How context shapes the appropriateness of a robot’s voice
Ilaria Torre, Adrian Benigno Latupeirissa, Conor McGinn
- Year
- 2020
- Citations
- 24
Abstract
Social robots have a recognizable physical appearance, a distinct voice, and interact with users in specific contexts. Previous research has suggested a `matching hypothesis', which seeks to rationalise how people judge a robot's appropriateness for a task by its appearance. Other research has extended this to cover combinations of robot voices and appearances. In this paper, we examine the missing connection between robot voice, robot appearance, and deployment context. In so doing, we asked participants to match a robot image to a voice within a defined interaction context. We selected widely available social robots, identified task contexts they are used in, and manipulated the voices in terms of gender, naturalness, and accent. We found that the task context mediates the `matching hypothesis'. People consistently selected a robot based on a vocal feature for a certain context, and a different robot based on the same vocal feature for another context. We suggest that robot voice design should take advantage of current technology that enables the creation and tuning of custom voices. They are a flexible tool to increase perception of appropriateness, which has a positive influence on Human-Robot Interaction.
Keywords
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