Enhancing plant morphological trait identification in herbarium collections through deep learning–based segmentation

IF 2.4 3区 生物学 Q2 PLANT SCIENCES Applications in Plant Sciences Pub Date : 2025-02-13 DOI:10.1002/aps3.70000
Hanane Ariouat, Youcef Sklab, Edi Prifti, Jean-Daniel Zucker, Eric Chenin
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Abstract

Premise

Deep learning has become increasingly important in the analysis of digitized herbarium collections, which comprise millions of scans that provide valuable resources for studying plant evolution and biodiversity. However, leveraging deep learning algorithms to analyze these scans presents significant challenges, partly due to the heterogeneous nature of the non-plant material that forms the background of the scans. We hypothesize that removing such backgrounds can improve the performance of these algorithms.

Methods

We propose a novel method based on deep learning to segment and generate plant masks from herbarium scans and subsequently remove the non-plant backgrounds. The semi-automatic preprocessing stages involve the identification and removal of non-plant elements, substantially reducing the manual effort required to prepare the training dataset.

Results

The results highlight the importance of effective image segmentation, which achieved an F1 score of up to 96.6%. Moreover, when used in classification models for plant morphological trait identification, the images resulting from segmentation improved classification accuracy by up to 3% and F1 score by up to 7% compared to non-segmented images.

Discussion

Our approach isolates plant elements in herbarium scans by removing background elements to improve classification tasks. We demonstrate that image segmentation significantly enhances the performance of plant morphological trait identification models.

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基于深度学习分割的植物形态特征识别方法研究
深度学习在分析数字化植物标本馆藏品方面变得越来越重要,这些藏品包括数百万次扫描,为研究植物进化和生物多样性提供了宝贵的资源。然而,利用深度学习算法来分析这些扫描带来了重大挑战,部分原因是形成扫描背景的非植物材料的异质性。我们假设去除这些背景可以提高这些算法的性能。方法提出了一种基于深度学习的方法,从植物标本扫描中分割和生成植物掩模,并随后去除非植物背景。半自动预处理阶段包括识别和去除非植物元素,大大减少了准备训练数据集所需的人工工作量。结果显示了有效分割图像的重要性,F1分值高达96.6%。此外,当用于植物形态性状鉴定的分类模型时,与未分割的图像相比,分割后的图像分类精度提高了3%,F1分数提高了7%。我们的方法通过去除背景元素来分离植物标本扫描中的植物元素,从而改善分类任务。我们证明了图像分割显著提高了植物形态性状识别模型的性能。
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来源期刊
CiteScore
7.30
自引率
0.00%
发文量
50
审稿时长
12 weeks
期刊介绍: Applications in Plant Sciences (APPS) is a monthly, peer-reviewed, open access journal promoting the rapid dissemination of newly developed, innovative tools and protocols in all areas of the plant sciences, including genetics, structure, function, development, evolution, systematics, and ecology. Given the rapid progress today in technology and its application in the plant sciences, the goal of APPS is to foster communication within the plant science community to advance scientific research. APPS is a publication of the Botanical Society of America, originating in 2009 as the American Journal of Botany''s online-only section, AJB Primer Notes & Protocols in the Plant Sciences. APPS publishes the following types of articles: (1) Protocol Notes describe new methods and technological advancements; (2) Genomic Resources Articles characterize the development and demonstrate the usefulness of newly developed genomic resources, including transcriptomes; (3) Software Notes detail new software applications; (4) Application Articles illustrate the application of a new protocol, method, or software application within the context of a larger study; (5) Review Articles evaluate available techniques, methods, or protocols; (6) Primer Notes report novel genetic markers with evidence of wide applicability.
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