SIMP3: Social Interaction-Based Multi-Pedestrian Path Prediction By Self-Driving Cars

Nora Muscholl, Atanas Poibrenski, M. Klusch, Patrick Gebhard
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引用次数: 4

Abstract

An accurate and fast prediction of future positions of pedestrians by a self-driving car in critical traffic scenarios remains a challenge. The intention of a pedestrian to cross the street can be influenced by social interactions with another one across the street, which may be manifested through various types of social signals such as hand waving. Current socially-aware multi-pedestrian path predictors mainly rely on geometric heuristics such as the distance between pedestrians in the field of view of the car, but do not consider their social interaction across the street. This paper presents a novel social interaction-based multi-pedestrian path predictor (SIMP3) which leverages a combination of dynamic Bayesian networks for intention detection and recurrent network for prediction of future pedestrian locations. The system has been evaluated on the benchmark OpenDS-CTS2 of critical traffic scenarios with socially interacting pedestrians across the street simulated in OpenDS. Our experiments revealed that in most scenarios SIMP3 can significantly outperform the selected competitors.
SIMP3:自动驾驶汽车基于社会互动的多行人路径预测
在关键的交通场景中,自动驾驶汽车如何准确、快速地预测行人的未来位置仍然是一个挑战。行人过马路的意图会受到与街对面另一个人的社会互动的影响,这可以通过各种类型的社会信号表现出来,如挥手。目前具有社会意识的多行人路径预测主要依赖于几何启发式,如汽车视野中行人之间的距离,但没有考虑他们在街道对面的社会互动。本文提出了一种新的基于社会交互的多行人路径预测器(SIMP3),它利用动态贝叶斯网络进行意图检测和循环网络相结合来预测未来行人的位置。该系统在关键交通场景的基准OpenDS- cts2上进行了评估,并在OpenDS中模拟了街道上的社会互动行人。我们的实验表明,在大多数情况下,SIMP3可以显著优于选定的竞争对手。
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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