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Exploring Google Earth Engine Platform for Big Data Processing: Classification of Multi-Temporal Satellite Imagery for Crop Mapping

机译:探索Google Earth Engine平台进行大数据处理:用于作物制图的多时相卫星图像分类

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Many applied problems arising in agricultural monitoring and food security require reliable crop maps at national or global scale. Large scale crop mapping requires processing and management of large amount of heterogeneous satellite imagery acquired by various sensors that consequently leads to a a??Big Dataa?? problem. The main objective of this study is to explore efficiency of using the Google Earth Engine (GEE) platform when classifying multi-temporal satellite imagery with potential to apply the platform for a larger scale (e.g. country level) and multiple sensors (e.g. Landsat-8 and Sentinel-2). In particular, multiple state-of-the-art classifiers available in the GEE platform are compared to produce a high resolution (30 m) crop classification map for a large territory (~28,100 km2 and 1.0 M ha of cropland). Though this study does not involve large volumes of data, it does address efficiency of the GEE platform to effectively execute complex workflows of satellite data processing required with large scale applications such as crop mapping. The study discusses strengths and weaknesses of classifiers, assesses accuracies that can be achieved with different classifiers for the Ukrainian landscape, and compares them to the benchmark classifier using a neural network approach that was developed in our previous studies. The study is carried out for the Joint Experiment of Crop Assessment and Monitoring (JECAM) test site in Ukraine covering the Kyiv region (North of Ukraine) in 2013. We found that Google Earth Engine (GEE) provides very good performance in terms of enabling access to the remote sensing products through the cloud platform and providing pre-processing; however, in terms of classification accuracy, the neural network based approach outperformed support vector machine (SVM), decision tree and random forest classifiers available in GEE.
机译:农业监测和粮食安全中出现的许多应用问题都需要在国家或全球范围内获得可靠的作物图。大规模作物制图需要处理和管理由各种传感器获取的大量异构卫星图像,从而导致产生“大数据”现象。问题。这项研究的主要目的是探索在对多时相卫星图像进行分类时使用Google Earth Engine(GEE)平台的效率,并有可能将该平台应用于更大范围(例如国家/地区)和多个传感器(例如Landsat-8)和Sentinel-2)。特别是,将GEE平台中可用的多个最新分类器进行比较,以针对大范围(〜28,100 km2和1.0 M ha农田)生成高分辨率(30 m)作物分类图。尽管此研究不涉及大量数据,但它确实解决了GEE平台的效率,以有效执行大规模应用(例如作物制图)所需的复杂的卫星数据处理工作流。该研究讨论了分类器的优缺点,评估了针对乌克兰景观的不同分类器可以实现的精度,并使用我们先前研究中开发的神经网络方法将其与基准分类器进行了比较。这项研究是针对2013年在乌克兰覆盖基辅地区(乌克兰北部)的乌克兰作物评估与监控联合实验(JECAM)测试地点进行的。我们发现Google地球引擎(GEE)在实现通过云平台访问遥感产品并提供预处理;但是,在分类准确性方面,基于神经网络的方法优于支持向量机(SVM),决策树和GEE中可用的随机森林分类器。

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