses on analyzing articles related to forecasting the value of one or more attributes of the image time-series. The image time series forecasting (ITSF) problem appears in different disciplines; most focus on improving the quality of life by harnessing natural resources for sustainable development and minimizing the lethality of dangerous natural phenomena. Scientists tackle these problems using different tools or methods depending on the application. This review analyzes the field's leading, most recent contributions, grouping them by application area and solution methods. Our findings indicate that artificial neural networks, regression trees, support vector regression, and cellular automata are the most common methods for ITSF. Application areas address this problem as renewable energy, agriculture, and land-use change. This study retrieved and analyzed relevant information about the recent activity of image time series forecasting, generating a reproducible list of the most pertinent articles in the field published from 2009 to 2021. To the author's best knowledge, this is the first review presenting and analyzing a reproducible list of the most relevant state-of-the-art articles focusing on the applications, techniques, and research trends for ITSF.
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