Geomorphological scene classification dataset of high-resolution remote sensing imagery in vegetation-covered areas

被引:0
作者
Ouyang S. [1 ]
Chen W. [1 ]
Li X. [1 ]
Dong Y. [1 ]
Wang L. [1 ]
机构
[1] Faculty of Computer Science, China University of Geosciences, Wuhan
关键词
Deep learning; Geomorphological classification; Geomorphology datasets; Remote sensing scene classification; Vegetation cover;
D O I
10.11834/jrs.20221385
中图分类号
学科分类号
摘要
A geomorphological dataset is considered to be one of the most important data sources to realize automatic classification of geomorphology and deepening understanding of geomorphological morphology. At present, the datasets of high-precision geomorphologic origin are scarce, hindering the development of automatic geomorphological interpretation using remote sensing data techniques. In the Tianshan-Xingmeng orogenic system, which is dominated by the gully arc-basin system in northeast China, three scene datasets namely, tectonic geomorphology, volcanic lava geomorphology, and flowing geomorphology are made. These geomorphology types were formed by strong tectonic movement, volcanism from the Neozoic, and flowing water action from the Neozoic. The data set covers an area of approximately 5000 km2, including visible light remote sensing image of Sentinel-2, SRTM1 DEM, and seven geomorphological variables based on DEM extraction (hillshade, slope, DEM local average value, standard deviation, two components of aspect, and relative deviation from mean value). Each sample patch is 64×64 pixels with a spatial resolution of 10 m. A multi-modal deep learning model is proposed for classification, and the results show that the average test accuracy is 82.63%. The quality of the dataset is high. The dataset (available from https://pan.‍baidu.‍com/s/1Kzj04cU-TiofPk6pTEKENg, password: cug0) could provide fundamental data support for the automatic classification research of geomorphological causes by remote sensing and promote the development of intelligent interpretation in the geoscience community by remote sensing techniques. © 2022, Science Press. All right reserved.
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页码:606 / 619
页数:13
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