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Dataset of annotated food crops and weed images for robotic computer vision control

机译:用于机器人电脑视觉控制的注释食品作物和杂草图像的数据集

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摘要

Weed management technologies that can identify weeds and distinguish them from crops are in need of artificial intelligence solutions based on a computer vision approach, to enable the development of precisely targeted and autonomous robotic weed management systems. A prerequisite of such systems is to create robust and reliable object detection that can unambiguously distinguish weed from food crops. One of the essential steps towards precision agriculture is using annotated images to train convolutional neural networks to distinguish weed from food crops, which can be later followed using mechanical weed removal or selected spraying of herbicides. In this data paper, we propose an open-access dataset with manually annotated images for weed detection. The dataset is composed of 1118 images in which 6 food crops and 8 weed species are identified, altogether 7853 annotations were made in total. Three RGB digital cameras were used for image capturing: Intel RealSense D435, Canon EOS 800D, and Sony W800. The images were taken on food crops and weeds grown in controlled environment and field conditions at different growth stages
机译:杂草管理技术可以识别杂草并将它们与作物区别于基于计算机视觉方法的人工智能解决方案,以实现精确的目标和自主机器人杂草管理系统的发展。这种系统的先决条件是创造稳健且可靠的对象检测,可以明确地区分杂草免于食物作物。精密农业的基本步骤是使用注释的图像来培训卷积神经网络,以区分杂草免于食物作物,后者可以使用机械杂草去除或选择的除草剂喷涂。在此数据纸中,我们提出了一个具有手动注释图像的开放访问数据集进行杂草检测。数据集由1118张图像组成,其中识别出6种食物作物和8种杂草物种,共7853个注释进行了总数。三个RGB数码相机用于图像捕获:Intel RealSense D435,Canon EOS 800D和Sony W800。在不同增长阶段的受控环境中生长的食物作物和杂草种植的图像

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