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Image-based classification of plant genus and family for trained and untrained plant species

机译:培训和未经培训的植物种类的基于图像的植物属和家庭分类

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Modern plant taxonomy reflects phylogenetic relationships among taxa based on proposed morphological and genetic similarities. However, taxonomical relation is not necessarily reflected by close overall resemblance, but rather by commonality of very specific morphological characters or similarity on the molecular level. It is an open research question to which extent phylogenetic relations within higher taxonomic levels such as genera and families are reflected by shared visual characters of the constituting species. As a consequence, it is even more questionable whether the taxonomy of plants at these levels can be identified from images using machine learning techniques. Whereas previous studies on automated plant identification from images focused on the species level, we investigated classification at higher taxonomic levels such as genera and families. We used images of 1000 plant species that are representative for the flora of Western Europe. We tested how accurate a visual representation of genera and families can be learned from images of their species in order to identify the taxonomy of species included in and excluded from learning. Using natural images with random content, roughly 500 images per species are required for accurate classification. The classification accuracy for 1000 species amounts to 82.2% and increases to 85.9% and 88.4% on genus and family level. Classifying species excluded from training, the accuracy significantly reduces to 38.3% and 38.7% on genus and family level. Excluded species of well represented genera and families can be classified with 67.8% and 52.8% accuracy. Our results show that shared visual characters are indeed present at higher taxonomic levels. Most dominantly they are preserved in flowers and leaves, and enable state-of-the-art classification algorithms to learn accurate visual representations of plant genera and families. Given a sufficient amount and composition of training data, we show that this allows for high classification accuracy increasing with the taxonomic level and even facilitating the taxonomic identification of species excluded from the training process.
机译:现代植物分类法根据提出的形态和遗传相似性反映了分类群中的系统发育关系。然而,分类学关系不一定反映通过密切的相似性,而是通过非常具体的形态特征或分子水平的相似性来反映。它是一个开放的研究问题,在较高的分类水平范围内的系统发育关系如属和家庭的程度,由构成物种的共同视觉特征反映。结果,甚至更具可疑的是,可以使用机器学习技术从图像中识别这些水平的植物分类。然而,以前关于从物种级别的图像自动化植物识别的研究,我们在较高的分类水平上调查了属于Genera和Families的分类。我们使用的是1000种植物种类的代表,这些物种是西欧的植物群。我们测试了Genera和家族的视觉表现如何从其物种的图像中学到,以识别包括在学习中的物种的分类。使用随机内容的自然图像,准确分类需要每种物种的大约500张图像。 1000种物种的分类准确性达到82.2%,增加到Genus和家庭水平的85.9%和88.4%。分类物种被排除在培训之外,精度明显降低了Genus和家庭水平的38.3%和38.7%。被排除的良好物种良好的属和家庭可以归类为67.8%和52.8%的准确性。我们的结果表明,共享的视觉角色确实存在于更高的分类水平。最重要的是它们被保存在鲜花和叶子中,并启用最先进的分类算法,以学习植物属和家庭的准确视觉表征。鉴于足够的数量和培训数据的组成,我们表明这允许使用分类学级别的高分类准确性,甚至促进从培训过程中排除的物种的分类鉴定。

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