统一行人路径预测框架之比较研究

Jarl L. A. Lemmens, Ariyan Bighashdel, P. Jancura, Gijs Dubbelman
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引用次数: 0

摘要

在自动驾驶汽车等众多应用中,行人路径预测是一项新兴的关键任务。由于任务的复杂性,在整个文献中提出了各种公式。然而,这些表述之间的相互联系仍有待观察,这使得公平比较具有挑战性。本文提出了一种基于马尔可夫决策过程(MDP)的统一行人路径预测框架。我们证明,通过仔细设计MDP的组件,可以将各种标准公式视为框架中设置的特定组合。此外,统一的框架允许我们发现新的设置组合,这些组合集成了当前公式的好处,从而提高了预测性能。我们进行了比较研究,并在控制良好的实验中评估了几种配方。此外,我们仔细评估了各种设置(如政策随机性和顺序决策)对预测性能的影响。这项工作的目标不是提出一种新的最先进的方法,而是在一个统一的框架下研究行人路径预测任务的各种公式,并发现最终可以推进当前最先进技术的新方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unified Pedestrian Path Prediction Framework: A Comparison Study
Pedestrian path prediction is an emerging and crucial task in numerous applications, such as autonomous vehicles. Due to the complexity of the task, various formulations are proposed throughout the literature. However, the interconnection between these formulations remains to be seen, which makes a fair comparison challenging. This work proposes a unified pedestrian path prediction framework via Markov decision process (MDP). We demonstrate that by carefully designing the components of the MDP, various standard formulations can be perceived as specific combinations of settings in our framework. Additionally, the unified framework allows us to discover new combinations of settings that integrate the benefits of current formulations improving the prediction performance. We conduct a comparison study and evaluate several formulations in well-controlled experiments. Furthermore, we carefully assess the influence of various settings, such as policy stochasticity and sequential decision-making, on prediction performance. The goal of this work is not to propose a new state-of-the- art method but to study various formulations of the pedestrian path prediction task under a unifying framework and uncover new directions that can eventually advance the current state-of-the-art.
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