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HGO-CNN: Hybrid generic-organ convolutional neural network for multi-organ plant classification

机译:HGO-CNN:混合通用-器官卷积神经网络,用于多器官植物分类

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Classification of plants based on a multi-organ approach is very challenging. Although additional data provides more information that might help to disambiguate between species, the variability in shape and appearance in plant organs also raises the degree of complexity of the problem. Existing approaches focus mainly on generic features for species classification, disregarding the features representing the organs. In fact, plants are complex entities sustained by a number of organ systems. In our approach, we exploit the PlantClef2015 benchmark, and introduce a hybrid generic-organ convolutional neural network (HGO-CNN), which takes into account both organ and generic information, combining them using a new feature fusion scheme for species classification. We show that our proposed method outperforms the state-of-the-art results.
机译:基于多器官方法的植物分类非常具有挑战性。尽管更多的数据提供了可能有助于区分物种的更多信息,但是植物器官的形状和外观的变化也增加了问题的复杂程度。现有方法主要关注物种分类的通用特征,而忽略了代表器官的特征。实际上,植物是由许多器官系统维持的复杂实体。在我们的方法中,我们利用PlantClef2015基准,并引入了一个混合型通用-器官卷积神经网络(HGO-CNN),该网络同时考虑了器官和通用信息,并使用一种新的特征融合方案将它们组合在一起,以进行物种分类。我们表明,我们提出的方法优于最新的结果。

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