Bi Luning, Wally Owen, Hu Guiping, Tenuta Albert U, Kandel Yuba R, Mueller Daren S
Department of Industrial and Manufacturing Systems Engineering, Iowa State University, Ames, IA, United States.
Agriculture and Agri-Food Canada, Harrow Research and Development Centre, Harrow, ON, Canada.
Front Plant Sci. 2023 Jun 20;14:1173036. doi: 10.3389/fpls.2023.1173036. eCollection 2023.
Crop yield prediction which provides critical information for management decision-making is of significant importance in precision agriculture. Traditional manual inspection and calculation are often laborious and time-consuming. For yield prediction using high-resolution images, existing methods, e.g., convolutional neural network, are challenging to model long range multi-level dependencies across image regions. This paper proposes a transformer-based approach for yield prediction using early-stage images and seed information. First, each original image is segmented into plant and soil categories. Two vision transformer (ViT) modules are designed to extract features from each category. Then a transformer module is established to deal with the time-series features. Finally, the image features and seed features are combined to estimate the yield. A case study has been conducted using a dataset that was collected during the 2020 soybean-growing seasons in Canadian fields. Compared with other baseline models, the proposed method can reduce the prediction error by more than 40%. The impact of seed information on predictions is studied both between models and within a single model. The results show that the influence of seed information varies among different plots but it is particularly important for the prediction of low yields.
作物产量预测为管理决策提供关键信息,在精准农业中具有重要意义。传统的人工检查和计算往往既费力又耗时。对于使用高分辨率图像进行产量预测,现有方法,例如卷积神经网络,难以对图像区域间的长距离多级依赖关系进行建模。本文提出一种基于Transformer的方法,利用早期图像和种子信息进行产量预测。首先,将每张原始图像分割为植物和土壤类别。设计了两个视觉Transformer(ViT)模块来从每个类别中提取特征。然后建立一个Transformer模块来处理时间序列特征。最后,将图像特征和种子特征相结合以估计产量。使用在加拿大田间2020年大豆种植季节收集的数据集进行了案例研究。与其他基线模型相比,所提出的方法可将预测误差降低40%以上。在模型之间以及单个模型内部研究了种子信息对预测的影响。结果表明,种子信息的影响在不同地块之间有所不同,但对低产预测尤为重要。