利用多源遥感数据的 36 年时间序列快速进行土地覆被分类

IF 3.2 2区 环境科学与生态学 Q2 ENVIRONMENTAL STUDIES
Land Pub Date : 2023-12-11 DOI:10.3390/land12122149
Xin-yan Yan, Jing Li, Andrew R. Smith, Di Yang, Tianyue Ma, Yiting Su
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引用次数: 0

摘要

长时间序列的土地覆被分类信息是城市扩张、植被变化和碳循环科学研究的基础。随着谷歌地球引擎(GEE)等云计算平台的快速发展,以及对大地遥感卫星和哨兵-2 多源卫星图像的获取,机器学习算法在图像分类中的应用成为可能。在此,我们使用随机森林算法,基于从 2022 年获取的图像中选取的固定土地分类样本点,以及样本点的逐年光谱差异,快速实现了不同尺度的时间序列土地覆被分类。利用合成孔径雷达(SAR)和数字高程模型(DEM)等多源遥感数据提高了分类精度。结果表明(i)通过统计1986年至2022年Landsat时间序列各波段的样本点,确定未发生地类变化的样本点的最大差值(阈值)为0.25;(ii)Landsat 8同一传感器的卡帕系数和观测精度高于2013年至2022年TM和ETM+传感器数据的结果;(iii)增加采矿土地覆被类型可提高Sentinel 2影像对复杂矿区和林区分类的卡帕系数和总体精度均值。在通过多源遥感进行的土地分类中,光谱波段+指数+地形+合成孔径雷达组合变量的准确度最高,但总体提高有限。所提出的方法适用于不同尺度的遥感图像和复杂地形条件下的传感器使用。利用 GEE 云计算平台可以快速分析遥感数据,绘制出精度高、时间序列长的土地覆被图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rapid Land Cover Classification Using a 36-Year Time Series of Multi-Source Remote Sensing Data
Long time series land cover classification information is the basis for scientific research on urban sprawls, vegetation change, and the carbon cycle. The rapid development of cloud computing platforms such as the Google Earth Engine (GEE) and access to multi-source satellite imagery from Landsat and Sentinel-2 enables the application of machine learning algorithms for image classification. Here, we used the random forest algorithm to quickly achieve a time series land cover classification at different scales based on the fixed land classification sample points selected from images acquired in 2022, and the year-by-year spectral differences of the sample points. The classification accuracy was enhanced by using multi-source remote sensing data, such as synthetic aperture radar (SAR) and digital elevation model (DEM) data. The results showed that: (i) the maximum difference (threshold) of the sample points without land class change, determined by counting the sample points of each band of the Landsat time series from 1986 to 2022, was 0.25; (ii) the kappa coefficient and observed accuracy of the same sensor from Landsat 8 are higher than the results of the TM and ETM+ sensor data from 2013 to 2022; and (iii) the addition of a mining land cover type increases the kappa coefficient and overall accuracy mean values of the Sentinel 2 image classification for a complex mining and forest area. Among the land classifications via multi-source remote sensing, the combined variables of Spectral band + Index + Terrain + SAR result in the highest accuracy, but the overall improvement is limited. The method proposed is applicable to remotely sensed images at different scales and the use of sensors under complex terrain conditions. The use of the GEE cloud computing platform enabled the rapid analysis of remotely sensed data to produce land cover maps with high accuracy and a long time series.
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来源期刊
Land
Land ENVIRONMENTAL STUDIES-Nature and Landscape Conservation
CiteScore
4.90
自引率
23.10%
发文量
1927
期刊介绍: Land is an international and cross-disciplinary, peer-reviewed, open access journal of land system science, landscape, soil–sediment–water systems, urban study, land–climate interactions, water–energy–land–food (WELF) nexus, biodiversity research and health nexus, land modelling and data processing, ecosystem services, and multifunctionality and sustainability etc., published monthly online by MDPI. The International Association for Landscape Ecology (IALE), European Land-use Institute (ELI), and Landscape Institute (LI) are affiliated with Land, and their members receive a discount on the article processing charge.
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