2022 Inner Mongolia UAV Potato Image Dataset

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  • 1. College of Computer and Information Engineering, Xinjiang Agricultural University, Urumqi 830052, China
    2. Agricultural Information Institute of Chinese Academy of Agricultural Sciences, Beijing 100081, China
    3. Inner Mongolia Academy of Science and Technology, Hohhot 010010, China
    4. National Agriculture Science Data Center, Beijing 100081, China

Received date: 2023-03-06

  Online published: 2023-05-16

Abstract

Potatoes are the fourth largest food crop in the world, and large-scale planting of potatoes is an important basis for ensuring high yields of potatoes. With the development of digital agriculture, the large-scale planting of potatoes also tends to be automated and intelligent. UAVs are an important tool in crop plant protection and growth monitoring. UAV spectral data play an important role in crop identification and crop growth status analysis. important. In order to explore the role of spectral data and image data in potato growth, this study conducted three different spatial resolution images on two mature seed potato experimental fields in Hulunbeier, Inner Mongolia, on August 13, 16 and 18, 2022. Spectral data and image data are collected. UAV remote sensing was used to obtain multi- spectral images at different heights, and the data of potato leaves on the ground were collected. After manual in- spection and sorting, this dataset was constructed. The spectral data of this dataset is complete and the leaf data is clear, which can provide data support for research on potato crop identification, planting area estimation, and potato-related vegetation index changes on different dates during the maturity period.

Cite this article

HU Tianci, WANG Ruili, JIANG Chengxiang, BAI Tao, HU Lin, WANG Xiaoli, GUO Leifeng . 2022 Inner Mongolia UAV Potato Image Dataset[J]. Journal of Agricultural Big Data, 2023 , 5(1) : 40 -45 . DOI: 10.19788/j.issn.2096-6369.230112

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