Wayfinding Behavior Detection by Smartphone
While heading to a destination, we usually rely on our cognitive map constructed by audiovisual information from maps and our sight. However, errors or gaps between the real and our cognitive map often confuse us and lead to "wayfinding". In such a wayfinding state, we tend to take actions...
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| Published in | Proceedings / International Conference on Advanced Information Networking and Applications pp. 488 - 495 |
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| Main Authors | , , , |
| Format | Conference Proceeding |
| Language | English |
| Published |
IEEE
01.05.2018
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| Subjects | |
| Online Access | Get full text |
| ISSN | 2332-5658 |
| DOI | 10.1109/AINA.2018.00078 |
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| Abstract | While heading to a destination, we usually rely on our cognitive map constructed by audiovisual information from maps and our sight. However, errors or gaps between the real and our cognitive map often confuse us and lead to "wayfinding". In such a wayfinding state, we tend to take actions like wandering for perceiving errors and gathering information about surrounding environment. If such behavior can be detected by smartphones, we may design new applications on the smartphones, for instance, virtual "concierge" that timely helps us when we lose our ways. Also grasping spots where people are likely to lose their ways in large museums and theme parks would be useful to install or improve the signs and directions to support visitors. In this paper, we propose a method to detect individuals' wayfinding behavior from walking features by smartphone sensors. Based on the preliminary experiment, we extract sensor data features that can be collected through Android OS without privacy concerns, and build a binary classifier of user states, "normal" and "wayfinding". Through the two field experiments with 17 and 104 subjects, we have confirmed that our classifier achieved the F-measure of 0.93 and 0.85, respectively. |
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| AbstractList | While heading to a destination, we usually rely on our cognitive map constructed by audiovisual information from maps and our sight. However, errors or gaps between the real and our cognitive map often confuse us and lead to "wayfinding". In such a wayfinding state, we tend to take actions like wandering for perceiving errors and gathering information about surrounding environment. If such behavior can be detected by smartphones, we may design new applications on the smartphones, for instance, virtual "concierge" that timely helps us when we lose our ways. Also grasping spots where people are likely to lose their ways in large museums and theme parks would be useful to install or improve the signs and directions to support visitors. In this paper, we propose a method to detect individuals' wayfinding behavior from walking features by smartphone sensors. Based on the preliminary experiment, we extract sensor data features that can be collected through Android OS without privacy concerns, and build a binary classifier of user states, "normal" and "wayfinding". Through the two field experiments with 17 and 104 subjects, we have confirmed that our classifier achieved the F-measure of 0.93 and 0.85, respectively. |
| Author | Narimoto, Ryosuke Yamaguchi, Hirozumi Kajita, Shugo Higashino, Teruo |
| Author_xml | – sequence: 1 givenname: Ryosuke surname: Narimoto fullname: Narimoto, Ryosuke – sequence: 2 givenname: Shugo surname: Kajita fullname: Kajita, Shugo – sequence: 3 givenname: Hirozumi surname: Yamaguchi fullname: Yamaguchi, Hirozumi – sequence: 4 givenname: Teruo surname: Higashino fullname: Higashino, Teruo |
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| Snippet | While heading to a destination, we usually rely on our cognitive map constructed by audiovisual information from maps and our sight. However, errors or gaps... |
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| StartPage | 488 |
| SubjectTerms | Cognitive map Data mining Feature extraction Games Legged locomotion Navigation Sensor phenomena and characterization Smartphone Wayfinding behavior |
| Title | Wayfinding Behavior Detection by Smartphone |
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