Tactile Interaction and Social Touch
Jiong Sun, Sergey Redyuk, Erik Billing, Dan Högberg, Paul Hemeren
- Year
- 2017
- Citations
- 3
Abstract
This paper presents an ongoing study on affective human-robot interaction. In our previous research, touch type is shown to be informative for communicated emotion. Here, a soft matrix array sensor is used to capture the tactile interaction between human and robot and 6 machine learning methods including CNN, RNN and C3D are implemented to classify different touch types, constituting a pre-stage to recognizing emotional tactile interaction. Results show an average recognition rate of 95% by C3D for classified touch types, which provide stable classification results for developing social touch technology.
Keywords
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