From Learning to Relearning: A Framework for Diminishing Bias in Social
Robot Navigation
- URL: http://arxiv.org/abs/2101.02647v2
- Date: Wed, 3 Mar 2021 18:42:23 GMT
- Title: From Learning to Relearning: A Framework for Diminishing Bias in Social
Robot Navigation
- Authors: Juana Valeria Hurtado, Laura Londo\~no, and Abhinav Valada
- Abstract summary: We argue that social navigation models can replicate, promote, and amplify societal unfairness such as discrimination and segregation.
Our proposed framework consists of two components: textitlearning which incorporates social context into the learning process to account for safety and comfort, and textitrelearning to detect and correct potentially harmful outcomes before the onset.
- Score: 3.3511723893430476
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The exponentially increasing advances in robotics and machine learning are
facilitating the transition of robots from being confined to controlled
industrial spaces to performing novel everyday tasks in domestic and urban
environments. In order to make the presence of robots safe as well as
comfortable for humans, and to facilitate their acceptance in public
environments, they are often equipped with social abilities for navigation and
interaction. Socially compliant robot navigation is increasingly being learned
from human observations or demonstrations. We argue that these techniques that
typically aim to mimic human behavior do not guarantee fair behavior. As a
consequence, social navigation models can replicate, promote, and amplify
societal unfairness such as discrimination and segregation. In this work, we
investigate a framework for diminishing bias in social robot navigation models
so that robots are equipped with the capability to plan as well as adapt their
paths based on both physical and social demands. Our proposed framework
consists of two components: \textit{learning} which incorporates social context
into the learning process to account for safety and comfort, and
\textit{relearning} to detect and correct potentially harmful outcomes before
the onset. We provide both technological and societal analysis using three
diverse case studies in different social scenarios of interaction. Moreover, we
present ethical implications of deploying robots in social environments and
propose potential solutions. Through this study, we highlight the importance
and advocate for fairness in human-robot interactions in order to promote more
equitable social relationships, roles, and dynamics and consequently positively
influence our society.
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