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Data-driven emotional body language generation for social robotics

Authors :
Marmpena, Mina
Garcia, Fernando
Lim, Angelica
Hemion, Nikolas
Wennekers, Thomas
Publication Year :
2022

Abstract

In social robotics, endowing humanoid robots with the ability to generate bodily expressions of affect can improve human-robot interaction and collaboration, since humans attribute, and perhaps subconsciously anticipate, such traces to perceive an agent as engaging, trustworthy, and socially present. Robotic emotional body language needs to be believable, nuanced and relevant to the context. We implemented a deep learning data-driven framework that learns from a few hand-designed robotic bodily expressions and can generate numerous new ones of similar believability and lifelikeness. The framework uses the Conditional Variational Autoencoder model and a sampling approach based on the geometric properties of the model's latent space to condition the generative process on targeted levels of valence and arousal. The evaluation study found that the anthropomorphism and animacy of the generated expressions are not perceived differently from the hand-designed ones, and the emotional conditioning was adequately differentiable between most levels except the pairs of neutral-positive valence and low-medium arousal. Furthermore, an exploratory analysis of the results reveals a possible impact of the conditioning on the perceived dominance of the robot, as well as on the participants' attention.<br />Comment: For the associated video of the generated animations, see https://youtu.be/wmLT8FARSk0 and for a repository of the training data, see https://github.com/minamar/rebl-pepper-data

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2205.00763
Document Type :
Working Paper