College of Information and Electrical Engineering, Heilongjiang Bayi Agricultural University, Daqing 163319, China.
Sensors (Basel). 2023 Jul 25;23(15):6662. doi: 10.3390/s23156662.
Efficient detection and evaluation of soybean seedling emergence is an important measure for making field management decisions. However, there are many indicators related to emergence, and using multiple models to detect them separately makes data processing too slow to aid timely field management. In this study, we aimed to integrate several deep learning and image processing methods to build a model to evaluate multiple soybean seedling emergence information. An unmanned aerial vehicle (UAV) was used to acquire soybean seedling RGB images at emergence (VE), cotyledon (VC), and first node (V1) stages. The number of soybean seedlings that emerged was obtained by the seedling emergence detection module, and image datasets were constructed using the seedling automatic cutting module. The improved AlexNet was used as the backbone network of the growth stage discrimination module. The above modules were combined to calculate the emergence proportion in each stage and determine soybean seedlings emergence uniformity. The results show that the seedling emergence detection module was able to identify the number of soybean seedlings with an average accuracy of 99.92%, a R of 0.9784, a RMSE of 6.07, and a MAE of 5.60. The improved AlexNet was more lightweight, training time was reduced, the average accuracy was 99.07%, and the average loss was 0.0355. The model was validated in the field, and the error between predicted and real emergence proportions was up to 0.0775 and down to 0.0060. It provides an effective ensemble learning model for the detection and evaluation of soybean seedling emergence, which can provide a theoretical basis for making decisions on soybean field management and precision operations and has the potential to evaluate other crops emergence information.
高效检测和评估大豆幼苗的出土情况是制定田间管理决策的重要措施。然而,出土情况涉及多个指标,使用多个模型分别检测会导致数据处理速度过慢,无法及时进行田间管理。本研究旨在整合多种深度学习和图像处理方法,构建一个模型来评估多个大豆幼苗出土信息。使用无人机(UAV)在出土(VE)、子叶(VC)和第一节点(V1)阶段获取大豆幼苗的 RGB 图像。使用幼苗出土检测模块获得出土的大豆幼苗数量,并使用幼苗自动切割模块构建图像数据集。改进的 AlexNet 被用作生长阶段判别模块的骨干网络。将上述模块组合起来计算各阶段的出土比例,确定大豆幼苗出土的均匀性。结果表明,幼苗出土检测模块能够识别大豆幼苗的数量,平均准确率为 99.92%,R 值为 0.9784,RMSE 为 6.07,MAE 为 5.60。改进的 AlexNet 更轻量级,训练时间更短,平均准确率为 99.07%,平均损失为 0.0355。该模型在田间进行了验证,预测与实际出土比例之间的误差最高可达 0.0775,最低可达 0.0060。为大豆幼苗出土的检测和评估提供了一个有效的集成学习模型,可为大豆田间管理和精准作业决策提供理论依据,并且有潜力评估其他作物的出土信息。