Abstract:
Assistive robots have been developed to improve the living standards of older people. These
assistive robots are intended to be operated by non-expert users. Hence, they should have the ability to
interact with humans in a human-friendly manner. Humans prefer to use voice instructions, responses, and
suggestions in their daily interactions. Such voice instructions and responses often include uncertain terms
and lexical symbols rather than precise quantitative values. Therefore, the ability of robots to understand
uncertain information is a crucial factor in the implementation of human-friendly interactive features in
robots. This paper proposes a novel method of adapting the perception of the uncertain spatial information
contents of navigational commands, such as ``far'' and ``little'', based on environmental factors and user
feedback. The proposed uncertain information understanding module has been implemented using fuzzy
neural networks in such a way that the system can concurrently adapt to environmental factors while learning
from user feedback. The proposed method has been implemented on the MIRob platform, and experiments
have been conducted in an arti cially created domestic environment to evaluate the performance and
behaviors of the proposed concept. The experimental results validate the improvement of user satisfaction
related to the understanding of uncertain information.
Citation:
Muthugala, M. A. V. J., & Jayasekara, A. G. B. P. (2017). Enhancing User Satisfaction by Adapting Robot’s Perception of Uncertain Information Based on Environment and User Feedback. IEEE Access, 5, 26435–26447. https://doi.org/10.1109/ACCESS.2017.2777823