» Articles » PMID: 39339587

High-Precision Automated Soybean Phenotypic Feature Extraction Based on Deep Learning and Computer Vision

Overview
Journal Plants (Basel)
Date 2024 Sep 28
PMID 39339587
Authors
Affiliations
Soon will be listed here.
Abstract

The automated collection of plant phenotypic information has become a trend in breeding and smart agriculture. Four YOLOv8-based models were used to segment mature soybean plants placed in a simple background in a laboratory environment, identify pods, distinguish the number of soybeans in each pod, and obtain soybean phenotypes. The YOLOv8-Repvit model yielded the most optimal recognition results, with an R2 coefficient value of 0.96 for both pods and beans, and the RMSE values were 2.89 and 6.90, respectively. Moreover, a novel algorithm was devised to efficiently differentiate between the main stem and branches of soybean plants, called the midpoint coordinate algorithm (MCA). This was accomplished by linking the white pixels representing the stems in each column of the binary image to draw curves that represent the plant structure. The proposed method reduces computational time and spatial complexity in comparison to the A* algorithm, thereby providing an efficient and accurate approach for measuring the phenotypic characteristics of soybean plants. This research lays a technical foundation for obtaining the phenotypic data of densely overlapped and partitioned mature soybean plants under field conditions at harvest.

References
1.
Araus J, Cairns J . Field high-throughput phenotyping: the new crop breeding frontier. Trends Plant Sci. 2013; 19(1):52-61. DOI: 10.1016/j.tplants.2013.09.008. View

2.
He H, Ma X, Guan H, Wang F, Shen P . Recognition of soybean pods and yield prediction based on improved deep learning model. Front Plant Sci. 2023; 13:1096619. PMC: 9880192. DOI: 10.3389/fpls.2022.1096619. View

3.
Zhu Y, Gu Q, Zhao Y, Wan H, Wang R, Zhang X . Quantitative Extraction and Evaluation of Tomato Fruit Phenotypes Based on Image Recognition. Front Plant Sci. 2022; 13:859290. PMC: 9044966. DOI: 10.3389/fpls.2022.859290. View

4.
Lv M, Su W . YOLOV5-CBAM-C3TR: an optimized model based on transformer module and attention mechanism for apple leaf disease detection. Front Plant Sci. 2024; 14:1323301. PMC: 10822903. DOI: 10.3389/fpls.2023.1323301. View

5.
Xiong X, Duan L, Liu L, Tu H, Yang P, Wu D . Panicle-SEG: a robust image segmentation method for rice panicles in the field based on deep learning and superpixel optimization. Plant Methods. 2017; 13:104. PMC: 5704426. DOI: 10.1186/s13007-017-0254-7. View