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Video Captioning Based on Both Egocentric and Exocentric Views of Robot Vision for Human-Robot Interaction

Soo-Han Kang, Ji-Hyeong Han

Year
2021
Citations
22
Access
Open access

Abstract

Abstract Robot vision provides the most important information to robots so that they can read the context and interact with human partners successfully. Moreover, to allow humans recognize the robot’s visual understanding during human-robot interaction (HRI), the best way is for the robot to provide an explanation of its understanding in natural language. In this paper, we propose a new approach by which to interpret robot vision from an egocentric standpoint and generate descriptions to explain egocentric videos particularly for HRI. Because robot vision equals to egocentric video on the robot’s side, it contains as much egocentric view information as exocentric view information. Thus, we propose a new dataset, referred to as the global, action, and interaction (GAI) dataset, which consists of egocentric video clips and GAI descriptions in natural language to represent both egocentric and exocentric information. The encoder-decoder based deep learning model is trained based on the GAI dataset and its performance on description generation assessments is evaluated. We also conduct experiments in actual environments to verify whether the GAI dataset and the trained deep learning model can improve a robot vision system

Keywords

Artificial intelligenceComputer scienceRobotEndocentric and exocentricHuman–robot interactionComputer visionContext (archaeology)Closed captioningSocial robotHuman–computer interaction

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