Guo Yixin, Pan Jinchao, Wang Xueying, Deng Hong, Yang Mingliang, Liu Enliang, Chen Qingshan, Zhu Rongsheng
College of Engineering, Northeast Agricultural University, Harbin, China.
College of Arts and Sciences, Northeast Agricultural University, Harbin, China.
Front Plant Sci. 2025 Jul 21;16:1583526. doi: 10.3389/fpls.2025.1583526. eCollection 2025.
Pod numbers are important for assessing soybean yield. How to simplify the traditional manual process and determine the pod number phenotype of soybean maturity more quickly and accurately is an urgent challenge for breeders. With the development of smart agriculture, numerous scientists have explored the phenotypic information related to soybean pod number and proposed corresponding methods. However, these methods mainly focus on the total number of pods, ignoring the differences between different pod types and do not consider the time-consuming and labor-intensive problem of picking pods from the whole plant. In this study, a deep learning approach was used to directly detect the number of different types of pods on non-disassembled plants at the maturity stage of soybean. Subsequently, the number of pods wascorrected by means of a metric learning method, thereby improving the accuracy of counting different types of pods. After 200 epochs, the recognition results of various object detection algorithms were compared to obtain the optimal model. Among the algorithms, YOLOX exhibited the highest mean average precision (mAP) of 83.43% in accurately determining the counts of diverse pod categories within soybean plants. By improving the Siamese Network in metric learning, the optimal Siamese Network model was obtained. SE-ResNet50 was used as the feature extraction network, and its accuracy on the test set reached 93.7%. Through the Siamese Network model, the results of object detection were further corrected and counted. The correlation coefficients between the number of one-seed pods, the number of two-seed pods, the number of three-seed pods, the number of four-seed pods and the total number of pods extracted by the algorithm and the manual measurement results were 92.62%, 95.17%, 96.90%, 94.93%, 96.64%,respectively. Compared with the object detection algorithm, the recognition of soybean mature pods was greatly improved, evolving into a high-throughput and universally applicable method. The described results show that the proposed method is a robust measurement and counting algorithm, which can reduce labor intensity, improve efficiency and accelerate the process of soybean breeding.
豆荚数量对于评估大豆产量很重要。如何简化传统的人工流程,更快、更准确地确定大豆成熟期的豆荚数表型,是育种者面临的紧迫挑战。随着智慧农业的发展,众多科学家探索了与大豆豆荚数相关的表型信息并提出了相应方法。然而,这些方法主要关注豆荚总数,忽略了不同豆荚类型之间的差异,也没有考虑从整株植物上采摘豆荚耗时费力的问题。在本研究中,采用深度学习方法直接检测大豆成熟期未拆解植株上不同类型豆荚的数量。随后,通过度量学习方法对豆荚数量进行校正,从而提高不同类型豆荚计数的准确性。经过200个轮次后,比较各种目标检测算法的识别结果以获得最优模型。在这些算法中,YOLOX在准确确定大豆植株内不同豆荚类别的计数方面表现出最高的平均精度均值(mAP),为83.43%。通过在度量学习中改进孪生网络,获得了最优的孪生网络模型。使用SE-ResNet50作为特征提取网络,其在测试集上的准确率达到93.7%。通过孪生网络模型,进一步对目标检测结果进行校正和计数。算法提取的单粒荚数、双粒荚数、三粒荚数、四粒荚数与总荚数与人工测量结果之间的相关系数分别为92.62%、95.17%、96.90%、94.93%、96.64%。与目标检测算法相比,大豆成熟豆荚的识别有了很大提高,发展成为一种高通量且普遍适用的方法。所述结果表明,所提出的方法是一种稳健的测量和计数算法,可降低劳动强度、提高效率并加速大豆育种进程。