论文标题

使用纵向空中图像检测和预测营养缺乏应力

Detection and Prediction of Nutrient Deficiency Stress using Longitudinal Aerial Imagery

论文作者

Dadsetan, Saba, Rose, Gisele, Hovakimyan, Naira, Hobbs, Jennifer

论文摘要

早期的,精确的营养缺乏应力(NDS)具有关键的经济和环境影响;精确施用化学物质代替毯子申请会降低种植者的运营成本,同时减少可能不必要进入环境的化学品量。此外,较早的治疗减少了损失的量,因此在给定季节增加了作物的产量。考虑到这一点,我们收集了高分辨率空中图像的序列,并构建了语义分割模型,以检测和预测整个现场的ND。我们的工作位于农业,遥感以及现代计算机视觉和深度学习的交汇处。首先,我们建立了一个基线,用于全场检测NDS,并量化训练训练,骨干结构,输入表示和采样策略的影响。然后,我们通过基于UNET构建单键型模型来量化本季节不同点可用的信息量。接下来,我们构建了提出的时空结构,该时空结构将UNET与卷积LSTM层相结合,以准确检测显示NDS的场区域。这种方法的IOU得分为0.53。最后,我们表明该体系结构可以接受培训,以预测该领域的区域,这些地区有望在以后的飞行中显示NDS(未来可能超过三周) - 取决于预测提前多远,保持了0.47-0.51的评分。我们还将发布一个数据集,我们认为该数据集将使计算机视觉,遥感以及农业领域受益。这项工作为遥感和农业的深度学习的最新发展做出了贡献,同时解决了对经济学和可持续性的影响的关键社会挑战。

Early, precise detection of nutrient deficiency stress (NDS) has key economic as well as environmental impact; precision application of chemicals in place of blanket application reduces operational costs for the growers while reducing the amount of chemicals which may enter the environment unnecessarily. Furthermore, earlier treatment reduces the amount of loss and therefore boosts crop production during a given season. With this in mind, we collect sequences of high-resolution aerial imagery and construct semantic segmentation models to detect and predict NDS across the field. Our work sits at the intersection of agriculture, remote sensing, and modern computer vision and deep learning. First, we establish a baseline for full-field detection of NDS and quantify the impact of pretraining, backbone architecture, input representation, and sampling strategy. We then quantify the amount of information available at different points in the season by building a single-timestamp model based on a UNet. Next, we construct our proposed spatiotemporal architecture, which combines a UNet with a convolutional LSTM layer, to accurately detect regions of the field showing NDS; this approach has an impressive IOU score of 0.53. Finally, we show that this architecture can be trained to predict regions of the field which are expected to show NDS in a later flight -- potentially more than three weeks in the future -- maintaining an IOU score of 0.47-0.51 depending on how far in advance the prediction is made. We will also release a dataset which we believe will benefit the computer vision, remote sensing, as well as agriculture fields. This work contributes to the recent developments in deep learning for remote sensing and agriculture, while addressing a key social challenge with implications for economics and sustainability.

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