Plant Pathology Group, Department of Environmental System Science, ETH Zurich, Zurich, 8092, Switzerland.
Crop Science Group, Department of Environmental System Science, ETH Zurich, Zurich, 8092, Switzerland.
Sci Data. 2024 Sep 27;11(1):1033. doi: 10.1038/s41597-024-03842-8.
Site-specific crop management in heterogeneous fields has emerged as a promising avenue towards increasing agricultural productivity whilst safeguarding the environment. However, successful implementation is hampered by insufficient availability of accurate spatial information on crop growth, vigor, and health status at large scales. Challenges persist particularly in interpreting remote sensing signals within commercial crop production due to the variability in canopy appearance resulting from diverse factors. Recently, high-resolution imagery captured from unmanned aerial vehicles has shown significant potential for calibrating and validating methods for remote sensing signal interpretation. We present a comprehensive multi-scale image dataset encompassing 35,000 high-resolution aerial RGB images, ground-based imagery, and Sentinel-2 satellite data from nine on-farm wheat fields in Switzerland. We provide geo-referenced orthomosaics, digital elevation models, and shapefiles, enabling detailed analysis of field characteristics across the growing season. In combination with rich meta data such as detailed records of crop husbandry, crop phenology, and yield maps, this data set enables key challenges in remote sensing-based trait estimation and precision agriculture to be addressed.
针对非均质地块的作物管理已成为一种提高农业生产力和保护环境的可行途径。然而,由于缺乏大规模的作物生长、活力和健康状况的准确空间信息,成功实施受到阻碍。由于冠层外观因多种因素而变化,因此在商业作物生产中解释遥感信号仍然存在挑战。最近,来自无人机的高分辨率图像已显示出在校准和验证遥感信号解释方法方面的巨大潜力。我们提供了一个全面的多尺度图像数据集,其中包含来自瑞士 9 个农场的 35000 张高分辨率航空 RGB 图像、地面图像和 Sentinel-2 卫星数据。我们提供地理参考正射镶嵌图、数字高程模型和形状文件,使我们能够在整个生长季节内对田间特征进行详细分析。结合丰富的元数据,如详细的作物管理记录、作物物候和产量图,该数据集可以解决基于遥感的特征估计和精准农业中的关键挑战。