Measuring fine-grained metro interchange time via smartphones

[1]  Eleni I. Vlahogianni,et al.  Driving analytics using smartphones: Algorithms, comparisons and challenges , 2017 .

[2]  Etienne Côme,et al.  Analyzing year-to-year changes in public transport passenger behaviour using smart card data , 2017 .

[3]  Weixi Gu,et al.  PhD Forum Abstract: Non-intrusive Blood Glucose Monitor by Multi-task Deep Learning , 2017, 2017 16th ACM/IEEE International Conference on Information Processing in Sensor Networks (IPSN).

[4]  Hao Jiang,et al.  Accurate indoor localization and tracking using mobile phone inertial sensors, WiFi and iBeacon , 2017, 2017 IEEE International Symposium on Inertial Sensors and Systems (INERTIAL).

[5]  Hao Jiang,et al.  Adaptive Localization in Dynamic Indoor Environments by Transfer Kernel Learning , 2017, 2017 IEEE Wireless Communications and Networking Conference (WCNC).

[6]  C. Spanos,et al.  Online learning of Contextual Hidden Markov Models for temporal-spatial data analysis , 2016, 2016 IEEE 55th Conference on Decision and Control (CDC).

[7]  Ming Jin,et al.  MetroEye: Smart Tracking Your Metro Trips Underground , 2016, MobiQuitous.

[8]  Ming Jin,et al.  MetroEye: towards fine-grained passenger tracking underground , 2016, UbiComp Adjunct.

[9]  Lionel M. Ni,et al.  A Survey on Wireless Indoor Localization from the Device Perspective , 2016, ACM Comput. Surv..

[10]  Hirozumi Yamaguchi,et al.  TransitLabel: A Crowd-Sensing System for Automatic Labeling of Transit Stations Semantics , 2016, MobiSys.

[11]  Yunhao Liu,et al.  Sleep Hunter: Towards Fine Grained Sleep Stage Tracking with Smartphones , 2016, IEEE Transactions on Mobile Computing.

[12]  Yingling Fan,et al.  Waiting time perceptions at transit stops and stations: Effects of basic amenities, gender, and security , 2016 .

[13]  Costas J. Spanos,et al.  Veto-Consensus Multiple Kernel Learning , 2016, AAAI.

[14]  Hao Jiang,et al.  A Robust Indoor Positioning System Based on the Procrustes Analysis and Weighted Extreme Learning Machine , 2016, IEEE Transactions on Wireless Communications.

[15]  Dirk Cattrysse,et al.  Reducing the passenger travel time in practice by the automated construction of a robust railway timetable , 2016 .

[16]  Otto Anker Nielsen,et al.  Passenger Perspectives in Railway Timetabling: A Literature Review , 2016 .

[17]  Yong-Sheng Zhang,et al.  Splitting Travel Time Based on AFC Data: Estimating Walking, Waiting, Transfer, and In-Vehicle Travel Times in Metro System , 2015 .

[18]  Moustafa Youssef,et al.  Towards truly ubiquitous indoor localization on a worldwide scale , 2015, SIGSPATIAL/GIS.

[19]  Hirozumi Yamaguchi,et al.  Tracking motion context of railway passengers by fusion of low-power sensors in mobile devices , 2015, SEMWEB.

[20]  Raja Sengupta,et al.  Quantifying transit travel experiences from the users’ perspective with high-resolution smartphone and vehicle location data: Methodologies, validation, and example analyses , 2015 .

[21]  Ziyou Gao,et al.  Equity-based timetable synchronization optimization in urban subway network , 2015 .

[22]  Hao Jiang,et al.  Fusion of WiFi, Smartphone Sensors and Landmarks Using the Kalman Filter for Indoor Localization , 2015, Sensors.

[23]  Masaaki Yamamoto,et al.  Automatic trip-separation method using sensor data continuously collected by smartphone , 2014, 17th International IEEE Conference on Intelligent Transportation Systems (ITSC).

[24]  Johannes Schöning,et al.  SubwayPS: towards smartphone positioning in underground public transportation systems , 2014, SIGSPATIAL/GIS.

