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A scalable pipeline to create synthetic datasets from functional–structural plant models for deep learning

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dc.contributor.author Helmrich, Dirk Norbert
dc.contributor.author Bauer, Felix Maximilian
dc.contributor.author Giraud, Mona
dc.contributor.author Schnepf, Andrea
dc.contributor.author Göbbert, Jens Henrik
dc.contributor.author Scharr, Hanno
dc.contributor.author Hvannberg, Ebba Þora
dc.contributor.author Riedel, Morris
dc.date.accessioned 2024-04-19T01:05:29Z
dc.date.available 2024-04-19T01:05:29Z
dc.date.issued 2024-01-01
dc.identifier.citation Helmrich , D N , Bauer , F M , Giraud , M , Schnepf , A , Göbbert , J H , Scharr , H , Hvannberg , E Þ & Riedel , M 2024 , ' A scalable pipeline to create synthetic datasets from functional–structural plant models for deep learning ' , In Silico Plants , vol. 6 , no. 1 . https://doi.org/10.1093/insilicoplants/diad022
dc.identifier.issn 2517-5025
dc.identifier.other 219472064
dc.identifier.other 5186692a-1acb-45d9-8cee-b55f0b2f0e44
dc.identifier.other ORCID: /0000-0003-1542-1062/work/147650201
dc.identifier.other 85181920740
dc.identifier.uri https://hdl.handle.net/20.500.11815/4823
dc.description.abstract In plant science, it is an established method to obtain structural parameters of crops using image analysis. In recent years, deep learning techniques have improved the underlying processes significantly. However, since data acquisition is time and resource consuming, reliable training data are currently limited. To overcome this bottleneck, synthetic data are a promising option for not only enabling a higher order of correctness by offering more training data but also for validation of results. However, the creation of synthetic data is complex and requires extensive knowledge in Computer Graphics, Visualization and High-Performance Computing. We address this by introducing Synavis, a framework that allows users to train networks on real-time generated data. We created a pipeline that integrates realistic plant structures, simulated by the functional–structural plant model framework CPlantBox, into the game engine Unreal Engine. For this purpose, we needed to extend CPlantBox by introducing a new leaf geometrization that results in realistic leafs. All parameterized geometries of the plant are directly provided by the plant model. In the Unreal Engine, it is possible to alter the environment. WebRTC enables the streaming of the final image composition, which, in turn, can then be directly used to train deep neural networks to increase parameter robustness, for further plant trait detection and validation of original parameters. We enable user-friendly ready-to-use pipelines, providing virtual plant experiment and field visualizations, a python-binding library to access synthetic data and a ready-to-run example to train models.
dc.format.extent 29658212
dc.format.extent
dc.language.iso en
dc.relation.ispartofseries In Silico Plants; 6(1)
dc.rights info:eu-repo/semantics/openAccess
dc.subject Computer Vision
dc.subject FSPM
dc.subject HPC
dc.subject Unreal Engine
dc.subject Visualization
dc.subject Crop Simulation
dc.subject Agronomy and Crop Science
dc.subject Human-Computer Interaction
dc.subject Computer Vision and Pattern Recognition
dc.subject SDG 9 - Industry, Innovation, and Infrastructure
dc.title A scalable pipeline to create synthetic datasets from functional–structural plant models for deep learning
dc.type /dk/atira/pure/researchoutput/researchoutputtypes/contributiontojournal/article
dc.description.version Peer reviewed
dc.identifier.doi 10.1093/insilicoplants/diad022
dc.relation.url https://doi.org/10.1093/insilicoplants/diad022
dc.contributor.department Faculty of Industrial Engineering, Mechanical Engineering and Computer Science


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