基于生成对抗网络的人类移动路径生成

H. Song, Moo Sang Baek, Minsuk Sung
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引用次数: 9

摘要

近年来,学术界和产业界对人类移动出行的诸多研究都旨在提出个性化定制的解决方案。结合深度学习方法,它能够从移动数据(包括给定的过去趋势)中预测和生成物体的新路线。在这项工作中,基于累积的个人移动数据集,引入了生成对抗网络(GAN)模型来创建个人移动路径。利用地理定位系统和个人移动设备收集移动数据。GAN具有由神经网络组成的鉴别器和生成器,可以训练和提取地理位置信息。一个经纬度序列可以被地理映射,包含所有这些信息的矩阵可以被GAN处理。基于gan的模型以这种方式成功地处理了个体移动路径。因此,我们的模型可以从现有的个人地理位置数据集生成和建议未探索的路线。
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Generating Human Mobility Route Based on Generative Adversarial Network
Recently, many researches on human mobility are aiming to suggest the personal customized solution in the diverse field, usually by academia and industry. Combined with deep learning methods, it is able to predict and generate novel routes of objects from the mobility data including the given past trends. In this work, Generative Adversarial Network (GAN) model is introduced for creating individual mobility routes based on sets of accumulated personal mobility data. The mobility data had been collected by use of geopositioning system and personal mobile devices. GAN has Discriminator and Generator which are composed of neural networks, and can train and extract geopositionig information. A sequence of longitude and latitude can be geographically mapped, and matrices including all these information can be handled by GAN. The GAN-based model successfully handled individual mobility routes in this way. Consequently, our model can generate and suggest unexplored routes from the existing sets of personal geolocation data.
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