Abstract

BackgroundIn 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.ResultsWe 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.ConclusionsWe 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.

Highlights

  • 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

  • The network was able to adapt to different plant species via transfer learning, offering similar accuracy when transferred to an Arabidopsis thaliana plate assay

  • We present RootNav 2.0, a new approach to root image analysis driven by a deep neural network

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Summary

Background

Plant phenotyping plays a key role in plant science research, underpinning large-scale genetic discovery and the breeding of more resilient traits [1]. It can be seen that the correlation between RootNav 2.0 and ground truth ranges from r2 of 0.539 (first-order root length) to 0.941 (convex hull area) Because this is such a small dataset, the test set contains only 15 images, meaning that there is inevitably more noise in the results than in the previous experiments. In RootNav 1.0 this is due to the human input required; with RootNav 2.0 the path finding takes longer if there are more lateral roots or roots are longer On some images such as those in the rapeseed dataset, RootNav 1.0 would take less time to process each image if only course traits such as first-order root length were required because significant user time is taken in annotating and correcting second-order root positions. If performance were a serious consideration, a dedicated parallel hardware set-up could streamline RootNav 2.0 performance considerably

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