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An ensemble-based approach for classification of high-resolution satellite imagery of the Amazon Basin

机译:亚马逊盆地高分辨率卫星图像分类的基于集合的方法

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Land cover mapping of the Amazon Basin provides valuable insight for assessment of regional land use and the extent of human encroachment, which can help environmentalists detect and respond to deforestation. Current methods rely on coarse-resolution imagery, which limits effectiveness at identifying small-scale deforestation. This paper proposes an ensemble-based method utilizing weighted voting of heterogeneous classifiers for accurate and scalable labeling of high-resolution satellite imagery of the Amazon rainforest. The ensemble learner relies on the predictions of multiple classification models trained in parallel on a publicly available dataset of satellite images with crowdsourced labels, which are aggregated and incorporated into the ensemble as meta-features. Performance of the ensemble is evaluated on a hold-out validation set and is found to show a marked improvement over the performance of any individual classifier.
机译:亚马逊盆地的陆地覆盖映射为评估区域土地利用和人类侵占程度提供了有价值的见解,这可以帮助环保主义者检测和应对森林砍伐。目前的方法依赖于粗辨率图像,这限制了识别小规模砍伐的有效性。本文提出了一种基于集合的方法,利用异构分类器的加权投票来准确和可扩展标记的亚马逊雨林的高分辨率卫星图像。该集合学习者依赖于在具有众群标签的公共可用数据集上并行培训的多个分类模型的预测,这些标签被聚合并将其整合到Ensemble中作为元特征。合奏的性能在扑出验证集上进行评估,并发现对对任何单个分类器的性能进行显着改进。

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