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国家尺度下小农户主导农田的高分辨率年度田界地图。

High Resolution, Annual Maps of Field Boundaries for Smallholder-Dominated Croplands at National Scales.

作者信息

Estes Lyndon D, Ye Su, Song Lei, Luo Boka, Eastman J Ronald, Meng Zhenhua, Zhang Qi, McRitchie Dennis, Debats Stephanie R, Muhando Justus, Amukoa Angeline H, Kaloo Brian W, Makuru Jackson, Mbatia Ben K, Muasa Isaac M, Mucha Julius, Mugami Adelide M, Mugami Judith M, Muinde Francis W, Mwawaza Fredrick M, Ochieng Jeff, Oduol Charles J, Oduor Purent, Wanjiku Thuo, Wanyoike Joseph G, Avery Ryan B, Caylor Kelly K

机构信息

Graduate School of Geography, Clark University, Worcester, MA, United States.

Department of Natural Resources and the Environment, University of Connecticut, Storrs, CT, United States.

出版信息

Front Artif Intell. 2022 Feb 25;4:744863. doi: 10.3389/frai.2021.744863. eCollection 2021.

Abstract

Mapping the characteristics of Africa's smallholder-dominated croplands, including the sizes and numbers of fields, can provide critical insights into food security and a range of other socioeconomic and environmental concerns. However, accurately mapping these systems is difficult because there is 1) a spatial and temporal mismatch between satellite sensors and smallholder fields, and 2) a lack of high-quality labels needed to train and assess machine learning classifiers. We developed an approach designed to address these two problems, and used it to map Ghana's croplands. To overcome the spatio-temporal mismatch, we converted daily, high resolution imagery into two cloud-free composites (the primary growing season and subsequent dry season) covering the 2018 agricultural year, providing a seasonal contrast that helps to improve classification accuracy. To address the problem of label availability, we created a platform that rigorously assesses and minimizes label error, and used it to iteratively train a Random Forests classifier with active learning, which identifies the most informative training sample based on prediction uncertainty. Minimizing label errors improved model F1 scores by up to 25%. Active learning increased F1 scores by an average of 9.1% between first and last training iterations, and 2.3% more than models trained with randomly selected labels. We used the resulting 3.7 m map of cropland probabilities within a segmentation algorithm to delineate crop field boundaries. Using an independent map reference sample ( = 1,207), we found that the cropland probability and field boundary maps had respective overall accuracies of 88 and 86.7%, user's accuracies for the cropland class of 61.2 and 78.9%, and producer's accuracies of 67.3 and 58.2%. An unbiased area estimate calculated from the map reference sample indicates that cropland covers 17.1% (15.4-18.9%) of Ghana. Using the most accurate validation labels to correct for biases in the segmented field boundaries map, we estimated that the average size and total number of field in Ghana are 1.73 ha and 1,662,281, respectively. Our results demonstrate an adaptable and transferable approach for developing annual, country-scale maps of crop field boundaries, with several features that effectively mitigate the errors inherent in remote sensing of smallholder-dominated agriculture.

摘要

描绘非洲以小农户为主的农田特征,包括农田的面积和数量,能够为粮食安全以及一系列其他社会经济和环境问题提供关键见解。然而,准确描绘这些系统颇具难度,原因如下:其一,卫星传感器与小农户农田在空间和时间上存在不匹配;其二,缺乏训练和评估机器学习分类器所需的高质量标签。我们开发了一种旨在解决这两个问题的方法,并将其用于描绘加纳的农田。为克服时空不匹配问题,我们将每日的高分辨率图像转换为覆盖2018农业年的两幅无云合成图像(主要生长季和随后的旱季),提供了有助于提高分类准确性的季节性对比。为解决标签可用性问题,我们创建了一个严格评估并最小化标签误差的平台,并利用它通过主动学习迭代训练随机森林分类器,该方法基于预测不确定性识别最具信息性的训练样本。将标签误差最小化使模型F1分数提高了多达25%。主动学习在第一次和最后一次训练迭代之间使F1分数平均提高了9.1%,比使用随机选择标签训练的模型高出2.3%。我们在分割算法中使用生成的3.7米农田概率图来划定农田边界。使用独立的地图参考样本(=1207),我们发现农田概率图和农田边界图的总体准确率分别为88%和86.7%,农田类别的用户准确率分别为61.2%和78.9%,生产者准确率分别为67.3%和58.2%。根据地图参考样本计算的无偏面积估计表明,农田覆盖加纳的17.1%(15.4 - 18.9%)。使用最准确的验证标签校正分割后的农田边界图中的偏差,我们估计加纳农田的平均面积和总数分别为1.73公顷和1,662,281块。我们的结果展示了一种适用于开发年度国家尺度农田边界地图的可适应且可转移的方法,该方法具有多个有效减轻以小农户为主的农业遥感中固有误差的特征。

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