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Experimental Dataset for Rapid Generation of Grassland Key Parameters from UAV Images


WANG Dongliang1LI Yuzhe1ZHANG Aochong1
1 Key Laboratory of Land Surface Pattern and Simulation,Institute of Geographic Sciences and Natural Resources Research,Chinese Academy of Sciences,Beijing 100101,China

DOI:10.3974/geodb.2024.02.03.V1

Published:Feb. 2024

Visitors:305       Data Files Downloaded:9      
Data Downloaded:2.09 MB      Citations:

Key Words:

UAV imagery,VDVI,FVC,AGB

Abstract:

On July 19, 2023, the authors used a fixed-wing UAV to quickly take aerial photographs of the pasture, and calculated the key parameters of grassland including FVC, AGB, etc. The dataset includes: (1) FVC data; (2) AGB data. The dataset is archived in .shp data format, and consists of 16 data files with data size of 1.23 MB (Compressed to 1 file with data size of 237 KB).

Foundation Item:

Ministry of Science and Technology of P. R. China (2021YFD1300501); Chinese Academy of Sciences (XDA23100200)

Data Citation:

WANG Dongliang, LI Yuzhe, ZHANG Aochong.Experimental Dataset for Rapid Generation of Grassland Key Parameters from UAV Images[J/DB/OL]. Digital Journal of Global Change Data Repository, 2024. https://doi.org/10.3974/geodb.2024.02.03.V1.

References:


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     [2] Tang, G. J., Bao, Q. D., Nomadic civilization: research on the wisdom of survival and development and its ecological dimension [J]. Heilongjiang National Series, 2023, (1): 137-143.
     [3] Shen, H. H., Zhu, Y. K., Zhao, X., et al. Analysis on the current situation of grassland resources in China [J]. Chinese Science Bulletin, 2016, 61(2): 139-154.
     [4] Wang, D., Xin, X., Shao, Q., et al. Modeling aboveground biomass in Hulunber grassland ecosystem by using unmanned aerial vehicle discrete lidar [J]. Sensors, 2017, 17(1): 180.
     [5] Wang, D., Liao, X. H., Zhang, Y. J., et al. Grassland livestock real-time detection and weight estimation based on unmanned aircraft system video streams [J]. Chinese Journal of Ecology, 2021, 40(12): 4099-4108.
     [6] Wang, D., Song, Q., Liao, X. H., et al. Integrating satellite and unmanned aircraft system (UAS) imagery to model livestock population dynamics in the Longbao wetland national nature reserve, china [J]. Science of the Total Environment, 2020, 746: 140327.
     [7] Wang, X., Zuo, X. Q., Modeling and visualization of drone oblique photographic data based on ODM and Cesium [J]. Computer Engineering & Software, 2020, 41(4): 124-129.
     [8] Wang, X. Q., Wang, M. M., Wang, S. Q., et al. Extraction of vegetation information from visible unmanned aerial vehicle images [J]. Transactions of the Chinese Society of Agricultural Engineering, 2015, 31(5): 152-158.
     [9] Du, M. M., Noboru, N., Atsushi, I., et al. Multi-temporal monitoring of wheat growth by using images from satellite and unmanned aerial vehicle [J]. International Journal of Agricultural and Biological Engineering, 2017, 10(5): 1-13.
     [10] Zhou, J., Zhang, K., Du, T. Research on vegetation cover variations in reservoir areas based on satellite remote sensing: A case study of Sanhekou Reservoir Area [J]. Water Resources and Hydropower Engineering, 2023, 1(1): 1-12.
     [11] Wang, Y., Ma, L., Wang, Q. et al. A lightweight and high-accuracy deep learning method for grassland grazing livestock detection using UAV imagery [J]. Remote Sensing, 2023, 15(6): 1593.
     

Data Product:

ID Data Name Data Size Operation
1 UAV_AGB_FVC.rar 237.31KB
Co-Sponsors

Institute of Geographic Sciences and Natural Resources Research,Chinese Academy of Sciences

The Geographical Society of China

Parteners

Committee on Data for Science and Technology (CODATA) Task Group on Preservation of and Access to Scientific and Technical Data in/for/with Developing Countries (PASTD)

Jomo Kenyatta University of Agriculture and Technology

Digital Linchao GeoMuseum