A dog tail for communicating robotic states
Ashish Singh, James E. Young
- 发表年份
- 2013
- 引用次数
- 10
摘要
We present a dog-tail interface for communicating abstract affective robotic states. We believe that people have a passing knowledge to understand basic dog tail language (e.g., tail wagging means happy). This knowledge can be leveraged to understand affective states of a robot. For example, by appearing energetic, it can suggest that it has a full battery and does not need charging. To investigate this, we built a robotic tail interface to communicate affective states of a robot. We conducted an exploratory user study to explore how low-level tail parameters such as speed influence people's perceptions of affect. In this paper, we briefly describe our study design and the results obtained.
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