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A Multispectral UAV Imagery Dataset of Wheat, Soybean and Barley Crops in East Kazakhstan

Almasbek Maulit, Aliya Nugumanova, Kurmash Apayev, Yerzhan Baiburin, Maxim Sutula

2023Data15 citationsDOIOpen Access PDF

Abstract

This study introduces a dataset of crop imagery captured during the 2022 growing season in the Eastern Kazakhstan region. The images were acquired using a multispectral camera mounted on an unmanned aerial vehicle (DJI Phantom 4). The agricultural land, encompassing 27 hectares and cultivated with wheat, barley, and soybean, was subjected to five aerial multispectral photography sessions throughout the growing season. This facilitated thorough monitoring of the most important phenological stages of crop development in the experimental design, which consisted of 27 plots, each covering one hectare. The collected imagery underwent enhancement and expansion, integrating a sixth band that embodies the normalized difference vegetation index (NDVI) values in conjunction with the original five multispectral bands (Blue, Green, Red, Red Edge, and Near Infrared Red). This amplification enables a more effective evaluation of vegetation health and growth, rendering the enriched dataset a valuable resource for the progression and validation of crop monitoring and yield prediction models, as well as for the exploration of precision agriculture methodologies.

Topics & Concepts

Multispectral imageRemote sensingNormalized Difference Vegetation IndexAerial photographyGrowing seasonVegetation (pathology)Environmental sciencePhenologyHectareCropMultispectral pattern recognitionGeographyAgriculturePhysical geographyAgronomyLeaf area indexForestryBiologyArchaeologyPathologyMedicineRemote Sensing in AgricultureRemote Sensing and LiDAR ApplicationsLand Use and Ecosystem Services
A Multispectral UAV Imagery Dataset of Wheat, Soybean and Barley Crops in East Kazakhstan | Litcius