Department of Engineering, Aarhus University, Finlandsgade 22, 8200 Aarhus N, Denmark.
Department of Agroecology, Aarhus University, Blichers Allé 20, 8830 Tjele, Denmark.
Sensors (Basel). 2020 Dec 29;21(1):175. doi: 10.3390/s21010175.
Crop mixtures are often beneficial in crop rotations to enhance resource utilization and yield stability. While targeted management, dependent on the local species composition, has the potential to increase the crop value, it comes at a higher expense in terms of field surveys. As fine-grained species distribution mapping of within-field variation is typically unfeasible, the potential of targeted management remains an open research area. In this work, we propose a new method for determining the biomass species composition from high resolution color images using a DeepLabv3+ based convolutional neural network. Data collection has been performed at four separate experimental plot trial sites over three growing seasons. The method is thoroughly evaluated by predicting the biomass composition of different grass clover mixtures using only an image of the canopy. With a relative biomass clover content prediction of R = 0.91, we present new state-of-the-art results across the largely varying sites. Combining the algorithm with an all terrain vehicle (ATV)-mounted image acquisition system, we demonstrate a feasible method for robust coverage and species distribution mapping of 225 ha of mixed crops at a median capacity of 17 ha per hour at 173 images per hectare.
作物混作在轮作中通常是有益的,可以提高资源利用率和产量稳定性。虽然针对特定物种组成的管理有增加作物价值的潜力,但需要进行更多的田间调查,成本也更高。由于场内变化的细粒度物种分布制图通常不可行,因此针对特定物种的管理的潜力仍然是一个开放的研究领域。在这项工作中,我们提出了一种新的方法,使用基于 DeepLabv3+的卷积神经网络从高分辨率彩色图像中确定生物量的物种组成。在三个生长季节中,在四个独立的实验田试验点进行了数据采集。该方法通过仅使用冠层图像来预测不同三叶草混合物的生物量组成来进行了彻底评估。我们以相对生物量三叶草含量预测 R = 0.91 的结果,在很大程度上展示了新的最先进的结果。将该算法与全地形车(ATV)安装的图像采集系统相结合,我们展示了一种可行的方法,可在 225 公顷的混合作物中实现稳健的覆盖和物种分布制图,每小时的中位数容量为 17 公顷,每公顷 173 张图像。