Deep learning for multi-task plant phenotyping

Plant phenotyping has continued to pose a challenge to computer vision for many years. There is a particular demand to accurately quantify images of crops, and the natural variability and structure of these plants presents unique difficulties. Recently, machine learning approaches have shown impress...

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Main Authors: Pound, Michael P., Atkinson, Jonathan A., Wells, Darren M., Pridmore, Tony P., French, Andrew P.
Format: Conference or Workshop Item
Published: 2017
Online Access:https://eprints.nottingham.ac.uk/47610/
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author Pound, Michael P.
Atkinson, Jonathan A.
Wells, Darren M.
Pridmore, Tony P.
French, Andrew P.
author_facet Pound, Michael P.
Atkinson, Jonathan A.
Wells, Darren M.
Pridmore, Tony P.
French, Andrew P.
author_sort Pound, Michael P.
building Nottingham Research Data Repository
collection Online Access
description Plant phenotyping has continued to pose a challenge to computer vision for many years. There is a particular demand to accurately quantify images of crops, and the natural variability and structure of these plants presents unique difficulties. Recently, machine learning approaches have shown impressive results in many areas of computer vision, but these rely on large datasets that are at present not available for crops. We present a new dataset, called ACID, that provides hundreds of accurately annotated images of wheat spikes and spikelets, along with image level class annotation. We then present a deep learning approach capable of accurately localising wheat spikes and spikelets, despite the varied nature of this dataset. As well as locating features, our network offers near perfect counting accuracy for spikes (95.91%) and spikelets (99.66%). We also extend the network to perform simultaneous classification of images, demonstrating the power of multi-task deep architectures for plant phenotyping. We hope that our dataset will be useful to researchers in continued improvement of plant and crop phenotyping. With this in mind, alongside the dataset we will make all code and trained models available online.
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spelling nottingham-476102020-05-04T19:13:48Z https://eprints.nottingham.ac.uk/47610/ Deep learning for multi-task plant phenotyping Pound, Michael P. Atkinson, Jonathan A. Wells, Darren M. Pridmore, Tony P. French, Andrew P. Plant phenotyping has continued to pose a challenge to computer vision for many years. There is a particular demand to accurately quantify images of crops, and the natural variability and structure of these plants presents unique difficulties. Recently, machine learning approaches have shown impressive results in many areas of computer vision, but these rely on large datasets that are at present not available for crops. We present a new dataset, called ACID, that provides hundreds of accurately annotated images of wheat spikes and spikelets, along with image level class annotation. We then present a deep learning approach capable of accurately localising wheat spikes and spikelets, despite the varied nature of this dataset. As well as locating features, our network offers near perfect counting accuracy for spikes (95.91%) and spikelets (99.66%). We also extend the network to perform simultaneous classification of images, demonstrating the power of multi-task deep architectures for plant phenotyping. We hope that our dataset will be useful to researchers in continued improvement of plant and crop phenotyping. With this in mind, alongside the dataset we will make all code and trained models available online. 2017-10-22 Conference or Workshop Item PeerReviewed Pound, Michael P., Atkinson, Jonathan A., Wells, Darren M., Pridmore, Tony P. and French, Andrew P. (2017) Deep learning for multi-task plant phenotyping. In: ICCV 2017 International Conference on Computer Vision, 22-29 October, 2017, Venice, Italy. http://openaccess.thecvf.com/content_ICCV_2017_workshops/w29/html/Pound_Deep_Learning_for_ICCV_2017_paper.html
spellingShingle Pound, Michael P.
Atkinson, Jonathan A.
Wells, Darren M.
Pridmore, Tony P.
French, Andrew P.
Deep learning for multi-task plant phenotyping
title Deep learning for multi-task plant phenotyping
title_full Deep learning for multi-task plant phenotyping
title_fullStr Deep learning for multi-task plant phenotyping
title_full_unstemmed Deep learning for multi-task plant phenotyping
title_short Deep learning for multi-task plant phenotyping
title_sort deep learning for multi-task plant phenotyping
url https://eprints.nottingham.ac.uk/47610/
https://eprints.nottingham.ac.uk/47610/