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A Knowledge Graph-Based Approach for Situation Comprehension in Driving Scenarios

机译:基于知识图形的驾驶情景中的情境理解方法

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Making an informed and right decision poses huge challenges for drivers in day-to-day traffic situations. This task vastly depends on many subjective and objective factors, including the current driver state, her destination, personal preferences and abilities as well as surrounding environment. In this paper, we present CoSI (Context and Situation Intelligence), a Knowledge Graph (KG)-based approach for fusing and organizing heterogeneous types and sources of information. The KG serves as a coherence layer representing information in the form of entities and their inter-relationships augmented with additional semantic axioms. Harnessing the power of axiomatic rules and reasoning capabilities enables inferring additional knowledge from what is already encoded. Thus, dedicated components exploit and consume the semanti-cally enriched information to perform tasks such as situation classification, difficulty assessment, and trajectory prediction. Further, we generated a synthetic dataset to simulate real driving scenarios with a large range of driving styles and vehicle configurations. We use KG embedding techniques based on a Graph Neural Network (GNN) architecture for a classification task of driving situations and achieve over 95% accuracy whereas vector-based approaches achieve only 75% accuracy for the same task. The results suggest that the KG-based information representation combined with GNN are well suited for situation understanding tasks as required in driver assistance and automated driving systems.
机译:做出明智和正确的决策对日常交通情况的司机带来了巨大挑战。这项任务大大取决于许多主观和客观因素,包括当前的司机状态,目的地,个人偏好和能力以及周围环境。在本文中,我们呈现Cosi(语境和情境智能),基于融合和组织异构类型和信息来源的基于知识图(千克)的方法。 KG用作代表实体形式的信息的相干层及其与额外的语义公理增强的关系。利用公理规则的力量和推理能力使能够从已经编码的内容推断出额外的知识。因此,专用组件利用并消耗了学生丰富的信息,以执行诸如情况分类,难度评估和轨迹预测的任务。此外,我们生成了合成数据集以模拟具有大范围驱动风格和车辆配置的实际驱动场景。我们使用基于图形神经网络(GNN)架构的KG嵌入技术,用于驾驶情况的分类任务,实现超过95%的精度,而基于载体的方法只能为同一任务实现75%的精度。结果表明,基于KG的信息表示与GNN相结合,非常适合根据驾驶员辅助和自动化驾驶系统所需的情况理解任务。

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