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A Computer Vision Approach for Automatic Measurement of the Inter-plant Spacing

机译:一种用于机器间间距自动测量的计算机视觉方法

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Global food demand is increasing every year and it is needed to respond to this demand. In addition, some crops such as corn, which is the most produced grain in the world, is used as food, feed, bio-energy and other industrial purposes. Thus, it is needed the development of new technologies that make possible to produce more from less land. In particular, the corn crop is sensitive to its spatial arrangement and any variation in plant distribution pattern can lead to reduction in corn production. Nowadays, the uniformity of the plant spacing is checked manually by agronomists in order to predict possible production losses. In this context, this work proposes an automatic approach for measuring the spacing between corn plants in the early stages of growth. The proposed approach is based on computer vision techniques in order to evaluate the automatic inter-plant spacing measurement from images in a simple and efficient way, allowing its use on devices with low computational power such as smart phones and tablets. An image dataset was built as an additional contribution of this work containing 2186 corn plants in two conditions: tillage after the application of herbicide (TH) with 1387 corn plants and conventional tillage (CT) with 799 corn plants. The experimental results achieve 90% of precision and 92% of sensitivity in corn plant identification. Regarding the automatic measurement of the inter-plant spacing, the results showed no significant differences from the same measurements taken manually, indicating the effectiveness of the proposed approach in two distinct types of planting.
机译:全球粮食需求每年都在增长,需要对此做出回应。此外,一些作物,例如玉米,是世界上产量最高的谷物,被用作食品,饲料,生物能源和其他工业用途。因此,需要开发新技术,从而有可能用更少的土地生产更多的土地。特别地,玉米作物对其空间布置敏感,并且植物分布模式的任何变化都可能导致玉米产量下降。如今,农艺师手动检查植物间距的均匀性,以预测可能的生产损失。在这种情况下,这项工作提出了一种自动方法,用于在生长的早期阶段测量玉米植株之间的间隔。所提出的方法基于计算机视觉技术,以便以一种简单而有效的方式评估来自图像的工厂间间距的自动测量,从而使其可以在计算能力较低的设备(例如智能手机和平板电脑)上使用。建立了一个图像数据集,作为这项工作的额外贡献,在以下两个条件下包含2186种玉米:在1387种玉米植物上施用除草剂(TH)后的耕作,在799种玉米上进行常规耕作(CT)。实验结果在玉米植物鉴定中达到了90%的精度和92%的灵敏度。关于植物间间距的自动测量,结果显示与手动进行的相同测量没有显着差异,这表明了该方法在两种不同种植类型中的有效性。

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