Fuzzy context-specific intention inference for robotic caregiving

To provide timely and appropriate assistance, robots must have the capability of proactively understanding a user’s personal needs, the so-called human intention inference. In human–human interaction, humans have a natural and implicit way to infer others’ intentions by selecting correlated context...

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Main Authors: Rui Liu, Xiaoli Zhang
Format: Article
Language:English
Published: SAGE Publishing 2016-10-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.1177/1729881416662780
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spelling doaj-b2cb51e42fc54778bc398c4c0fc9c9d82020-11-25T03:03:14ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142016-10-011310.1177/172988141666278010.1177_1729881416662780Fuzzy context-specific intention inference for robotic caregivingRui LiuXiaoli ZhangTo provide timely and appropriate assistance, robots must have the capability of proactively understanding a user’s personal needs, the so-called human intention inference. In human–human interaction, humans have a natural and implicit way to infer others’ intentions by selecting correlated context features and interpreting these features based on their life experience. However, robots do not have this capability and it is not realistic to build an explicit formula to associate human intentions with context. In this article, a novel fuzzy context-specific intention inference method is developed for human-like implicit human intention inference. With a fuzzy manner, context features are converted into discrete context statuses, which are similar to human subjective feelings. An intention-centered common sense database is developed consisting of correlated fuzzy context statuses, object affordances, and their relationship with human intentions. With this database, a Fuzzy Naïve Bayesian Network algorithm is adopted for implicit intention inference. Home scenario results validated the fuzzy context-specific intention inference methods reliability and lab scenario results validated the fuzzy context-specific intention inference methods effectiveness and robustness. This work is expected to develop intuitive and effective human–robot interaction, consequently enhancing the adoption of assistive technologies and improving the independence of the disabled and elderly in activities of daily living.https://doi.org/10.1177/1729881416662780
collection DOAJ
language English
format Article
sources DOAJ
author Rui Liu
Xiaoli Zhang
spellingShingle Rui Liu
Xiaoli Zhang
Fuzzy context-specific intention inference for robotic caregiving
International Journal of Advanced Robotic Systems
author_facet Rui Liu
Xiaoli Zhang
author_sort Rui Liu
title Fuzzy context-specific intention inference for robotic caregiving
title_short Fuzzy context-specific intention inference for robotic caregiving
title_full Fuzzy context-specific intention inference for robotic caregiving
title_fullStr Fuzzy context-specific intention inference for robotic caregiving
title_full_unstemmed Fuzzy context-specific intention inference for robotic caregiving
title_sort fuzzy context-specific intention inference for robotic caregiving
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2016-10-01
description To provide timely and appropriate assistance, robots must have the capability of proactively understanding a user’s personal needs, the so-called human intention inference. In human–human interaction, humans have a natural and implicit way to infer others’ intentions by selecting correlated context features and interpreting these features based on their life experience. However, robots do not have this capability and it is not realistic to build an explicit formula to associate human intentions with context. In this article, a novel fuzzy context-specific intention inference method is developed for human-like implicit human intention inference. With a fuzzy manner, context features are converted into discrete context statuses, which are similar to human subjective feelings. An intention-centered common sense database is developed consisting of correlated fuzzy context statuses, object affordances, and their relationship with human intentions. With this database, a Fuzzy Naïve Bayesian Network algorithm is adopted for implicit intention inference. Home scenario results validated the fuzzy context-specific intention inference methods reliability and lab scenario results validated the fuzzy context-specific intention inference methods effectiveness and robustness. This work is expected to develop intuitive and effective human–robot interaction, consequently enhancing the adoption of assistive technologies and improving the independence of the disabled and elderly in activities of daily living.
url https://doi.org/10.1177/1729881416662780
work_keys_str_mv AT ruiliu fuzzycontextspecificintentioninferenceforroboticcaregiving
AT xiaolizhang fuzzycontextspecificintentioninferenceforroboticcaregiving
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