EmoTour : estimating emotion and satisfaction of users based on behavioral cues and audiovisual data
Wissenschaftlicher Artikel
Authors
Fedotov, Dmitrii
Minker, Wolfgang
Arakawa, Yutaka
Matsuda, Yuki
Takahashi, Yuta
Faculties
Fakultät für Ingenieurwissenschaften, Informatik und PsychologieInstitutions
Institut für NachrichtentechnikExternal cooperations
Nara Institute of Science and TechnologyRIKEN, Center for Advanced Intelligence Project AIP, Tokyo
ITMO University, Saint Petersburg
JST Presto, Tokyo
Published in
Sensors ; 18 (2018), 11. - Art.-Nr. 3978. - eISSN 1424-8220
Link to original publication
https://dx.doi.org/10.3390/s18113978Peer review
ja
Document version
publishedVersion
Abstract
With the spread of smart devices, people may obtain a variety of information on
their surrounding environment thanks to sensing technologies. To design more context-aware
systems, psychological user context (e.g., emotional status) is a substantial factor for providing
useful information in an appropriate timing. As a typical use case that has a high demand for
context awareness but is not tackled widely yet, we focus on the tourism domain. In this study,
we aim to estimate the emotional status and satisfaction level of tourists during sightseeing by using
unconscious and natural tourist actions. As tourist actions, behavioral cues (eye and head/body
movement) and audiovisual data (facial/vocal expressions) were collected during sightseeing using
an eye-gaze tracker, physical-activity sensors, and a smartphone. Then, we derived high-level
features, e.g., head tilt and footsteps, from behavioral cues. We also used existing databases of
emotionally rich interactions to train emotion-recognition models and apply them in a cross-corpus
fashion to generate emotional-state prediction for the audiovisual data. Finally, the features from
several modalities are fused to estimate the emotion of tourists during sightseeing. To evaluate
our system, we conducted experiments with 22 tourists in two different touristic areas located in
Germany and Japan. As a result, we confirmed the feasibility of estimating both the emotional status
and satisfaction level of tourists. In addition, we found that effective features used for emotion and
satisfaction estimation are different among tourists with different cultural backgrounds.
Subject Headings
Ubiquitous Computing [GND]Wearable Computing [GND]
Emotion recognition [LCSH]
Wearable technology [LCSH]
Smart cities [LCSH]
Keywords
Satisfaction estimation; Dialogue systems; Smart tourismDewey Decimal Group
DDC 000 / Computer science, information & general worksDDC 004 / Data processing & computer science
Metadata
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Fedotov, Dmitrii et al. (2021): EmoTour : estimating emotion and satisfaction of users based on behavioral cues and audiovisual data. Open Access Repositorium der Universität Ulm. http://dx.doi.org/10.18725/OPARU-34177