Apple (Malus domestica) and pear (Pyrus communis) yield prediction after tree image analysis

Dolores Del Brio, Valentin Tassile, S. Bramardi, Darío Eduardo Fernández, P. Reeb
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Abstract

Yield forecasting depends on accurate tree fruit counts and mean size estimation. This information is generally obtained manually, requiring many hours of work. Artificial vision emerges as an interesting alternative to obtaining more information in less time. This study aimed to test and train YOLO pre-trained models based on neural networks for the detection and count of pears and apples on trees after image analysis; while also estimating fruit size. Images of trees were taken during the day and at night in apple and pear trees while fruits were manually counted. Trained models were evaluated according to recall, precision and F1score. The correlation between detected and counted fruits was calculated while fruit size estimation was made after drawing straight lines on each fruit and using reference elements. The precision, recall and F1score achieved by the models were up to 0.86, 0.83 and 0.84, respectively. Correlation coefficients between fruit sizes measured manually and by images were 0.73 for apples and 0.80 for pears. The proposed methodologies showed promising results, allowing forecasters to make less time consuming and accurate estimates compared to manual measurements. Highlights: The number of fruits in apple and pear trees, could be estimated from images with promising results. The possibility of estimating the fruit numbers from images could reduce the time spent on this task, and above all, the costs. This allow growers to increase the number of trees sampled to make yield forecasts.
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通过树木图像分析预测苹果(Malus domestica)和梨(Pyrus communis)产量
产量预测取决于准确的果树果实计数和平均大小估计。这些信息通常由人工获取,需要耗费大量时间。人工视觉是一种有趣的替代方法,可以在更短的时间内获得更多信息。本研究旨在测试和训练基于神经网络的 YOLO 预训练模型,以便在图像分析后检测和计算树上梨和苹果的数量,同时估算果实的大小。研究人员在白天和晚上分别拍摄了苹果树和梨树的图像,并对果实进行了人工计数。根据召回率、精确度和 F1score 对训练模型进行评估。检测到的果实与计数的果实之间的相关性是通过计算得出的,而果实大小的估计则是通过在每个果实上画直线并使用参考元素得出的。模型的精确度、召回率和 F1score 分别达到了 0.86、0.83 和 0.84。人工测量的水果尺寸与图像测量的水果尺寸之间的相关系数,苹果为 0.73,梨为 0.80。所提出的方法显示出良好的效果,与人工测量相比,预报员可以做出更省时、更准确的估计。亮点: 苹果树和梨树的果实数量可通过图像估算,结果令人满意。通过图像估算果实数量可以减少这项工作所花费的时间,尤其是成本。这样,种植者就可以增加采样树木的数量,从而进行产量预测。
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