Publication:
Trustworthiness assessment in multimodal human-robot interaction based on cognitive load

Placeholder

Institution Authors

Research Projects

Organizational Unit

Journal Title

Journal ISSN

Volume Title

Type

conferenceObject

Access

restrictedAccess

Publication Status

Published

Journal Issue

Abstract

In this study, we extend our robot trust model into a multimodal setting in which the Nao robot leverages audio-visual data to perform a sequential multimodal pattern recalling task while interacting with a human partner who has different guiding strategies: reliable, unreliable, and random. Here, the humanoid robot is equipped with a multimodal auto-associative memory module to process audio-visual patterns to extract cognitive load (i.e., computational cost) and an internal reward module to perform cost-guided reinforcement learning. After interactive experiments, the robot associates a low cognitive load (i.e., high cumulative reward) yielded during the interaction with high trustworthiness of the guiding strategy of the partner. At the end of the experiment, we provide a free choice to the robot to select a trustworthy instructor. We show that the robot forms trust in a reliable partner. In the second setting of the same experiment, we endow the robot with an additional simple theory of mind module to assess the efficacy of the instructor in helping the robot perform the task. Our results show that the performance of the robot is improved when the robot bases its action decisions on factoring in the instructor assessment.

Date

2022

Publisher

IEEE

Description

Keywords

Citation

Collections


Page Views

0

File Download

0