[25]  Mun Choon Chan,et al.  Using mobile phone barometer for low-power transportation context detection , 2014, SenSys.

[26]  Dongsoo Han,et al.  Subway train stop detection using magnetometer sensing data , 2014, 2014 International Conference on Indoor Positioning and Indoor Navigation (IPIN).

[27]  Zheng Yang,et al.  ToAuth: Towards Automatic Near Field Authentication for Smartphones , 2014, 2014 IEEE 13th International Conference on Trust, Security and Privacy in Computing and Communications.

[28]  Yunhao Liu,et al.  CrossNavi: enabling real-time crossroad navigation for the blind with commodity phones , 2014, UbiComp.

[29]  Yunhao Liu,et al.  Intelligent sleep stage mining service with smartphones , 2014, UbiComp.

[30]  François Combes,et al.  Using cell phone data to measure quality of service and passenger flows of Paris transit system , 2014 .

[31]  Enhong Chen,et al.  Learning to detect subway arrivals for passengers on a train , 2014, Frontiers of Computer Science.

[32]  Yunhao Liu,et al.  Sherlock: Micro-Environment Sensing for Smartphones , 2014, IEEE Transactions on Parallel and Distributed Systems.

[33]  Aditi Misra,et al.  Crowdsourcing and Its Application to Transportation Data Collection and Management , 2014 .

[34]  Hjp Harry Timmermans,et al.  Transportation mode recognition using GPS and accelerometer data , 2013 .

[35]  Sasu Tarkoma,et al.  Accelerometer-based transportation mode detection on smartphones , 2013, SenSys '13.

[36]  Nigel H. M. Wilson,et al.  Unified estimator for excess journey time under heterogeneous passenger incidence behavior using smartcard data , 2013 .

[37]  Costas J. Spanos,et al.  Causal analysis for non-stationary time series in sensor-rich smart buildings , 2013, 2013 IEEE International Conference on Automation Science and Engineering (CASE).

[38]  Yanshuo Sun,et al.  Rail Transit Travel Time Reliability and Estimation of Passenger Route Choice Behavior , 2012 .

[39]  Wei Ni,et al.  Integrated Wi-Fi fingerprinting and inertial sensing for indoor positioning , 2011, 2011 International Conference on Indoor Positioning and Indoor Navigation.

[40]  Catherine Morency,et al.  Smart card data use in public transit: A literature review , 2011 .

[41]  James Biagioni,et al.  Cooperative transit tracking using smart-phones , 2010, SenSys '10.

[42]  Guy Lapalme,et al.  A systematic analysis of performance measures for classification tasks , 2009, Inf. Process. Manag..

[43]  Tianjian Ji,et al.  FREQUENCY AND VELOCITY OF PEOPLE WALKING , 2005 .

[44]  Charles Elkan,et al.  The Foundations of Cost-Sensitive Learning , 2001, IJCAI.

[45]  Andrew McCallum,et al.  Conditional Random Fields: Probabilistic Models for Segmenting and Labeling Sequence Data , 2001, ICML.

[46]  Andrew McCallum,et al.  Maximum Entropy Markov Models for Information Extraction and Segmentation , 2000, ICML.

[47]  H.-L. Lou,et al.  Implementing the Viterbi algorithm , 1995, IEEE Signal Process. Mag..

[48]  Jorge Nocedal,et al.  On the limited memory BFGS method for large scale optimization , 1989, Math. Program..

[49]  Han Zou,et al.  Robust Extreme Learning Machine With its Application to Indoor Positioning , 2016, IEEE Transactions on Cybernetics.

[50]  Costas J. Spanos,et al.  Causal meets Submodular: Subset Selection with Directed Information , 2016, NIPS.

[51]  Jiang Hao,et al.  Consensus-Based Parallel Extreme Learning Machine for Indoor Localization , 2016 .

[52]  Jun Liu,et al.  Analysis of subway station capacity with the use of queueing theory , 2014 .

[53]  Michel Bierlaire,et al.  A Probabilistic Map Matching Method for Smartphone GPS data , 2013 .

[54]  H. Haas,et al.  Pedestrian Dead Reckoning : A Basis for Personal Positioning , 2006 .