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dc.contributor.authorBaykalov, Pavel
dc.contributor.authorBussmann, Bart
dc.contributor.authorNair, Richard
dc.contributor.authorSmith, Abraham George
dc.contributor.authorBodner, Gernot
dc.contributor.authorHadar, Ofer
dc.contributor.authorLazarovitch, Naftali
dc.contributor.authorRewald, Boris
dc.date.accessioned2024-08-02T00:21:59Z
dc.date.available2024-08-02T00:21:59Z
dc.date.issued2023
dc.identifier.issn1746-4811 Sherpa/RoMEO, JCR
dc.identifier.urihttps://repozitar.mendelu.cz/xmlui/handle/20.500.12698/1931
dc.description.abstractBackground Manual analysis of (mini-)rhizotron (MR) images is tedious. Several methods have been proposed for semantic root segmentation based on homogeneous, single-source MR datasets. Recent advances in deep learning (DL) have enabled automated feature extraction, but comparisons of segmentation accuracy, false positives and transferability are virtually lacking. Here we compare six state-of-the-art methods and propose two improved DL models for semantic root segmentation using a large MR dataset with and without augmented data. We determine the performance of the methods on a homogeneous maize dataset, and a mixed dataset of > 8 species (mixtures), 6 soil types and 4 imaging systems. The generalisation potential of the derived DL models is determined on a distinct, unseen dataset. Results The best performance was achieved by the U-Net models; the more complex the encoder the better the accuracy and generalisation of the model. The heterogeneous mixed MR dataset was a particularly challenging for the non-U-Net techniques. Data augmentation enhanced model performance. We demonstrated the improved performance of deep meta-architectures and feature extractors, and a reduction in the number of false positives. Conclusions Although correction factors are still required to match human labelled root lengths, neural network architectures greatly reduce the time required to compute the root length. The more complex architectures illustrate how future improvements in root segmentation within MR images can be achieved, particularly reaching higher segmentation accuracies and model generalisation when analysing real-world datasets with artefacts-limiting the need for model retraining.en
dc.format122
dc.publisherBioMed Central Ltd.
dc.relationEC/HE/101087262/ERA-Chair:Striving for Excellence in the Forest Ecosystem Research/EXCELLENTIA
dc.relation.ispartofPlant Methods
dc.relation.urihttps://doi.org/10.1186/s13007-023-01101-2
dc.rightsCC BY 4.0
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/
dc.subjectAutomatic image segmentationen
dc.subjectData augmentationen
dc.subjectDeep learningen
dc.subjectFalse positivesen
dc.subjectFine rootsen
dc.subjectImage processingen
dc.subjectMinirhizotronen
dc.subjectNeural networksen
dc.subjectRoot segmentationen
dc.subjectU-Neten
dc.titleSemantic segmentation of plant roots from RGB (mini-) rhizotron images-generalisation potential and false positives of established methods and advanced deep-learning modelsen
dc.typeJ_ČLÁNEK
dc.date.updated2024-08-02T00:21:59Z
dc.description.versionOA
local.identifier.doi10.1186/s13007-023-01101-2
local.identifier.scopus2-s2.0-85175806863
local.identifier.wos001099034900001
local.number6 November
local.volume19
local.identifier.obd43925632
local.identifier.e-issn1746-4811
dc.project.ID101087262
dc.project.IDStriving for Excellence in the Forest Ecosystem Research (EXCELLENTIA)
dc.identifier.orcidRewald, Boris 0000-0001-8098-0616
local.contributor.affiliationLDF
local.horizonHE


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