Winter UAV Remote Sensing Dataset for Farmland Boundary Detection: A High-Resolution Multi-Terrain Agricultural Image Collection

Citation Author(s):
Yunfan
Zhang
Nanjing Agricultural University
Lei
Shu
Nanjing Agricultural University
Kailiang
Li
Nanjing Agricultural University
Ru
Han
Nanjing Agricultural University
Tingting
Hu
Nanjing Agricultural University
Submitted by:
Yunfan Zhang
Last updated:
Wed, 03/05/2025 - 04:43
DOI:
10.21227/ta8w-a151
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Abstract 

This study introduces a high-resolution UAV (Unmanned Aerial Vehicle) remote sensing image dataset aimed at advancing the development of deep learning-based farmland boundary extraction techniques and supporting the optimal deployment of Solar Insect Lights (SILs). Agricultural pests pose a significant threat to crop health and yield, while traditional pest control methods often cause environmental pollution. Solar Insect Lights offer an environmentally friendly and efficient alternative, with their deployment needing to be customized according to the unique characteristics of each farmland. Field ridges, as natural boundaries, are ideal locations for placing Solar Insect Lights. However, accurately extracting ridge information from remote sensing images is crucial for achieving this goal. This dataset, captured using UAV technology, includes high-resolution images of various farmland types with different topographical and environmental conditions. These images, with sub-decimeter GSD (Ground Sample Distance), provide rich detail for deep learning models to support more accurate farmland boundary extraction. The release of this dataset aims to address the scarcity of data in this field.

 

Instructions: 

This dataset contains 898 high-resolution UAV remote sensing images covering four types of farmlands, including strip fields, polder fields, raised fields, and terraces, with the following distribution: 1) 320 strip fields images; 2) 150 polder fields images; 3) 279 raised fields images; 4) 149 terraces images. The images were captured from December 2024 to February 2025 using a DJI Air 3S UAV at flight altitudes of 100m, 120m, 150m, 180m, and 200m. The image size is 2160×2160 pixels, with sub-decimeter GSD. These images can be used to develop and validate deep learning models for farmland boundary extraction, thereby supporting the optimal deployment of Solar Insect Lights.

Comments

Impressive

Submitted by Kavya Lakshmapp... on Wed, 03/05/2025 - 08:52