Literature DB >> 35024618

Panicle-3D: Efficient Phenotyping Tool for Precise Semantic Segmentation of Rice Panicle Point Cloud.

Liang Gong1, Xiaofeng Du1, Kai Zhu1, Ke Lin1, Qiaojun Lou2, Zheng Yuan3, Guoqiang Huang3, Chengliang Liu1.   

Abstract

The automated measurement of crop phenotypic parameters is of great significance to the quantitative study of crop growth. The segmentation and classification of crop point cloud help to realize the automation of crop phenotypic parameter measurement. At present, crop spike-shaped point cloud segmentation has problems such as fewer samples, uneven distribution of point clouds, occlusion of stem and spike, disorderly arrangement of point clouds, and lack of targeted network models. The traditional clustering method can realize the segmentation of the plant organ point cloud with relatively independent spatial location, but the accuracy is not acceptable. This paper first builds a desktop-level point cloud scanning apparatus based on a structured-light projection module to facilitate the point cloud acquisition process. Then, the rice ear point cloud was collected, and the rice ear point cloud data set was made. In addition, data argumentation is used to improve sample utilization efficiency and training accuracy. Finally, a 3D point cloud convolutional neural network model called Panicle-3D was designed to achieve better segmentation accuracy. Specifically, the design of Panicle-3D is aimed at the multiscale characteristics of plant organs, combined with the structure of PointConv and long and short jumps, which accelerates the convergence speed of the network and reduces the loss of features in the process of point cloud downsampling. After comparison experiments, the segmentation accuracy of Panicle-3D reaches 93.4%, which is higher than PointNet. Panicle-3D is suitable for other similar crop point cloud segmentation tasks.
Copyright © 2021 Liang Gong et al.

Entities:  

Year:  2021        PMID: 35024618      PMCID: PMC8720256          DOI: 10.34133/2021/9838929

Source DB:  PubMed          Journal:  Plant Phenomics        ISSN: 2643-6515


  6 in total

1.  Predicting effects of noncoding variants with deep learning-based sequence model.

Authors:  Jian Zhou; Olga G Troyanskaya
Journal:  Nat Methods       Date:  2015-08-24       Impact factor: 28.547

2.  Increased lodging resistance in long-culm, low-lignin gh2 rice for improved feed and bioenergy production.

Authors:  Taiichiro Ookawa; Kazuya Inoue; Makoto Matsuoka; Takeshi Ebitani; Takeshi Takarada; Toshio Yamamoto; Tadamasa Ueda; Tadashi Yokoyama; Chisato Sugiyama; Satoshi Nakaba; Ryo Funada; Hiroshi Kato; Motoki Kanekatsu; Koki Toyota; Takashi Motobayashi; Mehran Vazirzanjani; Seishu Tojo; Tadashi Hirasawa
Journal:  Sci Rep       Date:  2014-10-09       Impact factor: 4.379

3.  Semantic Segmentation of Sorghum Using Hyperspectral Data Identifies Genetic Associations.

Authors:  Chenyong Miao; Alejandro Pages; Zheng Xu; Eric Rodene; Jinliang Yang; James C Schnable
Journal:  Plant Phenomics       Date:  2020-02-04

4.  Robust Surface Reconstruction of Plant Leaves from 3D Point Clouds.

Authors:  Ryuhei Ando; Yuko Ozasa; Wei Guo
Journal:  Plant Phenomics       Date:  2021-04-02

5.  Identification of a Candidate Gene for Panicle Length in Rice (Oryza sativa L.) Via Association and Linkage Analysis.

Authors:  Erbao Liu; Yang Liu; Guocan Wu; Siyuan Zeng; Thu G Tran Thi; Lijun Liang; Yinfeng Liang; Zhiyao Dong; Dong She; Hui Wang; Imdad U Zaid; Delin Hong
Journal:  Front Plant Sci       Date:  2016-05-03       Impact factor: 5.753

6.  Deep machine learning provides state-of-the-art performance in image-based plant phenotyping.

Authors:  Michael P Pound; Jonathan A Atkinson; Alexandra J Townsend; Michael H Wilson; Marcus Griffiths; Aaron S Jackson; Adrian Bulat; Georgios Tzimiropoulos; Darren M Wells; Erik H Murchie; Tony P Pridmore; Andrew P French
Journal:  Gigascience       Date:  2017-10-01       Impact factor: 6.524

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.