Yao Qiong, Zheng Xiaoming, Zhou Guomin, Zhang Jianhua
College of Agriculture, Henan University, Zhengzhou, China.
National Academy of Southern Breeding, Chinese Academy of Agricultural Sciences, Sanya, China.
Front Plant Sci. 2024 Jan 23;14:1305081. doi: 10.3389/fpls.2023.1305081. eCollection 2023.
Seed germination rate is one of the important indicators in measuring seed quality and seed germination ability, and it is also an important basis for evaluating the growth potential and planting effect of seeds. In order to detect seed germination rates more efficiently and achieve automated detection, this study focuses on wild rice as the research subject. A novel method for detecting wild rice germination rates is introduced, leveraging the SGR-YOLO model through deep learning techniques. The SGR-YOLO model incorporates the convolutional block attention module (efficient channel attention (ECA)) in the Backbone, adopts the structure of bi-directional feature pyramid network (BiFPN) in the Neck part, adopts the generalized intersection over union (GIOU) function as the loss function in the Prediction part, and adopts the GIOU function as the loss function by setting the weighting coefficient to accelerate the detection of the seed germination rate. In the Prediction part, the GIOU function is used as the loss function to accelerate the learning of high-confidence targets by setting the weight coefficients to further improve the detection accuracy of seed germination rate. The results showed that the accuracy of the SGR-YOLO model for wild rice seed germination discrimination was 94% for the hydroponic box and 98.2% for the Petri dish. The errors of germination potential, germination index, and average germination days detected by SGR-YOLO using the manual statistics were 0.4%, 2.2, and 0.9 days, respectively, in the hydroponic box and 0.5%, 0.5, and 0.24 days, respectively, in the Petri dish. The above results showed that the SGR-YOLO model can realize the rapid detection of germination rate, germination potential, germination index, and average germination days of wild rice seeds, which can provide a reference for the rapid detection of crop seed germination rate.
种子发芽率是衡量种子质量和种子发芽能力的重要指标之一,也是评估种子生长潜力和种植效果的重要依据。为了更高效地检测种子发芽率并实现自动化检测,本研究以野生稻为研究对象。介绍了一种利用深度学习技术的SGR - YOLO模型检测野生稻发芽率的新方法。SGR - YOLO模型在主干部分融入了卷积块注意力模块(高效通道注意力(ECA)),在颈部采用了双向特征金字塔网络(BiFPN)结构,在预测部分采用广义交并比(GIOU)函数作为损失函数,并通过设置加权系数采用GIOU函数作为损失函数来加速种子发芽率的检测。在预测部分,通过设置权重系数将GIOU函数用作损失函数,以加速高置信度目标的学习,进一步提高种子发芽率的检测精度。结果表明,SGR - YOLO模型对水培箱中野生稻种子发芽判别准确率为94%,对培养皿中为98.2%。SGR - YOLO使用人工统计检测的发芽势、发芽指数和平均发芽天数的误差,在水培箱中分别为0.4%、2.2和0.9天,在培养皿中分别为0.5%、0.5和0.24天。上述结果表明,SGR - YOLO模型能够实现野生稻种子发芽率、发芽势、发芽指数和平均发芽天数的快速检测,可为作物种子发芽率的快速检测提供参考。