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利用哨兵-2卫星数据和谷歌地球引擎绘制密歇根州东南部的覆盖作物物种分布图。

Mapping cover crop species in southeastern Michigan using Sentinel-2 satellite data and Google Earth Engine.

作者信息

Wang Xuewei, Blesh Jennifer, Rao Preeti, Paliwal Ambica, Umashaanker Maanya, Jain Meha

机构信息

School for Environment and Sustainability, University of Michigan, Ann Arbor, MI, United States.

出版信息

Front Artif Intell. 2023 Aug 17;6:1035502. doi: 10.3389/frai.2023.1035502. eCollection 2023.

Abstract

Cover crops are a critical agricultural practice that can improve soil quality, enhance crop yields, and reduce nitrogen and phosphorus losses from farms. Yet there is limited understanding of the extent to which cover crops have been adopted across large spatial and temporal scales. Remote sensing offers a low-cost way to monitor cover crop adoption at the field scale and at large spatio-temporal scales. To date, most studies using satellite data have mapped the presence of cover crops, but have not identified specific cover crop species, which is important because cover crops of different plant functional types (e.g., legumes, grasses) perform different ecosystem functions. Here we use Sentinel-2 satellite data and a random forest classifier to map the cover crop species cereal rye and red clover, which represent grass and legume functional types, in the River Raisin watershed in southeastern Michigan. Our maps of agricultural landcover across this region, including the two cover crop species, had moderate to high accuracies, with an overall accuracy of 83%. Red clover and cereal rye achieved F1 scores that ranged from 0.7 to 0.77, and user's and producer's accuracies that ranged from 63.3% to 86.2%. The most common misclassification of cover crops was fallow fields with remaining crop stubble, which often looked similar because these cover crop species are typically planted within existing crop stubble, or interseeded into a grain crop. We found that red-edge bands and images from the end of April and early July were the most important for classification accuracy. Our results demonstrate the potential to map individual cover crop species using Sentinel-2 imagery, which is critical for understanding the environmental outcomes of increasing crop diversity on farms.

摘要

覆盖作物是一种至关重要的农业实践,它可以改善土壤质量、提高作物产量,并减少农场的氮磷流失。然而,对于覆盖作物在大空间和时间尺度上的采用程度,人们的了解有限。遥感提供了一种低成本的方法来监测田间尺度和大时空尺度上覆盖作物的采用情况。迄今为止,大多数使用卫星数据的研究已经绘制了覆盖作物的存在情况,但尚未识别出特定的覆盖作物种类,这一点很重要,因为不同植物功能类型(如豆科植物、禾本科植物)的覆盖作物具有不同的生态系统功能。在这里,我们使用哨兵 - 2 卫星数据和随机森林分类器来绘制密歇根州东南部雷辛河流域代表禾本科和豆科功能类型的覆盖作物物种——冬黑麦和红三叶草。我们绘制的该地区农业土地覆盖图,包括这两种覆盖作物物种,具有中等至高的精度,总体精度为 83%。红三叶草和冬黑麦的 F1 分数在 0.7 至 0.77 之间,用户精度和生产者精度在 63.3% 至 86.2% 之间。覆盖作物最常见的误分类是留有作物残茬的休耕地,它们看起来通常很相似,因为这些覆盖作物物种通常种植在现有的作物残茬内,或播种到谷物作物中。我们发现红边波段以及 4 月底和 7 月初的图像对分类精度最为重要。我们的结果表明,利用哨兵 - 2 图像绘制单个覆盖作物物种的潜力,这对于理解农场增加作物多样性的环境结果至关重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4686/10474576/5475873f7f45/frai-06-1035502-g0001.jpg

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