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Detection and counting of flowers on apple trees for better chemical thinning decisions

机译:苹果树上的花卉检测和计数更好的化学稀释决策

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Accurate chemical thinning of apple trees requires estimation of their blooming intensity, and determination of the blooming peak date. Performing this task, as of today, requires human experts to be present in the orchards for the entire blossom period or extrapolate using a single observation. Since experts are rare and in high demand, there is a need to automate this process. The system presented in this paper is able to estimate the blooming intensity and the blooming peak date from a sequence of tree images, with close-to-human accuracy. For this purpose, a two years dataset was collected in 2014-2015, partially tagged for the flowers location and completely annotated for blooming intensity. Using this dataset, an algorithm was developed and trained with three stages: a visual flower detector based on a deep convolutional neural network, followed by a blooming level estimator, and a peak blooming day finding algorithm. Despite the challenging conditions, the trained detector was able to detect flowers on trees with an Average Precision (AP) score of 0.68, which is on a par with contemporary results of other objects in detection benchmarks. The blooming estimator was based on a linear regression component, which used the number of flowers detected and related statistics to estimate the blooming intensity. The Pearson correlation between the algorithm blooming estimation and human judgments of several experts indicated high agreement levels (0.78-0.93) which were similar to the correlations measured among the human experts. Moreover, the developed estimator was relatively stable across multiple years. The developed peak date finding algorithm identified correctly the orchard's blooming peak date, which was used to determine the thinning date in the current practice (the entire orchard is thinned in the same day). Experiments testing the algorithm's ability to find a blooming peak date for each tree independently showed encouraging results, which may lead upon refinement to a more precise practice for tree-specific thinning.
机译:苹果树精确化学变薄需要估计其盛开的强度,并确定盛开的高峰日期。执行此任务,截至今天,需要人类专家在果园中出现整个开花时期或使用单一观察外推。由于专家稀有且需求量很高,因此需要自动化此过程。本文呈现的系统能够从一系列树图像估计盛开的强度和盛开的峰值日期,具有近距离对准确度。为此目的,2014 - 2015年收集了两年数据集,部分标记为鲜花位置,并完全注释为盛开的强度。使用该数据集,开发了一种算法,并有三个阶段培训:基于深度卷积神经网络的视觉花探测器,其次是盛开的级别估计器,以及峰值盛开日发现算法。尽管有挑战性的条件,但训练有素的探测器能够在树上检测花的平均精度(AP)得分为0.68,这与检测基准中的其他物体的当代结果相提并论。盛开的估计器基于线性回归分量,它使用了检测到的鲜花数和相关统计数据来估计盛开的强度。算法盛开估计与若干专家的人力判断之间的Pearson相关性表明了高协议水平(0.78-0.93),其类似于人类专家之间测量的相关性。此外,发达的估计器在多年中相对稳定。开发的峰值日期查找算法确定了果园的盛开峰日期,用于确定当前练习中的稀疏日期(整个果园在同一天变薄)。测试算法找到每棵树的盛开高峰日期的实验独立地显示了令人鼓舞的结果,这可能会导致改进对树特异性变薄的更精确的做法。

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