拟南芥器官分割的改良分层转换器

IF 2.6 4区 工程技术 Q1 Mathematics
Yuhui Zheng, Dongwei Wang, Ning Jin, Xueguan Zhao, Fengmei Li, Fengbo Sun, Gang Dou, Haoran Bai
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引用次数: 0

摘要

植物器官分割是提取植物表型的关键一步。尽管基于点的神经网络取得了进步,但植物点云分割领域仍缺乏足够的数据集。在本研究中,我们利用 L 系统生成拟南芥模型,并提出了表面加权采样方法,从而解决了这一问题。这种方法可实现自动点取样和注释,从而生成完全注释的点云。为了创建拟南芥数据集,我们采用了体素中心点采样和随机采样作为点云下采样方法,有效地减少了点的数量。为了提高植物点云语义分割的效率,我们引入了植物分层变换器。该网络是分层变换器的改进版,加入了快速下采样层。我们在数据集上对改进后的网络进行了训练和测试,并将其性能与 PointNet++、PAConv 和原始分层变换器网络进行了比较。在语义分割方面,改进网络的平均精度、召回率、F1 分数和 IoU 分别为 84.20%、83.03%、83.61% 和 73.11%。它的表现优于 PointNet++ 和 PAConv,与原始网络的表现相似。在效率方面,训练时间和推理时间分别为 714.3 毫秒和 597.9 毫秒,与原始网络相比分别减少了 320.9 毫秒和 271.8 毫秒。改进后的网络在保持分割性能的同时,大大加快了将点云输入网络的速度。我们展示了虚拟植物和深度学习方法在快速提取植物表型方面的潜力,有助于推动植物表型研究的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The improved stratified transformer for organ segmentation of Arabidopsis.

Segmenting plant organs is a crucial step in extracting plant phenotypes. Despite the advancements in point-based neural networks, the field of plant point cloud segmentation suffers from a lack of adequate datasets. In this study, we addressed this issue by generating Arabidopsis models using L-system and proposing the surface-weighted sampling method. This approach enables automated point sampling and annotation, resulting in fully annotated point clouds. To create the Arabidopsis dataset, we employed Voxel Centroid Sampling and Random Sampling as point cloud downsampling methods, effectively reducing the number of points. To enhance the efficiency of semantic segmentation in plant point clouds, we introduced the Plant Stratified Transformer. This network is an improved version of the Stratified Transformer, incorporating the Fast Downsample Layer. Our improved network underwent training and testing on our dataset, and we compared its performance with PointNet++, PAConv, and the original Stratified Transformer network. For semantic segmentation, our improved network achieved mean Precision, Recall, F1-score and IoU of 84.20, 83.03, 83.61 and 73.11%, respectively. It outperformed PointNet++ and PAConv and performed similarly to the original network. Regarding efficiency, the training time and inference time were 714.3 and 597.9 ms, respectively, which were reduced by 320.9 and 271.8 ms, respectively, compared to the original network. The improved network significantly accelerated the speed of feeding point clouds into the network while maintaining segmentation performance. We demonstrated the potential of virtual plants and deep learning methods in rapidly extracting plant phenotypes, contributing to the advancement of plant phenotype research.

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来源期刊
Mathematical Biosciences and Engineering
Mathematical Biosciences and Engineering 工程技术-数学跨学科应用
CiteScore
3.90
自引率
7.70%
发文量
586
审稿时长
>12 weeks
期刊介绍: Mathematical Biosciences and Engineering (MBE) is an interdisciplinary Open Access journal promoting cutting-edge research, technology transfer and knowledge translation about complex data and information processing. MBE publishes Research articles (long and original research); Communications (short and novel research); Expository papers; Technology Transfer and Knowledge Translation reports (description of new technologies and products); Announcements and Industrial Progress and News (announcements and even advertisement, including major conferences).
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