Non-destructive assessments of plant phenotypic traits using high-quality three-dimensional (3D) and multispectral data can deepen breeders' understanding of plant growth and allow them to make informed managerial decisions. However, subjective viewpoint selection and complex illumination effects under natural light conditions decrease the data quality and increase the difficulty of resolving phenotypic parameters. We proposed methods for adaptive data acquisition and reflectance correction respectively, to generate high-quality 3D multispectral point clouds (3DMPCs) of plants. In the first stage, we proposed an efficient next-best-view (NBV) planning method based on a novel UGV platform with a multi-sensor-equipped robotic arm. In the second stage, we eliminated the illumination effects by using the neural reference field (NeREF) to predict the digital number (DN) of the reference. We tested them on 6 perilla and 6 tomato plants, and selected 2 visible leaves and 4 regions of interest (ROIs) for each plant to assess the biomass and the chlorophyll content. For NBV planning, the average execution time for single perilla and tomato plant at a joint speed of 1.55 rad/s was 58.70 s and 53.60 s respectively. The whole-plant data integrity was improved by an average of 27% compared to using fixed viewpoints alone, and the coefficients of determination (R2) for leaf biomass estimation reached 0.99 and 0.92. For reflectance correction, the average root mean squared error of the reflectance spectra with hemisphere reference-based correction at different ROIs was 0.08 and 0.07 for perilla and tomato. The R2 of chlorophyll content estimation was 0.91 and 0.93 respectively when principal component analysis and Gaussian process regression were applied. Our approach is promising for generating high-quality 3DMPCs of plants under natural light conditions and facilitates accurate plant phenotyping.


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