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Using computer vision on herbarium specimen images to discriminate among closely related horsetails (Equisetum)

机译:使用植物标目标本图像上的计算机视觉,以区分密切相关的马尾(EquiseTum)

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Premise Equisetum is a distinctive vascular plant genus with 15 extant species worldwide. Species identification is complicated by morphological plasticity and frequent hybridization events, leading to a disproportionately high number of misidentified specimens. These may be correctly identified by applying appropriate computer vision tools. Methods We hypothesize that aerial stem nodes can provide enough information to distinguish among Equisetum hyemale , E. laevigatum , and E . ×ferrissii , the latter being a hybrid between the other two. An object detector was trained to find nodes on a given image and to distinguish E. hyemale nodes from those of E. laevigatum . A classifier then took statistics from the detection results and classified the given image into one of the three taxa. Both detector and classifier were trained and tested on expert manually annotated images. Results In our exploratory test set of 30 images, our detector/classifier combination identified all 10 E. laevigatum images correctly, as well as nine out of 10 E. hyemale images, and eight out of 10 E. ×ferrissii images, for a 90% classification accuracy. Discussion Our results support the notion that computer vision may help with the identification of herbarium specimens once enough manual annotations become available.
机译:前提是EquiseTum是一个独特的血管植物属,全世界15种现存。物种鉴定因形态塑性和频繁的杂交事件而变化,导致较为不鉴定的标本。可以通过应用适当的计算机视觉工具正确识别这些。方法假设空中阀杆节点可以提供足够的信息以区分EquiseTum Hyemale,E. Laevigatum和E。 ×Ferrissii,后者是另外两个之间的混合动力。训练对象检测器以在给定图像上找到节点,并将E. Hyemale节点与E. Laevigatum的那些进行区分。然后,分类器从检测结果中取出统计数据,并将给定的图像分为三个分类群中的一个。探测器和分类器都培训并在手动注释图像上进行培训和测试。结果我们的探索性测试组30张图像,我们的检测器/分类器组合正确识别了所有10 e. laevigatum图像,以及10个E. Hyemale图像中的九个,以及10个E.×Ferrissii图像中的八个,为90 %分类准确性。讨论我们的结果支持计算机愿景可能有助于识别Herbarium标本的概念,手动注释可用。

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