Abstract

With the development of digital agriculture, 3D reconstruction technology has been widely used to analyse crop phenotypes. To date, most research on 3D reconstruction of field crops has been limited to analysis of population characteristics. Therefore, in this study, we propose a method based on low-cost 3D reconstruction technology to analyse the phenotype development during the whole growth period. Based on the phenotypic parameters extracted from the 3D reconstruction model, we identified the “phenotypic fingerprint” of the relevant phenotypes throughout the whole growth period of soybean plants and completed analysis of the plant growth patterns using a logistic growth model. The phenotypic fingerprint showed that, before the R3 period, the growth of the five varieties was similar. After the R5 period, the differences among the five cultivars gradually increased. This result indicates that the phenotypic fingerprint can accurately reveal the patterns of phenotypic changes. The logistic growth model of soybean plants revealed the time points of maximum growth rate of the five soybean varieties, and this information can provide a basis for developing guidelines for water and fertiliser application to crops. These findings will provide effective guidance for breeding and field management of soybean and other crops.

Highlights

  • With the development of digital agriculture, 3D reconstruction technology has been widely used to analyse crop phenotypes

  • Virtual plants are developed by digital agriculture, computer graphics, and 3D reconstruction technology; because crop morphological structure is reproduced in 3D form, virtual plants can resolve the issue of parameter extraction caused by the low resolution of 2D images[2,3]

  • Because of the complexity of soybean plants, there have been few studies on the extraction of phenotypic parameters and analysis of growth patterns based on virtual plant models

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Summary

Introduction

With the development of digital agriculture, 3D reconstruction technology has been widely used to analyse crop phenotypes. The logistic growth model of soybean plants revealed the time points of maximum growth rate of the five soybean varieties, and this information can provide a basis for developing guidelines for water and fertiliser application to crops These findings will provide effective guidance for breeding and field management of soybean and other crops. Virtual plants are developed by digital agriculture, computer graphics, and 3D reconstruction technology; because crop morphological structure is reproduced in 3D form, virtual plants can resolve the issue of parameter extraction caused by the low resolution of 2D images[2,3]. Because of the complexity of soybean plants, there have been few studies on the extraction of phenotypic parameters and analysis of growth patterns based on virtual plant models. The accurate extraction of plant dynamic phenotypic parameters using virtual plants and the realisation of the design breeding mode, which combines molecular breeding with phenotypic breeding approaches, have become key problems to improve soybean yield

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