Automatic plant classification is a challenging problem due to the wide biodiversity of the existing plant species in a fine-grained scenario. Powerful deep learning architectures have been used to improve the classification performance in such a fine-grained problem, but usually building models that are highly dependent on a large training dataset and which are not scalable. In this paper, we propose a novel method based on a two-view leaf image representation and a hierarchical classification strategy for fine-grained recognition of plant species. It uses the botanical taxonomy as a basis for a coarse-to-fine strategy applied to identify the plant genus and species. The two-view representation provides complementary global and local features of leaf images. A deep metric based on Siamese convolutional neural networks is used to reduce the dependence on a large number of training samples and make the method scalable to new plant species. The experimental results on two challenging fine-grained datasets of leaf images (i.e. LifeCLEF 2015 and LeafSnap) have shown the effectiveness of the proposed method, which achieved recognition accuracy of 0.87 and 0.96 respectively.
翻译:由于现有植物物种在微粒情景下具有广泛的生物多样性,自动植物分类是一个具有挑战性的问题。强大的深层学习结构被用来改进这种细粒问题中的分类性能,但通常建立高度依赖大型培训数据集且无法缩放的模型。在本文中,我们提出了一个基于两眼叶图象的新方法,以及细粒植物物种识别的等级分类战略。它利用植物分类法作为用于鉴定植物基因和物种的粗略至软化战略的基础。两眼图象具有补充性的全球和局部特色。一个基于暹粒卷动神经网络的深厚度指标被用于减少对大量培训样本的依赖,并使这种方法对新植物物种具有可缩放性。两个具有挑战性的精细层图象数据集(即LifeCLEF 2015和LeafSnap)的实验结果显示了拟议方法的有效性,该方法分别实现了0.87和0.96的准确度。