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Estimation of Prematurely Dropped Citrus Count on the Ground before Harvesting

机译:估计在收获前在地面过早滴下的柑橘数量

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Excessive amount of premature fruit drops can reach up to 25% of the entire production of the year. However, it is difficult to tell exact reasons of the premature drop due to the lack of a scientific diagnosis system. In this research, a machine vision system was developed to find where excessive fruit drop occurs in a citrus grove and to decide fruit dropping period by estimating that citrus was recently dropped or decayed due to being dropped. A hardware system was developed to facilitate automatic image acquisition in a citrus grove and reduce significant change in illumination in outdoor environment. A machine vision algorithm included thresholding and K-mean clustering to remove background and classification using a Random forest classifier. The result of this research shows that the correct identification was high (91.9%) for recently dropped citrus and relatively low (61.9%) for decayed fruit. Also, in-field spatial variability of the estimated amount of the dropped fruit by the algorithm was visualized on a map. This information can help growers to find potential causes of the fruit drop by correlating with other factors such as diseases, nutrition and soil types.
机译:过早水果滴可达到全年全部生产的25%。然而,由于缺乏科学诊断系统,难以讲述早产的完全原因。在这项研究中,开发了一种机器视觉系统,以发现在柑橘树丛中发生过量的水果滴,通过估计柑橘最近被丢弃或腐烂而决定水果滴剂。开发了一种硬件系统,以促进柑橘树丛中的自动图像采集,并减少室外环境中的照明的显着变化。机器视觉算法包括阈值和k平均聚类,以使用随机林分类器删除背景和分类。该研究的结果表明,最近滴柑橘的正确鉴定高(91.9%),腐烂的水果相对较低(61.9%)。此外,通过算法在地图上可视化算法估计的掉落果实量的现场空间可变性。这些信息可以帮助种植者通过与疾病,营养和土壤类型等其他因素相关来找到水果液滴的潜在原因。

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