Cargando…

Vision-Based Attentiveness Determination Using Scalable HMM Based on Relevance Theory

Attention capability is an essential component of human–robot interaction. Several robot attention models have been proposed which aim to enable a robot to identify the attentiveness of the humans with which it communicates and gives them its attention accordingly. However, previous proposed models...

Descripción completa

Detalles Bibliográficos
Autores principales: Tiawongsombat, Prasertsak, Jeong, Mun-Ho, Pirayawaraporn, Alongkorn, Lee, Joong-Jae, Yun, Joo-Seop
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6929014/
https://www.ncbi.nlm.nih.gov/pubmed/31817005
http://dx.doi.org/10.3390/s19235331
_version_ 1783482606397947904
author Tiawongsombat, Prasertsak
Jeong, Mun-Ho
Pirayawaraporn, Alongkorn
Lee, Joong-Jae
Yun, Joo-Seop
author_facet Tiawongsombat, Prasertsak
Jeong, Mun-Ho
Pirayawaraporn, Alongkorn
Lee, Joong-Jae
Yun, Joo-Seop
author_sort Tiawongsombat, Prasertsak
collection PubMed
description Attention capability is an essential component of human–robot interaction. Several robot attention models have been proposed which aim to enable a robot to identify the attentiveness of the humans with which it communicates and gives them its attention accordingly. However, previous proposed models are often susceptible to noisy observations and result in the robot’s frequent and undesired shifts in attention. Furthermore, most approaches have difficulty adapting to change in the number of participants. To address these limitations, a novel attentiveness determination algorithm is proposed for determining the most attentive person, as well as prioritizing people based on attentiveness. The proposed algorithm, which is based on relevance theory, is named the Scalable Hidden Markov Model (Scalable HMM). The Scalable HMM allows effective computation and contributes an adaptation approach for human attentiveness; unlike conventional HMMs, Scalable HMM has a scalable number of states and observations and online adaptability for state transition probabilities, in terms of changes in the current number of states, i.e., the number of participants in a robot’s view. The proposed approach was successfully tested on image sequences (7567 frames) of individuals exhibiting a variety of actions (speaking, walking, turning head, and entering or leaving a robot’s view). From these experimental results, Scalable HMM showed a detection rate of 76% in determining the most attentive person and over 75% in prioritizing people’s attention with variation in the number of participants. Compared to recent attention approaches, Scalable HMM’s performance in people attention prioritization presents an approximately 20% improvement.
format Online
Article
Text
id pubmed-6929014
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-69290142019-12-26 Vision-Based Attentiveness Determination Using Scalable HMM Based on Relevance Theory Tiawongsombat, Prasertsak Jeong, Mun-Ho Pirayawaraporn, Alongkorn Lee, Joong-Jae Yun, Joo-Seop Sensors (Basel) Article Attention capability is an essential component of human–robot interaction. Several robot attention models have been proposed which aim to enable a robot to identify the attentiveness of the humans with which it communicates and gives them its attention accordingly. However, previous proposed models are often susceptible to noisy observations and result in the robot’s frequent and undesired shifts in attention. Furthermore, most approaches have difficulty adapting to change in the number of participants. To address these limitations, a novel attentiveness determination algorithm is proposed for determining the most attentive person, as well as prioritizing people based on attentiveness. The proposed algorithm, which is based on relevance theory, is named the Scalable Hidden Markov Model (Scalable HMM). The Scalable HMM allows effective computation and contributes an adaptation approach for human attentiveness; unlike conventional HMMs, Scalable HMM has a scalable number of states and observations and online adaptability for state transition probabilities, in terms of changes in the current number of states, i.e., the number of participants in a robot’s view. The proposed approach was successfully tested on image sequences (7567 frames) of individuals exhibiting a variety of actions (speaking, walking, turning head, and entering or leaving a robot’s view). From these experimental results, Scalable HMM showed a detection rate of 76% in determining the most attentive person and over 75% in prioritizing people’s attention with variation in the number of participants. Compared to recent attention approaches, Scalable HMM’s performance in people attention prioritization presents an approximately 20% improvement. MDPI 2019-12-03 /pmc/articles/PMC6929014/ /pubmed/31817005 http://dx.doi.org/10.3390/s19235331 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Tiawongsombat, Prasertsak
Jeong, Mun-Ho
Pirayawaraporn, Alongkorn
Lee, Joong-Jae
Yun, Joo-Seop
Vision-Based Attentiveness Determination Using Scalable HMM Based on Relevance Theory
title Vision-Based Attentiveness Determination Using Scalable HMM Based on Relevance Theory
title_full Vision-Based Attentiveness Determination Using Scalable HMM Based on Relevance Theory
title_fullStr Vision-Based Attentiveness Determination Using Scalable HMM Based on Relevance Theory
title_full_unstemmed Vision-Based Attentiveness Determination Using Scalable HMM Based on Relevance Theory
title_short Vision-Based Attentiveness Determination Using Scalable HMM Based on Relevance Theory
title_sort vision-based attentiveness determination using scalable hmm based on relevance theory
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6929014/
https://www.ncbi.nlm.nih.gov/pubmed/31817005
http://dx.doi.org/10.3390/s19235331
work_keys_str_mv AT tiawongsombatprasertsak visionbasedattentivenessdeterminationusingscalablehmmbasedonrelevancetheory
AT jeongmunho visionbasedattentivenessdeterminationusingscalablehmmbasedonrelevancetheory
AT pirayawarapornalongkorn visionbasedattentivenessdeterminationusingscalablehmmbasedonrelevancetheory
AT leejoongjae visionbasedattentivenessdeterminationusingscalablehmmbasedonrelevancetheory
AT yunjooseop visionbasedattentivenessdeterminationusingscalablehmmbasedonrelevancetheory