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Semantic Segmentation of Herbarium Specimens Using Deep Learning Techniques

机译:利用深层学习技术的植物标目标本的语义分割

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Automated identification of herbarium species is of great interest as quite a number of these collections are still unidentified while others need to be updated following recent taxonomic knowledge. One challenging task in automated identification process of these species is the existence of visual noise such as plant information labels, color codes and other scientific annotations which are mostly placed at different locations on the herbarium mounting sheet. This kind of noise needs to be removed before applying different species identification models as it can significantly affect the models' performance. In this work we propose the use of deep learning semantic segmentation model as a method for removing the background noise from herbarium images. Two different semantic segmentation models, namely DeepLab version three plus (DeepLabv3+) and the Full- Resolution Residual Networks (FRNN-A), were applied and evaluated in this study. The results indicate that FRNN-A performed slightly better with a mean Intersection of Union (IoU) of 99.2% compared to 98.1% mean IoU attained by DeepLabv3+ model on the test set. The pixel -wise accuracy for two classes (herbarium specimen and background) was found to be 99.5% and 99.7%, respectively using FRNN-A model while the DeepLabv3+ was able to segment herbarium specimen and the rest of the background with a pixel-wise accuracy of 98.4% and 99.6%, respectively. This work evidently suggests that deep learning semantic segmentation could be successfully applied as a pre-processing step in removing visual noise existing in herbarium images before applying different classification models.
机译:自动鉴定植物标目人物的鉴定是非常兴趣的,因为许多这些系列仍然不明,而其他人则需要在最近的分类学知识后更新。这些物种的自动识别过程中的一个具有挑战性的任务是存在视觉噪声,例如工厂信息标签,颜色代码和其他科学注释,这些注释大多被放置在植物标记安装纸上的不同位置。在应用不同的物种识别模型之前,需要删除这种噪音,因为它可以显着影响模型的性能。在这项工作中,我们建议使用深度学习语义分割模型作为从植物标本图像中去除背景噪声的方法。在本研究中应用并评估了两个不同的语义分割模型,即Deeplab版本三加(Deeplabv3 +)和全分辨率的残余网络(FRNN-A)。结果表明,对于99.2%的平均联合(IOU)的平均交叉表达略微表现出99.2%,而DEEPLABV3 +模型在试验组上获得的98.1%。发现两个类(植物标料标本和背景)的像素精度为99.5%和99.7%,分别使用FRNN-A模型,而DEEPLABV3 +能够用像素 - 明智地分割植物标目标本和其余的背景准确性分别为98.4%和99.6%。这项工作显然表明,在应用不同的分类模型之前,可以成功地将深度学习语义分割作为预处理步骤作为预处理步骤,以消除植物标目图像中存在的视觉噪声。

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