Context-free Self-Conditioned GAN for Trajectory Forecasting
AI 摘要
提出了一种基于自条件GAN的无上下文轨迹预测方法,在人类运动和道路交通数据集上表现良好。
主要贡献
- 提出基于自条件GAN的无监督轨迹预测方法
- 设计了三种不同的自条件GAN训练设置
- 在人类运动和道路交通数据集上进行了实验验证
方法论
利用自条件GAN学习轨迹的不同模式,将模式视为判别器特征空间中的不同行为模式,并应用于轨迹预测问题。
原文摘要
In this paper, we present a context-free unsupervised approach based on a self-conditioned GAN to learn different modes from 2D trajectories. Our intuition is that each mode indicates a different behavioral moving pattern in the discriminator's feature space. We apply this approach to the problem of trajectory forecasting. We present three different training settings based on self-conditioned GAN, which produce better forecasters. We test our method in two data sets: human motion and road agents. Experimental results show that our approach outperforms previous context-free methods in the least representative supervised labels while performing well in the remaining labels. In addition, our approach outperforms globally in human motion, while performing well in road agents.