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Human mobile robot interaction in the retail environment

Yuhao Chen, Yue Luo, Chizhao Yang, Mustafa Ozkan Yerebakan, Shuai Hao, Nicolas Grimaldi, Li Song, Read Hayes, Boyi Hu

Year
2022
Citations
25
Access
Open access

Abstract

As technology advances, Human-Robot Interaction (HRI) is boosting overall system efficiency and productivity. However, allowing robots to be present closely with humans will inevitably put higher demands on precise human motion tracking and prediction. Datasets that contain both humans and robots operating in the shared space are receiving growing attention as they may facilitate a variety of robotics and human-systems research. Datasets that track HRI with rich information other than video images during daily activities are rarely seen. In this paper, we introduce a novel dataset that focuses on social navigation between humans and robots in a future-oriented Wholesale and Retail Trade (WRT) environment ( https://uf-retail-cobot-dataset.github.io/ ). Eight participants performed the tasks that are commonly undertaken by consumers and retail workers. More than 260 minutes of data were collected, including robot and human trajectories, human full-body motion capture, eye gaze directions, and other contextual information. Comprehensive descriptions of each category of data stream, as well as potential use cases are included. Furthermore, analysis with multiple data sources and future directions are discussed.

Keywords

RobotComputer scienceVariety (cybernetics)RoboticsArtificial intelligenceGazeHuman–computer interactionBoosting (machine learning)Motion (physics)Human–robot interaction

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