An Efficient and Low-Cost Deep Learning-Based Method for Counting and Sizing Soybean Nodules

Agronomy Pub Date : 2024-09-06 DOI:10.3390/agronomy14092041
Xueying Wang, Nianping Yu, Yongzhe Sun, Yixin Guo, Jinchao Pan, Jiarui Niu, Li Liu, Hongyu Chen, Junzhuo Cao, Haifeng Cao, Qingshan Chen, Dawei Xin, Rongsheng Zhu
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Abstract

Soybeans are an essential source of food, protein, and oil worldwide, and the nodules on their root systems play a critical role in nitrogen fixation and plant growth. In this study, we tackled the challenge of limited high-resolution image quantities and the constraints on model learning by innovatively employing image segmentation technology for an in-depth analysis of soybean nodule phenomics. Through a meticulously designed segmentation algorithm, we broke down large-resolution images into numerous smaller ones, effectively improving the model’s learning efficiency and significantly increasing the available data volume, thus laying a solid foundation for subsequent analysis. In terms of model selection and optimization, after several rounds of comparison and testing, YOLOX was identified as the optimal model, achieving an accuracy of 91.38% on the test set with an R2 of up to 86%, fully demonstrating its efficiency and reliability in nodule counting tasks. Subsequently, we utilized YOLOV5 for instance segmentation, achieving a precision of 93.8% in quickly and accurately extracting key phenotypic indicators such as the area, circumference, length, and width of the nodules, and calculated the statistical properties of these indicators. This provided a wealth of quantitative data for the morphological study of soybean nodules. The research not only enhanced the efficiency and accuracy of obtaining nodule phenotypic data and reduced costs but also provided important scientific evidence for the selection and breeding of soybean materials, highlighting its potential application value in agricultural research and practical production.
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基于深度学习的高效、低成本大豆结节计数和大小确定方法
大豆是全球重要的粮食、蛋白质和油料来源,其根系上的结核在固氮和植物生长中发挥着至关重要的作用。在这项研究中,我们通过创新性地采用图像分割技术深入分析大豆结节表型组学,解决了高分辨率图像数量有限和模型学习受限的难题。通过精心设计的分割算法,我们将大分辨率图像分割成众多小图像,有效提高了模型的学习效率,并显著增加了可用数据量,从而为后续分析奠定了坚实的基础。在模型选择和优化方面,经过多轮对比和测试,YOLOX 被确定为最优模型,在测试集上的准确率达到 91.38%,R2 高达 86%,充分证明了其在结核计数任务中的高效性和可靠性。随后,我们利用 YOLOV5 进行实例分割,在快速准确地提取结节的面积、周长、长度和宽度等关键表型指标并计算这些指标的统计属性方面,精度达到 93.8%。这为大豆结瘤的形态研究提供了丰富的定量数据。该研究不仅提高了获取结核表型数据的效率和准确性,降低了成本,还为大豆材料的选育提供了重要的科学依据,凸显了其在农业科研和实际生产中的潜在应用价值。
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