Validation of plant part measurements using a 3D reconstruction method suitable for high-throughput seedling phenotyping

被引:0
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作者
Franck Golbach
Gert Kootstra
Sanja Damjanovic
Gerwoud Otten
Rick van de Zedde
机构
[1] Wageningen UR Food & Biobased Research,
来源
关键词
High-throughput phenotyping; Seedling phenotyping; 3D Plant model; Plant trait measurements;
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摘要
In plant phenotyping, there is a demand for high-throughput, non-destructive systems that can accurately analyse various plant traits by measuring features such as plant volume, leaf area, and stem length. Existing vision-based systems either focus on speed using 2D imaging, which is consequently inaccurate, or on accuracy using time-consuming 3D methods. In this paper, we present a computer-vision system for seedling phenotyping that combines best of both approaches by utilizing a fast three-dimensional (3D) reconstruction method. We developed image processing methods for the identification and segmentation of plant organs (stem and leaf) from the 3D plant model. Various measurements of plant features such as plant volume, leaf area, and stem length are estimated based on these plant segments. We evaluate the accuracy of our system by comparing the measurements of our methods with ground truth measurements obtained destructively by hand. The results indicate that the proposed system is very promising.
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页码:663 / 680
页数:17
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