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Improving Visual Perception of a Social Robot for Controlled and In-the-wild Human-robot Interaction

Wangjie Zhong, Leimin Tian, Duy Tho Le, Hamid Rezatofighi

Abstract

Social robots often rely on visual perception to understand their users and the environment. Recent advancements in data-driven approaches for computer vision have demonstrated great potentials for applying deep-learning models to enhance a social robot's visual perception. However, the high computational demands of deep-learning methods, as opposed to the more resource-efficient shallow-learning models, bring up important questions regarding their effects on real-world interaction and user experience. It is unclear how will the objective interaction performance and subjective user experience be influenced when a social robot adopts a deep-learning based visual perception model. We employed state-of-the-art human perception and tracking models to improve the visual perception function of the Pepper robot and conducted a controlled lab study and an in-the-wild human-robot interaction study to evaluate this novel perception function for following a specific user with other people present in the scene.

Improving Visual Perception of a Social Robot for Controlled and In-the-wild Human-robot Interaction

Abstract

Social robots often rely on visual perception to understand their users and the environment. Recent advancements in data-driven approaches for computer vision have demonstrated great potentials for applying deep-learning models to enhance a social robot's visual perception. However, the high computational demands of deep-learning methods, as opposed to the more resource-efficient shallow-learning models, bring up important questions regarding their effects on real-world interaction and user experience. It is unclear how will the objective interaction performance and subjective user experience be influenced when a social robot adopts a deep-learning based visual perception model. We employed state-of-the-art human perception and tracking models to improve the visual perception function of the Pepper robot and conducted a controlled lab study and an in-the-wild human-robot interaction study to evaluate this novel perception function for following a specific user with other people present in the scene.
Paper Structure (18 sections, 3 figures, 2 tables)

This paper contains 18 sections, 3 figures, 2 tables.

Figures (3)

  • Figure 1: Evaluation of the proposed visual perception system
  • Figure 2: The visual perception components for user tracking.
  • Figure 3: Following the user after receiving tracking data.