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High-resolution global map of smallholder and industrial closed-canopy oil palm plantations

机译:高分辨率全球小农和工业闭巾油棕榈种植园

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Oil seed crops, especially oil palm, are among the most rapidly expanding agricultural land uses, and their expansion is known to cause significant environmental damage. Accordingly, these crops often feature in public and policy debates which are hampered or biased by a lack of accurate information on environmental impacts. In particular, the lack of accurate global crop maps remains a concern. Recent advances in deep-learning and remotely sensed data access make it possible to address this gap. We present a map of closed-canopy oil palm ( Elaeis guineensis ) plantations by typology (industrial versus smallholder plantations) at the global scale and with unprecedented detail (10?m resolution) for the year 2019. The DeepLabv3 + model, a convolutional neural network (CNN) for semantic segmentation, was trained to classify Sentinel-1 and Sentinel-2 images onto an oil palm land cover map. The characteristic backscatter response of closed-canopy oil palm stands in Sentinel-1 and the ability of CNN to learn spatial patterns, such as the harvest road networks, allowed the distinction between industrial and smallholder plantations globally (overall accuracy? = 98.52 ± 0.20 ?%), outperforming the accuracy of existing regional oil palm datasets that used conventional machine-learning algorithms. The user's accuracy, reflecting commission error, in industrial and smallholders was 88.22? ± ?2.73?% and 76.56? ± ?4.53?%, and the producer's accuracy, reflecting omission error, was 75.78? ± ?3.55?% and 86.92? ± ?5.12?%, respectively. The global oil palm layer reveals that closed-canopy oil palm plantations are found in 49 countries, covering a mapped area of 19.60?Mha; the area estimate was 21.00? ± ?0.42?Mha (72.7?% industrial and 27.3?% smallholder plantations). Southeast Asia ranks as the main producing region with an oil palm area estimate of 18.69? ± ?0.33?Mha or 89?% of global closed-canopy plantations. Our analysis confirms significant regional variation in the ratio of industrial versus smallholder growers, but it also confirms that, from a typical land development perspective, large areas of legally defined smallholder oil palm resemble industrial-scale plantings. Since our study identified only closed-canopy oil palm stands, our area estimate was lower than the harvested area reported by the Food and Agriculture Organization (FAO), particularly in West Africa, due to the omission of young and sparse oil palm stands, oil palm in nonhomogeneous settings, and semi-wild oil palm plantations. An accurate global map of planted oil palm can help to shape the ongoing debate about the environmental impacts of oil seed crop expansion, especially if other crops can be mapped to the same level of accuracy. As our model can be regularly rerun as new images become available, it can be used to monitor the expansion of the crop in monocultural settings. The global oil palm layer for the second half of 2019 at a spatial resolution of 10?m can be found at https://doi.org/10.5281/zenodo.4473715 (Descals et al., 2021).
机译:油籽作物,尤其是油棕,是最迅速扩大的农业用地用途,并且已知其扩张造成重大的环境损害。因此,这些作物通常在公共和政策辩论中的特征,这些辩论被缺乏关于环境影响的准确信息受到阻碍或偏见。特别是,缺乏准确的全球作物地图仍然是一个问题。深度学习和远程感测数据访问的最新进展使得可以解决这种差距。我们在全球范围内通过类型学(工业与小农种植园)和2019年的前所未有的细节(10?M决议)的类型学(工业与小农种植园)的地图。Deeplabv3 +模型,卷积神经用于语义分割的网络(CNN)被培训,以将Sentinel-1和Sentinel-2图像分类到油棕榈覆盖图上。闭路油手掌的特点反应响应在Sentinel-1中,CNN学习空间模式的能力,例如收获道路网络,允许全球工业和小农种植园的区别(整体准确性?= 98.52±0.20? %),优于使用传统机器学习算法的现有区域油棕数据集的准确性。用户的准确性,反映佣金错误,工业和小农的误差是88.22? ±2.73?%和76.56? ±4.53?%,以及生产者的准确性,反映遗漏误差为75.78? ±3.55?%和86.92?分别为±5.12?%。全球油棕榈层揭示了49个国家发现闭环油棕种植园,覆盖着19.60的映射面积为19.60?MHA;区域估计是21.00? ±0.42?MHA(72.7?%工业和27.3?%小农种植园)。东南亚排名为主要产区,油棕地区估计为18.69? ±0.33?MHA或89?%全球闭环种植园。我们的分析证实了工业与小型种植者的比例的重大区域变化,但也证实,从典型的土地开发角度来看,大面积的法律明确的小农油棕类似于工业规模的种植。由于我们的研究确定了闭巾油掌上型,因此我们的地区估计低于食品和农业组织(粮农组织)报告的收获区域,特别是在西非,由于年轻和稀疏的油掌,油棕榈在非均匀设置,以及半野生油棕榈种植园。准确的植物油棕地图可以帮助塑造关于石油种子作物扩张的环境影响的持续争论,特别是如果其他作物可以映射到相同的准确性水平。由于我们的模型可以定期重新运行新的图像可用时,它可用于监控单种环境中作物的扩展。 2019年下半年的全球油棕榈层数为10?M的空间分辨率,可以在https://doi.org/10.5281/zenodo.4473715(Descals等,2021)中找到。

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