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Spatio-temporal reasoning for traffic scene understanding

机译:交通场景理解的时空推理

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In this paper we introduce a system for semantic understanding of traffic scenes. The system detects objects in video images captured in real vehicular traffic situations, classifies them, maps them to the OpenCyc1 ontology and finally generates descriptions of the traffic scene in CycL or cvasi-natural language. We employ meta-classification methods based on AdaBoost and Random forest algorithms for identifying interest objects like: cars, pedestrians, poles in traffic and we derive a set of annotations for each traffic scene. These annotations are mapped to OpenCyc concepts and predicates, spatiotemporal rules for object classification and scene understanding are then asserted in the knowledge base. Finally, we show that the system performs well in understanding traffic scene situations and summarizing them. The novelty of the approach resides in the combination of stereo-based object detection and recognition methods with logic based spatio-temporal reasoning.
机译:在本文中,我们介绍了一种用于交通场景语义理解的系统。该系统检测实际交通情况下捕获的视频图像中的对象,对其进行分类,然后将它们映射到OpenCyc 1 本体,最后以CycL或cvasi自然语言生成交通场景的描述。我们使用基于AdaBoost和随机森林算法的元分类方法来识别兴趣对象,例如:汽车,行人,交通中的电线杆,并为每个交通场景导出一组注释。这些注释映射到OpenCyc概念和谓词,然后在知识库中声明用于对象分类和场景理解的时空规则。最后,我们证明了该系统在理解交通场景情况和对其进行汇总方面表现良好。该方法的新颖性在于将基于立体的对象检测和识别方法与基于逻辑的时空推理相结合。

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