Projects per year
Abstract
Background: High-throughput phenotyping based on non-destructive imaging has great potential in plant biology and breeding programs. However, efficient feature extraction and quantification from image data remains a bottleneck that needs to be addressed. Advances in sensor technology have led to the increasing use of imaging to monitor and measure a range of plants including the model Arabidopsis thaliana. These extensive datasets contain diverse trait information, but feature extraction is often still implemented using approaches requiring substantial manual input. Results: The computational detection and segmentation of individual fruits from images is a challenging task, for which we have developed DeepPod, a patch-based 2-phase deep learning framework. The associated manual annotation task is simple and cost-effective without the need for detailed segmentation or bounding boxes. Convolutional neural networks (CNNs) are used for classifying different parts of the plant inflorescence, including the tip, base, and body of the siliques and the stem inflorescence. In a post-processing step, different parts of the same silique are joined together for silique detection and localization, whilst taking into account possible overlapping among the siliques. The proposed framework is further validated on a separate test dataset of 2,408 images. Comparisons of the CNN-based prediction with manual counting (R 2 = 0.90) showed the desired capability of methods for estimating silique number. Conclusions: The DeepPod framework provides a rapid and accurate estimate of fruit number in a model system widely used by biologists to investigate many fundemental processes underlying growth and reproduction.
Original language | English |
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Article number | giaa012 |
Number of pages | 13 |
Journal | GigaScience |
Volume | 9 |
Issue number | 3 |
DOIs | |
Publication status | Published - 04 Mar 2020 |
Keywords
- deep learning
- fruit counting
- Arabidopsis
- plant phenotyping
- object detection
- image analysis
- Phenotype
- Quantitative Trait, Heritable
- Fruit/genetics
- Models, Genetic
- Software
- Deep Learning
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Dive into the research topics of 'DeepPod: A convolutional neural network based quantification of fruit number in Arabidopsis'. Together they form a unique fingerprint.Profiles
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John Doonan
Person: Teaching And Research
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Chuan Lu
- Department of Computer Science - Senior Lecturer in Bioinformatics
Person: Teaching And Research
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Datasets
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DeepPod: A convolutional Neural Network Based Quantification of Fruit Number in Arabidopsis
Garzon Martinez, G. A., Lu, C., Doonan, J., Hamidinekoo, A., Ghahremani Boozandani, M. & Corke, F., Prifysgol Aberystwyth | Aberystwyth University, 05 Jun 2019
DOI: 10.20391/21154739-f718-457b-96ff-838408f2b696
Dataset
File
Projects
- 2 Finished
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ISPG BBSRC Strategic Programme in grassland and crops for challenging environments see project 12844
Doonan, J. (PI), Armstead, I. (CoI), Donnison, I. (CoI) & Lu, C. (CoI)
Biotechnology and Biological Sciences Research Council
01 Apr 2017 → 31 Mar 2019
Project: Externally funded research
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ISPG-National Phenomics Centre see project 12520
Doonan, J. (PI), Camargo-Rodriguez, A. (CoI), Clare, A. (CoI), Draper, J. (CoI), Howarth, C. (CoI), Powell, W. (CoI), Swain, M. (CoI) & Zwiggelaar, R. (CoI)
Biotechnology and Biological Sciences Research Council
01 Apr 2017 → 31 Mar 2019
Project: Externally funded research