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Measurement of the ripening rate on coffee branches by using 3D images in outdoor environments

机译:在室外环境中使用3D图像测量咖啡分支机构的成熟率

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In this article, a method for determination of the ripening rate of coffee branches is presented. This is achieved through analysis of 3D information obtained with a monocular camera in outdoor environments and under uncontrolled lighting, contrast, and occlusion conditions. This study was performed on 30 coffee branches, monitored throughout the entire harvest season, at each of nine collection times, directly in the countryside. On each branch checked, the fruit was counted in three maturation stages: unripe, semi-ripe and ripe. Subsequently, the real ripeness percentage was computed for each stage of development. Images were acquired from the same manually checked branches, and the developed algorithm was run. This algorithm performs a reconstruction producing a point cloud, employing Structure from Motion (SfM). In all, 17 features were selected to describe the three maturation stages, leaves, and stem. These features were calculated in a region proportional to the size of the point cloud. The 3D structures of the coffee fruits on the branch were obtained and classified, with between 42% and 92% of correct classification percentage for the unripe, semi-ripe, and ripe developmental stages, and the best classification model was selected, with a neighborhood that was 6.5% of the total size of the point cloud. A statistical estimation model was constructed for each stage of development, and it was found that the model overestimates the percentage of ripe fruit, underestimates that of semi-ripe fruit, and the unripe fruit estimate is one to one. The errors in estimation were between 3.7% and 8.7%. Correlation was between 0.64 and 0.98. Finally, temporary monitoring was performed for the ripening of coffee branches during the harvest season, with nine collection times. A maturation index was determined, with which the state of a branch as ready or not for harvest was correctly determined with 83% efficiency.
机译:在本文中,提出了一种确定咖啡树枝升定速率的方法。这是通过在室外环境中使用单眼摄像机获得的3D信息以及在不受控制的照明,对比度和闭塞条件下进行的3D信息来实现。本研究在30个咖啡树枝上进行,在整个收获季节监测,每季度,每季度九次收集时间,直接在农村。在检查的每个分支上,水果在三个成熟阶段计数:未成熟,半成熟和成熟。随后,为每个开发阶段计算实际成熟百分比。从相同的手动检查的分支中获取图像,并运行已开发的算法。该算法执行产生点云的重建,从运动(SFM)采用结构。总而言之,选择了17个功能以描述三个成熟阶段,叶子和茎。这些特征在与点云的大小成比例的区域中计算。获得咖啡果实的3D结构,并分类,分类为未成熟,半成熟和成熟发育阶段的正确分类百分比的42%至92%,选择最佳分类模型,附近这是点云总规模的6.5%。为每个发展阶段构建了统计估计模型,结果发现该模型高估成熟果实的百分比,低估了半成熟果的果实,而未成熟的果实估计是一对一的。估计的错误介于3.7%和8.7%之间。相关性在0.64和0.98之间。最后,在收获季节期间对咖啡分支成熟进行了临时监测,九次收集时间。确定了成熟指数,用83%的效率正确地确定了一种准备好或不准备收获的分支的状态。

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