Investigations on pedestrian long-term trajectory prediction based on AI and environmental maps

Susanna Kaiser, Pierre Baudet, Ni Zhu, V. Renaudin
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Abstract

In highly shared urban traffic environments, it is essential to protect Vulnerable Road Users (VRU) to avoid collisions with motorized transport. One approach is to predict the intention or the future trajectories of the VRU from their previous path in order to send warnings in case of danger, or even to brake the cars in case of using driver assistance systems. The main objective of this paper is to investigate the short-term and particularly long-term prediction abilities of the AI-based predictors assisted with environmental maps, if applicable. By comparing and evaluating the performance of Polynomial Regression (PR), Gaussian Process Regression (GPR), Convolutional Neural Network (CNN), and Sequence-to-sequence neural networks (SeqToSeq) applied on an open access data set (i.e., Stanford Drone Dataset (SDD)) as well as some simulated data, we can conclude that the SeqToSeq generally performs better than other methods (Average Displacement Error is 25% lower and Final Displacement Error is 20% lower compared to a first order PR). By adding the environmental maps (navigation map and diffusion map), the pedestrian's turnings are better predicted despite the fact that there is little improvement on other metrics. This can be explained by an insufficient amount of training data involving environmental maps in this research work. Thus it is still promising by adding more training data with environmental maps in the future.
基于人工智能和环境地图的行人长期轨迹预测研究
在高度共享的城市交通环境中,保护弱势道路使用者(VRU)以避免与机动交通工具发生碰撞至关重要。一种方法是根据VRU之前的路径预测其意图或未来轨迹,以便在发生危险时发出警告,甚至在使用驾驶员辅助系统时刹车。本文的主要目的是研究基于人工智能的预测器在环境地图辅助下的短期和长期预测能力,如果适用的话。通过比较和评估多项式回归(PR)、高斯过程回归(GPR)、卷积神经网络(CNN)和序列对序列神经网络(SeqToSeq)在开放访问数据集(即斯坦福无人机数据集(SDD))以及一些模拟数据上的性能,我们可以得出结论,SeqToSeq通常比其他方法性能更好(与一阶PR相比,平均位移误差降低25%,最终位移误差降低20%)。通过添加环境地图(导航地图和扩散地图),可以更好地预测行人的转弯,尽管其他指标几乎没有改善。这可以解释为本研究工作中涉及环境地图的训练数据量不足。因此,在未来增加更多的环境地图训练数据仍然是有前途的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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