Identifying Growth Patterns in Arid-Zone Onion Crops (Allium Cepa) Using Digital Image Processing

D. Duarte-Correa, J. Rodríguez-Reséndíz, Germán Díaz-Flórez, C. Olvera-Olvera, J. M. Álvarez-Alvarado
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Abstract

The agricultural sector is undergoing a revolution that requires sustainable solutions to the challenges that arise from traditional farming methods. To address these challenges, technical and sustainable support is needed to develop projects that improve crop performance. This study focuses on onion crops and the challenges presented throughout its phenological cycle. Unmanned aerial vehicles (UAVs) and digital image processing were used to monitor the crop and identify patterns such as humid areas, weed growth, vegetation deficits, and decreased harvest performance. An algorithm was developed to identify the patterns that most affected crop growth, as the average local production reported was 40.166 tons/ha. However, only 25.00 tons/ha were reached due to blight caused by constant humidity and limited sunlight. This resulted in the death of leaves and poor development of bulbs, with 50% of the production being medium-sized. Approximately 20% of the production was lost due to blight and unfavorable weather conditions.
利用数字图像处理识别干旱地区洋葱作物的生长模式
农业部门正在经历一场革命,需要可持续的解决方案来应对传统农业方法带来的挑战。为了应对这些挑战,需要提供技术和可持续支持,以开发提高作物生产性能的项目。本研究的重点是洋葱作物及其物候周期所面临的挑战。利用无人机(uav)和数字图像处理技术对作物进行监测,并识别湿润地区、杂草生长、植被缺失和收获性能下降等模式。开发了一种算法来确定对作物生长影响最大的模式,因为报告的当地平均产量为40.166吨/公顷。然而,由于持续的湿度和有限的阳光造成的枯萎病,每公顷只能达到25.00吨。这导致了叶片死亡和鳞茎发育不良,50%的产量是中等大小的。由于枯萎病和不利的天气条件,大约20%的产量损失。
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