4.6 Article

A graph neural network to model disruption in human-aware robot navigation

期刊

MULTIMEDIA TOOLS AND APPLICATIONS
卷 81, 期 3, 页码 3277-3295

出版社

SPRINGER
DOI: 10.1007/s11042-021-11113-6

关键词

Social navigation; Graph neural networks; Human-robot interaction

资金

  1. Spanish Government [RTI2018099522-BC42]
  2. Government of Extremadura [GR18133, IB18056]

向作者/读者索取更多资源

In this paper, Graph Neural Networks are used to model robot disruption, considering the movement of humans and robots for path planning. The model achieves close-to-human performance in the dataset. The main advantage of this approach is its scalability in considering the number of social factors.
Autonomous navigation is a key skill for assistive and service robots. To be successful, robots have to minimise the disruption caused to humans while moving. This implies predicting how people will move and complying with social conventions. Avoiding disrupting personal spaces, people's paths and interactions are examples of these social conventions. This paper leverages Graph Neural Networks to model robot disruption considering the movement of the humans and the robot so that the model built can be used by path planning algorithms. Along with the model, this paper presents an evolution of the dataset SocNav1 (Manso et al 2020) which considers the movement of the robot and the humans, and an updated scenario-to-graph transformation which is tested using different Graph Neural Network blocks. The model trained achieves close-to-human performance in the dataset. In addition to its accuracy, the main advantage of the approach is its scalability in terms of the number of social factors that can be considered in comparison with handcrafted models.

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