他们要过马路吗?人行横道行为的基准数据集和基线

Amir Rasouli, Iuliia Kotseruba, John K. Tsotsos
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引用次数: 200

摘要

设计适合城市环境的自动驾驶汽车仍然是一个未解决的问题。自动驾驶汽车面临的主要难题之一是如何理解其他道路使用者的意图并与他们沟通。现有的数据集无法提供对交通场景进行更高层次分析的必要手段。考虑到这一点,我们引入了一个新的数据集,除了为行人检测提供边界框信息外,还包括场景的行为和上下文注释。这可以将视觉和语义信息结合起来,更好地理解行人在各种交通场景中的意图。我们建立了基线方法来分析数据,并表明结合视觉和上下文信息可以将行人意图的预测提高至少20%。
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Are They Going to Cross? A Benchmark Dataset and Baseline for Pedestrian Crosswalk Behavior
Designing autonomous vehicles suitable for urban environments remains an unresolved problem. One of the major dilemmas faced by autonomous cars is how to understand the intention of other road users and communicate with them. The existing datasets do not provide the necessary means for such higher level analysis of traffic scenes. With this in mind, we introduce a novel dataset which in addition to providing the bounding box information for pedestrian detection, also includes the behavioral and contextual annotations for the scenes. This allows combining visual and semantic information for better understanding of pedestrians' intentions in various traffic scenarios. We establish baseline approaches for analyzing the data and show that combining visual and contextual information can improve prediction of pedestrian intention at the point of crossing by at least 20%.
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