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Fully Convolutional Neural Networks for Mapping Oil Palm Plantations in Kalimantan

机译:用于在加里曼丹映射油棕种植园的完全卷积神经网络

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This research is motivated by the global warming problem, which is likely influenced by human activity. Fast-growing oil palm plantations in the tropical belt of Africa, Southeast Asia and parts of Brazil lead to significant loss of rainforest and contribute to the global warming by the corresponding decrease of carbon dioxide absorption. We propose a novel approach to monitoring of the development of such plantations based on an application of state-of-the-art Fully Convolutional Neural Networks (FCNs) to solve Semantic Segmentation Problem for Landsat imagery.
机译:该研究受到全球变暖问题的动机,这可能受到人类活动的影响。非洲热带腰带的快速生长油棕榈种植园,东南亚和巴西的部分地区导致雨林的显着损失,并通过相应的二氧化碳吸收降低导致全球变暖。我们提出了一种基于应用最先进的完全卷积神经网络(FCN)来监测这些种植园的发展的新方法,以解决Landsat图像的语义分割问题。

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