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Understanding Pedestrian-Vehicle Interactions with Vehicle Mounted Vision: An LSTM Model and Empirical Analysis

机译:了解行人与车辆视觉的交互作用:LSTM模型和经验分析

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Pedestrians and vehicles often share the road in complex inner city traffic. This leads to interactions between the vehicle and pedestrians, with each affecting the other's motion. In order to create robust methods to reason about pedestrian behavior and to design interfaces of communication between self-driving cars and pedestrians we need to better understand such interactions. In this paper, we present a data-driven approach to implicitly model pedestrians' interactions with vehicles, to better predict pedestrian behavior. We propose a Long Short-Term Memory (LSTM) model that takes as input the past trajectories of the pedestrian and ego-vehicle, and pedestrian head orientation, and predicts the future positions of the pedestrian. Our experiments based on a real-world, inner city dataset captured with vehicle mounted cameras, show that the usage of such cues improve pedestrian prediction when compared to a baseline that purely uses the past trajectory of the pedestrian.
机译:行人和车辆经常在复杂的市区交通中共享道路。这导致车辆和行人之间的相互作用,彼此影响对方的运动。为了创建合理的方法来推断行人的行为并设计自动驾驶汽车与行人之间的通信接口,我们需要更好地理解这种相互作用。在本文中,我们提出了一种数据驱动的方法来对行人与车辆的交互进行隐式建模,以更好地预测行人的行为。我们提出了一个长期短期记忆(LSTM)模型,该模型以行人和自我车辆的过去轨迹以及行人头部的方位为输入,并预测行人的未来位置。我们基于车载摄像机捕获的真实内部城市数据集的实验表明,与仅使用行人过去轨迹的基线相比,使用此类提示可以改善行人预测。

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