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Social-Aware Driver Assistance Systems for City Traffic in Shared Spaces

机译:共享空间中城市交通的社交意识驾驶员辅助系统

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摘要

Shared spaces are gaining presence in cities, where a variety of players and mobility types (pedestrians, bicycles, motorcycles, and cars) move without specifically delimited areas. This makes the traffic they comprise challenging for automated systems. The information traditionally considered (e.g., streets, and obstacle positions and speeds) is not enough to build suitable models of the environment. The required explanatory and anticipation capabilities need additional information to improve them. Social aspects (e.g., goal of the displacement, companion, or available time) should be considered, as they have a strong influence on how people move and interact with the environment. This paper presents the Social-Aware Driver Assistance System (SADAS) approach to integrate this information into traffic systems. It relies on a domain-specific modelling language for social contexts and their changes. Specifications compliant with it describe social and system information, their links, and how to process them. Traffic social properties are the formalization within the language of relevant knowledge extracted from literature to interpret information. A multi-agent system architecture manages these specifications and additional processing resources. A SADAS can be connected to other parts of traffic systems by means of subscription-notification mechanisms. The case study to illustrate the approach applies social knowledge to predict people’s movements. It considers a distributed system for obstacle detection and tracking, and the intelligent management of traffic signals.
机译:共享空间正在城市中占有一席之地,这里有各种各样的参与者和出行方式(行人,自行车,摩托车和汽车)在没有特定划定区域的情况下移动。这使得它们构成的流量对于自动化系统而言具有挑战性。传统上考虑的信息(例如,街道以及障碍物的位置和速度)不足以建立合适的环境模型。所需的解释和预期功能需要其他信息来改进它们。应考虑社会方面(例如,流离失所的目标,陪伴者或可用时间),因为它们对人们的移动方式以及与环境的互动有很大影响。本文提出了一种社会意识驾驶员辅助系统(SADAS)的方法,以将这些信息集成到交通系统中。它依赖于特定领域的建模语言来实现社交环境及其变化。符合该规范的规范描述了社交和系统信息,它们的链接以及如何处理它们。交通社会属性是从文学中提取的相关知识的语言形式,用以解释信息。多代理系统体系结构管理这些规范和其他处理资源。 SADAS可以通过订阅通知机制连接到流量系统的其他部分。该案例研究说明了这种方法,运用了社会知识来预测人们的运动。它考虑了用于障碍物检测和跟踪以及交通信号的智能管理的分布式系统。

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