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PSegNet: Simultaneous Semantic and Instance Segmentation for Point Clouds of Plants

Phenotyping of plant growth improves the understanding of complex genetic traits and eventually expedites the development of modern breeding and intelligent agriculture. In phenotyping, segmentation of 3D point clouds of plant organs such as leaves and stems contributes to automatic growth monitorin...

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Autores principales: Li, Dawei, Li, Jinsheng, Xiang, Shiyu, Pan, Anqi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AAAS 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9157368/
https://www.ncbi.nlm.nih.gov/pubmed/35693119
http://dx.doi.org/10.34133/2022/9787643
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author Li, Dawei
Li, Jinsheng
Xiang, Shiyu
Pan, Anqi
author_facet Li, Dawei
Li, Jinsheng
Xiang, Shiyu
Pan, Anqi
author_sort Li, Dawei
collection PubMed
description Phenotyping of plant growth improves the understanding of complex genetic traits and eventually expedites the development of modern breeding and intelligent agriculture. In phenotyping, segmentation of 3D point clouds of plant organs such as leaves and stems contributes to automatic growth monitoring and reflects the extent of stress received by the plant. In this work, we first proposed the Voxelized Farthest Point Sampling (VFPS), a novel point cloud downsampling strategy, to prepare our plant dataset for training of deep neural networks. Then, a deep learning network—PSegNet, was specially designed for segmenting point clouds of several species of plants. The effectiveness of PSegNet originates from three new modules including the Double-Neighborhood Feature Extraction Block (DNFEB), the Double-Granularity Feature Fusion Module (DGFFM), and the Attention Module (AM). After training on the plant dataset prepared with VFPS, the network can simultaneously realize the semantic segmentation and the leaf instance segmentation for three plant species. Comparing to several mainstream networks such as PointNet++, ASIS, SGPN, and PlantNet, the PSegNet obtained the best segmentation results quantitatively and qualitatively. In semantic segmentation, PSegNet achieved 95.23%, 93.85%, 94.52%, and 89.90% for the mean Prec, Rec, F1, and IoU, respectively. In instance segmentation, PSegNet achieved 88.13%, 79.28%, 83.35%, and 89.54% for the mPrec, mRec, mCov, and mWCov, respectively.
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spelling pubmed-91573682022-06-10 PSegNet: Simultaneous Semantic and Instance Segmentation for Point Clouds of Plants Li, Dawei Li, Jinsheng Xiang, Shiyu Pan, Anqi Plant Phenomics Research Article Phenotyping of plant growth improves the understanding of complex genetic traits and eventually expedites the development of modern breeding and intelligent agriculture. In phenotyping, segmentation of 3D point clouds of plant organs such as leaves and stems contributes to automatic growth monitoring and reflects the extent of stress received by the plant. In this work, we first proposed the Voxelized Farthest Point Sampling (VFPS), a novel point cloud downsampling strategy, to prepare our plant dataset for training of deep neural networks. Then, a deep learning network—PSegNet, was specially designed for segmenting point clouds of several species of plants. The effectiveness of PSegNet originates from three new modules including the Double-Neighborhood Feature Extraction Block (DNFEB), the Double-Granularity Feature Fusion Module (DGFFM), and the Attention Module (AM). After training on the plant dataset prepared with VFPS, the network can simultaneously realize the semantic segmentation and the leaf instance segmentation for three plant species. Comparing to several mainstream networks such as PointNet++, ASIS, SGPN, and PlantNet, the PSegNet obtained the best segmentation results quantitatively and qualitatively. In semantic segmentation, PSegNet achieved 95.23%, 93.85%, 94.52%, and 89.90% for the mean Prec, Rec, F1, and IoU, respectively. In instance segmentation, PSegNet achieved 88.13%, 79.28%, 83.35%, and 89.54% for the mPrec, mRec, mCov, and mWCov, respectively. AAAS 2022-05-23 /pmc/articles/PMC9157368/ /pubmed/35693119 http://dx.doi.org/10.34133/2022/9787643 Text en Copyright © 2022 Dawei Li et al. https://creativecommons.org/licenses/by/4.0/Exclusive Licensee Nanjing Agricultural University. Distributed under a Creative Commons Attribution License (CC BY 4.0).
spellingShingle Research Article
Li, Dawei
Li, Jinsheng
Xiang, Shiyu
Pan, Anqi
PSegNet: Simultaneous Semantic and Instance Segmentation for Point Clouds of Plants
title PSegNet: Simultaneous Semantic and Instance Segmentation for Point Clouds of Plants
title_full PSegNet: Simultaneous Semantic and Instance Segmentation for Point Clouds of Plants
title_fullStr PSegNet: Simultaneous Semantic and Instance Segmentation for Point Clouds of Plants
title_full_unstemmed PSegNet: Simultaneous Semantic and Instance Segmentation for Point Clouds of Plants
title_short PSegNet: Simultaneous Semantic and Instance Segmentation for Point Clouds of Plants
title_sort psegnet: simultaneous semantic and instance segmentation for point clouds of plants
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9157368/
https://www.ncbi.nlm.nih.gov/pubmed/35693119
http://dx.doi.org/10.34133/2022/9787643
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