Browse > Article
http://dx.doi.org/10.12812/ksms.2018.20.2.037

Study of Users' Location Estimation based on Smartphone Sensors for Updating Indoor Evacuation Routes  

Quan, Yu (Department of Industrial Engineering, INHA University)
Lee, Chang-Ho (Department of Industrial Engineering, INHA University)
Publication Information
Journal of the Korea Safety Management & Science / v.20, no.2, 2018 , pp. 37-44 More about this Journal
Abstract
The Location Based Service is growing rapidly nowadays due to the universalization of the use for smartphone, and therefore the location determination technology has been placed in a very important position. This study suggests an algorithm that can provide the estimate of users' location by using smartphone sensors. And in doing so we will propose a methodology for the creation and update of indoor map through the more accurate position estimation using smartphone sensors such as acceleration sensor, gyroscope sensor, geomagnetic sensor and rotation sensor.
Keywords
Location Estimation; Smartphone Sensor; Indoor Evacuation Routes;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
1 L'ubica Ilkovic.ova, Pavol Kajanek and Alojz Kopac.ik(2016), "Pedestrian Indoor Positioning and Tracking using Smartphone Sensors, step Detection and Map Matching Algorithm", GNSS and Indoor Navigation.
2 Ganghee Lee(2014), "Air Navigation", Flight Institute, Vol.17, No.174.
3 Hae-Seong Kim(2017), "Fingerprint-based Indoor Localization using a Uniformly Positioned Access Point Selection Algorithm in WLAN", Master's Thesis, Computer Engineering of AJou University.
4 Jeong-Bong Seo(2012), "Handwritten Character Recognition using Gyroscope and DTW", Master's Thesis, Computer Engineering of Chung-Ang University.
5 Sehoon Kim, Hyung-il Choi, Yang-Won Rhee and Seok-Woo Jang(2011), "Efficient Dynamic Time Warping Using 2nd Derivative Operator", Korean Society of Computer and Information, VOL.16, No.2.
6 Moustsfa Alzantot and Moustafa Youssef(2012), "CrowdInside: Automatic Construction of Indoor Floorplans", 20th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems.
7 Jun-Won Lee(2014), "Android sensor story", pp.195-197.
8 Won-ho Kang and Young-nam Han(2015), "SmartPDR:Smartphone-Based Pedestrian Dead Reckoning for Indoor Localization", IEEE Sensors Journal, VOL. 15, No.5.
9 Yun-Kyung Kim, Sung-Mok Kim, Hyung-Suk Lho and We-Duke Cho(2011), "Real-Time Step Count Detection Algorithm Using a Tri-Axial Accelerometer ", Korean Society For Internet Information, VOL.12, No.3.
10 S. H. Shin, M. S. Lee, C. G. Park and Hyun Su Hong(2010), "Pedestrian Dead Reckoning System with Phone Location Awareness Algorithm", IEEE Xplore Digital Library.
11 Ministry of Science and ICT, "Wireless Communication Service Subscriber Line Statistics", www.msit.go.kr/web/msipContents/contentsView.do?cateId=mssw67&artId=1375991
12 KOSIS National Statistical Portal, "Gender Population by Administrative District", http://kosis.kr/search/search.do
13 Yu Quan, Jung-Hwan Jang, Jing-Jun Jang, Yong-Chul Jho and Chang-Ho Lee(2018), "A Study on the Guide to Emergency Exit by Tracking Location of Smartphone Users" Vol.20, No.1.
14 Daisuke taniuchi and Takuya Maekawa(2015), "Automatic Update of Indoor Location Fingerprints with Pedestrian Dead Reckoning", ACM Transactions on Embedded Computing Systems, vol.14. No.2.
15 Do Yun Kim and Lynn Choi(2017), "Correction Algorithm for PDR Performance Improvement through Smartphone Motion Sensors", KIISE Transactions on Computing Practices, Vol.23. No.3. pp. 148-155.   DOI
16 Zengshan Tian, Yuan Zhang, Mu Zhou and Yu Liu(2014), "Pedestrian dead reckoning for MARG navigation using a smartphone" EURASIP Journal on Advances in SignalProcessing.