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Detection of Single Grapevine Berries in Images Using Fully Convolutional Neural Networks

机译:使用全卷积神经网络检测图像中的单个葡萄浆果

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Yield estimation and forecasting are of special interest in the field of grapevine breeding and viticulture. The number of harvested berries per plant is strongly correlated with the resulting quality. Therefore, early yield forecasting can enable a focused thinning of berries to ensure a high quality end product. Traditionally yield estimation is done by extrapolating from a small sample size and by utilizing historic data. Moreover, it needs to be carried out by skilled experts with much experience in this field. Berry detection in images offers a cheap, fast and non-invasive alternative to the otherwise time-consuming and subjective on-site analysis by experts. We apply fully convolutional neural networks on images acquired with the Phenoliner, a field phenotyping platform. We count single berries in images to avoid the error-prone detection of grapevine clusters. Clusters are often overlapping and can vary a lot in the size which makes the reliable detection of them difficult. We address especially the detection of white grapes directly in the vineyard. The detection of single berries is formulated as a classification task with three classes, namely 'berry', 'edge' and 'background'. A connected component algorithm is applied to determine the number of berries in one image. We compare the automatically counted number of berries with the manually detected berries in 60 images showing Riesling plants in vertical shoot positioned trellis (VSP) and semi minimal pruned hedges (SMPH). We are able to detect berries correctly within the VSP system with an accuracy of 94.0 % and for the SMPH system with 85.6 %.
机译:产量估计和预测在葡萄育种和葡萄栽培领域特别重要。每棵植物收获的浆果数量与最终的质量密切相关。因此,早期的产量预测可以使浆果更稀疏,从而确保高质量的最终产品。传统上,产量估算是通过从较小的样本量推断并利用历史数据来完成的。而且,它需要由在该领域具有丰富经验的熟练专家来执行。图像中的浆果检测提供了便宜,快速且无创的替代方法,以代替专家进行的耗时且主观的现场分析。我们在通过场表型平台Phenoliner采集的图像上应用全卷积神经网络。我们对图像中的单个浆果进行计数,以避免容易出错的葡萄串检测。簇通常是重叠的,并且大小可能相差很大,这使它们的可靠检测变得困难。我们特别致力于直接在葡萄园中检测白葡萄。将单个浆果的检测公式化为具有三个类别的分类任务,即“浆果”,“边缘”和“背景”。应用连接组件算法来确定一个图像中的浆果数量。我们在60张图像中比较了自动计数的浆果数量与手动检测到的浆果数量,这些图像显示了雷司令植物在垂直枝条格架(VSP)和半最小修剪树篱(SMPH)中的状态。我们能够在VSP系统中正确检测浆果,准确度为94.0%,对于SMPH系统则为85.6%。

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