Robail Yasrab
RootNav 2.0: Deep learning for automatic navigation of complex plant root architectures
Yasrab, Robail; Atkinson, Jonathan A; Wells, Darren M; French, Andrew P; Pridmore, Tony P; Pound, Michael P
Authors
JONATHAN ATKINSON JONATHAN.ATKINSON@NOTTINGHAM.AC.UK
Assistant Professor
DARREN WELLS DARREN.WELLS@NOTTINGHAM.AC.UK
Principal Research Fellow
ANDREW FRENCH andrew.p.french@nottingham.ac.uk
Professor of Computer Science
TONY PRIDMORE tony.pridmore@nottingham.ac.uk
Professor of Computer Science
MICHAEL POUND Michael.Pound@nottingham.ac.uk
Associate Professor
Abstract
BACKGROUND: In recent years quantitative analysis of root growth has become increasingly important as a way to explore the influence of abiotic stress such as high temperature and drought on a plant's ability to take up water and nutrients. Segmentation and feature extraction of plant roots from images presents a significant computer vision challenge. Root images contain complicated structures, variations in size, background, occlusion, clutter and variation in lighting conditions. We present a new image analysis approach that provides fully automatic extraction of complex root system architectures from a range of plant species in varied imaging set-ups. Driven by modern deep-learning approaches, RootNav 2.0 replaces previously manual and semi-automatic feature extraction with an extremely deep multi-task convolutional neural network architecture. The network also locates seeds, first order and second order root tips to drive a search algorithm seeking optimal paths throughout the image, extracting accurate architectures without user interaction. RESULTS: We develop and train a novel deep network architecture to explicitly combine local pixel information with global scene information in order to accurately segment small root features across high-resolution images. The proposed method was evaluated on images of wheat (Triticum aestivum L.) from a seedling assay. Compared with semi-automatic analysis via the original RootNav tool, the proposed method demonstrated comparable accuracy, with a 10-fold increase in speed. The network was able to adapt to different plant species via transfer learning, offering similar accuracy when transferred to an Arabidopsis thaliana plate assay. A final instance of transfer learning, to images of Brassica napus from a hydroponic assay, still demonstrated good accuracy despite many fewer training images. CONCLUSIONS: We present RootNav 2.0, a new approach to root image analysis driven by a deep neural network. The tool can be adapted to new image domains with a reduced number of images, and offers substantial speed improvements over semi-automatic and manual approaches. The tool outputs root architectures in the widely accepted RSML standard, for which numerous analysis packages exist (http://rootsystemml.github.io/), as well as segmentation masks compatible with other automated measurement tools. The tool will provide researchers with the ability to analyse root systems at larget scales than ever before, at a time when large scale genomic studies have made this more important than ever.
Citation
Yasrab, R., Atkinson, J. A., Wells, D. M., French, A. P., Pridmore, T. P., & Pound, M. P. (2019). RootNav 2.0: Deep learning for automatic navigation of complex plant root architectures. GigaScience, 8(11), Article giz123. https://doi.org/10.1093/gigascience/giz123
Journal Article Type | Article |
---|---|
Acceptance Date | Sep 22, 2019 |
Online Publication Date | Nov 8, 2019 |
Publication Date | Nov 1, 2019 |
Deposit Date | Jan 22, 2020 |
Publicly Available Date | Jan 23, 2020 |
Journal | GigaScience |
Electronic ISSN | 2047-217X |
Publisher | Oxford University Press |
Peer Reviewed | Peer Reviewed |
Volume | 8 |
Issue | 11 |
Article Number | giz123 |
DOI | https://doi.org/10.1093/gigascience/giz123 |
Keywords | Computer Science Applications; Health Informatics |
Public URL | https://nottingham-repository.worktribe.com/output/3747889 |
Publisher URL | https://academic.oup.com/gigascience/article/8/11/giz123/5614712 |
Files
giz123
(2.8 Mb)
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Publisher Licence URL
https://creativecommons.org/licenses/by/4.0/
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