Intention Reading from a Fuzzy-based Human Engagement Model and Behavioural Features Regular Paper

Authors
Yun, Sang-SeokChoi, Mun-TaekKim, MunsangSong, Jae-Bok
Issue Date
2012-08
Publisher
SAGE PUBLICATIONS INC
Citation
International Journal of Advanced Robotic Systems, v.9
Abstract
This paper presents a novel approach for a quantitative appraisal model to identify human intent so as to interact with a robot and determine an engagement level. To efficiently select an attention target for communication in multi-person interactions, we propose a fuzzy-based classification algorithm which is developed by an incremental learning procedure and which facilitates a multi-dimensional pattern analysis for ambiguous human behaviours. From acquired participants' non-verbal behaviour patterns, we extract the dominant feature data, analyse the generality of the model and verify the effectiveness for proper and prompt gaze behaviour. The proposed model works successfully in multiple people interactions.
Keywords
GAZE; Fuzzy min-max neural networks (FMMNN); gaze behaviour; focus of attention; human-robot interaction; intention reading; multi-modal sensors
ISSN
1729-8806
URI
https://pubs.kist.re.kr/handle/201004/129039
DOI
10.5772/50648
Appears in Collections:
KIST Article > 2012
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