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Global Wheat Head Detection (GWHD) Dataset: A Large and Diverse Dataset of High-Resolution RGB-Labelled Images to Develop and Benchmark Wheat Head Detection Methods

机译:全球小麦头部检测(GWHD)数据集:高分辨率RGB标记图像的大型和多样化数据集用于开发和基准麦头检测方法

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摘要

The detection of wheat heads in plant images is an important task for estimating pertinent wheat traits including head population density and head characteristics such as health, size, maturity stage, and the presence of awns. Several studies have developed methods for wheat head detection from high-resolution RGB imagery based on machine learning algorithms. However, these methods have generally been calibrated and validated on limited datasets. High variability in observational conditions, genotypic differences, development stages, and head orientation makes wheat head detection a challenge for computer vision. Further, possible blurring due to motion or wind and overlap between heads for dense populations make this task even more complex. Through a joint international collaborative effort, we have built a large, diverse, and well-labelled dataset of wheat images, called the Global Wheat Head Detection (GWHD) dataset. It contains 4700 high-resolution RGB images and 190000 labelled wheat heads collected from several countries around the world at different growth stages with a wide range of genotypes. Guidelines for image acquisition, associating minimum metadata to respect FAIR principles, and consistent head labelling methods are proposed when developing new head detection datasets. The GWHD dataset is publicly available at http://www.global-wheat.com/and aimed at developing and benchmarking methods for wheat head detection.
机译:植物图像中的小麦头的检测是用于估计相关的小麦特征的重要任务,包括头部人口密度和头部特征,如健康,大小,成熟阶段以及AWN的存在。几项研究基于机器学习算法开发了从高分辨率RGB图像的小麦头部检测方法。但是,这些方法通常在有限数据集上校准并验证。观察条件,基因型差异,发育阶段和头部定位的高度变化使小麦头检测计算机视觉的挑战。此外,由于移动或风之间的动作或风和重叠的可能模糊,使得这项任务更加复杂。通过联合国际协作努力,我们建立了一个大型,多样化,且标记着良好的小麦图像数据集,称为全球小麦头部检测(GWHD)数据集。它包含4700张高分辨率RGB图像和190000年,标有来自世界各地的几个国家,不同的生长阶段收集了各种各样的生长阶段,具有广泛的基因型。图像采集指南,将最小元数据相关联以尊重公平原则,在开发新的头部检测数据集时提出了一致的头标签方法。 GWHD数据集可在http://www.global-wheat.com/and上公开提供,旨在开发和基准测试麦头检测方法。

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