Generative Adversarial Networks (GANs) have shown remarkable success in producing realistic-looking images in the computer vision area. Recently, GAN-based techniques are shown to be promising for spatio-temporal-based applications such as trajectory prediction, events generation and time-series data imputation. While several reviews for GANs in computer vision have been presented, no one has considered addressing the practical applications and challenges relevant to spatio-temporal data. In this paper, we have conducted a comprehensive review of the recent developments of GANs for spatio-temporal data. We summarise the application of popular GAN architectures for spatio-temporal data and the common practices for evaluating the performance of spatio-temporal applications with GANs. Finally, we point out future research directions to benefit researchers in this area.
翻译:最近,基于GAN的技术已证明对轨迹预测、事件生成和时间序列数据估算等基于时空的时空应用很有希望,虽然在计算机愿景中提出了对GAN的几次审查,但没有人考虑处理与时空数据相关的实际应用和挑战,在本文件中,我们全面审查了空间时空数据GAN的近期发展情况,我们总结了广受欢迎的GAN结构用于时空数据以及评价与GANS的时空应用的通用做法。最后,我们指出未来研究方向,使这一领域的研究人员受益。