Yang Ruoyu, Ahmed Zia U, Schulthess Urs C, Kamal Mustafa, Rai Rahul
Department of Mechanical and Aerospace Engineering, 240 Bell Hall, University at Buffalo, Buffalo, NY, 14260-4400, USA.
Research and Education in Energy, Environment and Water (RENEW) Institute, 112 Cook Hall, University at Buffalo, Buffalo, NY, 14260-1300, USA.
Remote Sens Appl. 2020 Nov;20:100413. doi: 10.1016/j.rsase.2020.100413.
Improving agricultural productivity of smallholder farms (which are typically less than 2 ha) is key to food security for millions of people in developing nations. Knowledge of the size and location of crop fields forms the basis for crop statistics, yield forecasting, resource allocation, economic planning, and for monitoring the effectiveness of development interventions and investments. We evaluated three different full convolutional neural network (F-CNN) models (U-Net, SegNet, and DenseNet) with deep neural architecture to detect functional field boundaries from the very high resolution (VHR) WorldView-3 satellite imagery from Southern Bangladesh. The precision of the three F-CNN was up to 0.8, and among the three F-CNN models, the highest precision, recalls, and F-1 score was obtained using a DenseNet model. This architecture provided the highest area under the receiver operating characteristic (ROC) curve (AUC) when tested with independent images. We also found that 4-channel images (blue, green, red, and near-infrared) provided small gains in performance when compared to 3-channel images (blue, green, and red). Our results indicate the potential of using CNN based computer vision techniques to detect field boundaries of small, irregularly shaped agricultural fields.
提高小农户农场(通常面积小于2公顷)的农业生产力是发展中国家数百万人粮食安全的关键。了解农田的面积和位置是作物统计、产量预测、资源分配、经济规划以及监测发展干预措施和投资效果的基础。我们评估了三种具有深度神经网络架构的不同全卷积神经网络(F-CNN)模型(U-Net、SegNet和DenseNet),以从孟加拉国南部的超高分辨率(VHR)WorldView-3卫星图像中检测功能农田边界。这三种F-CNN的精度高达0.8,在这三种F-CNN模型中,使用DenseNet模型获得了最高的精度、召回率和F-1分数。在用独立图像进行测试时,该架构在接收器操作特征(ROC)曲线下提供了最高的面积(AUC)。我们还发现,与三通道图像(蓝色、绿色和红色)相比,四通道图像(蓝色、绿色、红色和近红外)在性能上有小幅提升。我们的结果表明了使用基于卷积神经网络的计算机视觉技术检测小型、形状不规则农田边界的潜力。