PhenoTrack3D: An automatic high-throughput phenotyping pipeline to track maize organs over time
Daviet B., Fernandez R., Cabrera-Bosquet L., Pradal C., Fournier C.. 2022. Plant Methods, 18 (1) : 14 p..
Background: High-throughput phenotyping platforms allow the study of the form and function of a large number of genotypes subjected to different growing conditions (GxE). A number of image acquisition and processing pipelines have been developed to automate this process, for micro-plots in the field and for individual plants in controlled conditions. Capturing shoot development requires extracting from images both the evolution of the 3D plant architecture as a whole, and a temporal tracking of the growth of its organs. Results: We propose PhenoTrack3D, a new pipeline to extract a 3D¿+¿t reconstruction of maize. It allows the study of plant architecture and individual organ development over time during the entire growth cycle. The method tracks the development of each organ from a time-series of plants whose organs have already been segmented in 3D using existing methods, such as Phenomenal [Artzet et al. in BioRxiv 1:805739, 2019] which was chosen in this study. First, a novel stem detection method based on deep-learning is used to locate precisely the point of separation between ligulated and growing leaves. Second, a new and original multiple sequence alignment algorithm has been developed to perform the temporal tracking of ligulated leaves, which have a consistent geometry over time and an unambiguous topological position. Finally, growing leaves are back-tracked with a distance-based approach. This pipeline is validated on a challenging dataset of 60 maize hybrids imaged daily from emergence to maturity in the PhenoArch platform (ca. 250,000 images). Stem tip was precisely detected over time (RMSE¿<¿2.1 cm). 97.7% and 85.3% of ligulated and growing leaves respectively were assigned to the correct rank after tracking, on 30 plants¿×¿43 dates. The pipeline allowed to extract various development and architecture traits at organ level, with good correlation to manual observations overall, on random subsets of 10–355 plants. Conclusions: We developed a novel phenot
Mots-clés : phénotype; feuille; croissance; physiologie végétale; anatomie végétale; morphologie végétale
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Agents Cirad, auteurs de cette publication :
- Fernandez Romain — Bios / UMR AGAP
- Pradal Christophe — Bios / UMR AGAP