基于多条件GAN的定制停车数据生成

Junnan Zhang, Mingda Zhu, Lei Peng
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引用次数: 1

摘要

停车数据容易受到时空特征和周围社会事件的影响,如果只给定时序停车数据,gan很难学习到停车数据的潜在特征。因此,不可能生成高质量的所需数据。在本文中,我们提出了一种多条件GAN,称为MCGAN,通过引入与停车数据样本相关的外部自定义可扩展条件来细化生成过程并优化生成质量。这些条件在MCGAN中以条件张量的形式存在,可以帮助网络学习每个定义条件所引入的特征,并在以后的生成过程中进行再现,甚至将它们组合起来,从而获得更好的结果。实验表明,MCGAN的工作过程与gan没有太大区别,但如果给出更具体的输出期望,则生成质量得到很大提高。
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Customized Parking Data Generation based on Multi-conditional GAN
Parking data is vulnerably affected by spatiotemporal characteristics and surrounding societal events, causing the latent features of the parking data are hard to learned by GANs if solely given the time-series parking data. Hence it is impossible to generate the desired data with high quality. In this paper, we propose a multi-conditional GAN, named MCGAN to refine the generating process and optimize the generating quality via introducing external customized extendable conditions related to the parking data samples. These conditions, in forms of condition tensors in MCGAN, can help the network learn the features introduced by each defined condition and will reproduce, even combine them in the later generating process, achieving the better result. The experiments show the working process of MCGAN is not different very much from GANs, but the generating quality get improved greatly if given the output expectation more specifically.
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