Detecting Intentions of Vulnerable Road Users Based on Collective Intelligence
Maarten Bieshaar, G\"unther Reitberger, Stefan Zernetsch, Bernhard, Sick, Erich Fuchs, Konrad Doll

TL;DR
This paper presents a cooperative, multi-agent system for detecting and predicting the intentions of vulnerable road users like cyclists and pedestrians, enhancing traffic safety and efficiency through collective intelligence and sensor fusion.
Contribution
It introduces a holistic, cooperative approach combining sensor data, communication, and advanced modeling to improve VRU intention detection beyond individual perception capabilities.
Findings
Enhanced detection accuracy of VRUs in real-time scenarios
Extended perceptual horizon through collective sensor data fusion
Robust intention prediction under uncertainties
Abstract
Vulnerable road users (VRUs, i.e. cyclists and pedestrians) will play an important role in future traffic. To avoid accidents and achieve a highly efficient traffic flow, it is important to detect VRUs and to predict their intentions. In this article a holistic approach for detecting intentions of VRUs by cooperative methods is presented. The intention detection consists of basic movement primitive prediction, e.g. standing, moving, turning, and a forecast of the future trajectory. Vehicles equipped with sensors, data processing systems and communication abilities, referred to as intelligent vehicles, acquire and maintain a local model of their surrounding traffic environment, e.g. crossing cyclists. Heterogeneous, open sets of agents (cooperating and interacting vehicles, infrastructure, e.g. cameras and laser scanners, and VRUs equipped with smart devices and body-worn sensors)…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Context-Aware Activity Recognition Systems · Time Series Analysis and Forecasting
