Representing Vector Geographic Information As a Tensor for Deep Learning Based Map Generalisation

A. Courtial, G. Touya, X. Zhang
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引用次数: 5

Abstract

Abstract. Recently, many researchers tried to generate (generalised) maps using deep learning, and most of the proposed methods deal with deep neural network architecture choices. Deep learning learns to reproduce examples, so we think that improving the training examples, and especially the representation of the initial geographic information, is the key issue for this problem. Our article extracts some representation issues from a literature review and proposes different ways to represent vector geographic information as a tensor.We propose two kinds of contributions: 1) the representation of information by layers; 2) the representation of additional information. Then, we demonstrate the interest of some of our propositions with experiments that show a visual improvement for the generation of generalised topographic maps in urban areas.
将矢量地理信息表示为基于深度学习的地图泛化张量
摘要最近,许多研究人员尝试使用深度学习来生成(广义)地图,大多数提出的方法都涉及深度神经网络架构的选择。深度学习学习再现样例,因此我们认为改进训练样例,特别是初始地理信息的表示是解决这个问题的关键。本文从文献综述中提取了一些表示问题,并提出了将矢量地理信息表示为张量的不同方法。我们提出了两种贡献:1)信息的分层表示;2)附加信息的表示。然后,我们通过实验证明了我们的一些命题的兴趣,这些实验显示了在城市地区生成一般地形图的视觉改进。
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