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Automated Extraction of Phenotypic Leaf Traits of Individual Intact Herbarium Leaves from Herbarium Specimen Images Using Deep Learning Based Semantic Segmentation

机译:自动提取来自基于深度学习的语义分割的单个完整的植物标记子的表型叶状叶状性状的特征

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摘要

With the increase in the digitization efforts of herbarium collections worldwide, dataset repositories such as iDigBio and GBIF now have hundreds of thousands of herbarium sheet images ready for exploration. Although this serves as a new source of plant leaves data, herbarium datasets have an inherent challenge to deal with the sheets containing other non-plant objects such as color charts, barcodes, and labels. Even for the plant part itself, a combination of different overlapping, damaged, and intact individual leaves exist together with other plant organs such as stems and fruits, which increases the complexity of leaf trait extraction and analysis. Focusing on segmentation and trait extraction on individual intact herbarium leaves, this study proposes a pipeline consisting of deep learning semantic segmentation model (DeepLabv3+), connected component analysis, and a single-leaf classifier trained on binary images to automate the extraction of an intact individual leaf with phenotypic traits. The proposed method achieved a higher F1-score for both the in-house dataset (96%) and on a publicly available herbarium dataset (93%) compared to object detection-based approaches including Faster R-CNN and YOLOv5. Furthermore, using the proposed approach, the phenotypic measurements extracted from the segmented individual leaves were closer to the ground truth measurements, which suggests the importance of the segmentation process in handling background noise. Compared to the object detection-based approaches, the proposed method showed a promising direction toward an autonomous tool for the extraction of individual leaves together with their trait data directly from herbarium specimen images.
机译:随着全球植物标本馆集合的数字化努力的增加,Datigbio和GBIF等数据集储存库现在已经准备好了数十万个植物标料张图片。虽然这是新的植物来源叶数据,但是,植物标本馆数据集具有一个固有的挑战,可以处理包含其他非工厂对象的纸张,如颜色图表,条形码和标签。即使对于植物部分本身,也存在不同重叠,受损和完整的个体叶子的组合与其他植物器官(如茎和水果)一起存在,这增加了叶状提取和分析的复杂性。专注于对个体完整的植物标记叶上的分割和特质提取,本研究提出了一种由深度学习语义分割模型(DEEPLABV3 +),连接的分量分析和在二进制图像上培训的单叶分类器组成的管道,以自动提取完整个体的提取叶子有表型特征。与对象检测的方法相比,所提出的方法对于内部数据集(96%)和公共可用的HERBARIUM数据集(93%)实现了更高的F1分数,包括基于对象检测的方法,包括R-CNN和YOLOV5。此外,使用所提出的方法,从分段的单个叶片提取的表型测量更接近地面真理测量,这表明分割过程在处理背景噪声方面的重要性。与基于物体检测的方法相比,所提出的方法显示了朝向自主工具的有希望的方向,用于将个体与其特征数据直接从HedBarium标本图像中提取。

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