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Realtime tracking of passengers on the London underground transport by matching smartphone accelerometer footprints

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TLDR
This paper presents a novel yet practical idea to track passengers in realtime using the smartphone accelerometer and a training database of the entire London underground network, arguing that London tubes are self-driving transports with predictable accelerations, decelerations, and travelling time.
Abstract
Passengers travelling on the London underground tubes currently have no means of knowing their whereabouts between stations. The challenge for providing such service is that the London underground tunnels have no GPS, Wi-Fi, Bluetooth, or any kind of terrestrial signals to leverage. This paper presents a novel yet practical idea to track passengers in realtime using the smartphone accelerometer and a training database of the entire London underground network. Our rationales are that London tubes are self-driving transports with predictable accelerations, decelerations, and travelling time and that they always travel on the same fixed rail lines between stations with distinctive bumps and vibrations, which permit us to generate an accelerometer map of the tubes' movements on each line. Given the passenger's accelerometer data, we identify in realtime what line they are travelling on and what station they depart from, using a pattern-matching algorithm, with an accuracy of up to about 90% when the sampling length is equivalent to at least 3 station stops. We incorporate Principal Component Analysis to perform inertial tracking of passengers' positions along the line when trains break away from scheduled movements during rush hours. Our proposal was painstakingly assessed on the entire London underground, covering approximately 940 km of travelling distance, spanning across 381 stations on 11 different lines.

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Journal ArticleDOI

Epidemic contact tracing with smartphone sensors

TL;DR: A novel, yet practical smartphone-based contact tracing approach, employing WiFi and acoustic sound for relative distance estimate, in addition to the air pressure and the magnetic field for ambient environment matching, which is one of the first work to propose a combination of smartphone sensors for contact tracing.
Journal ArticleDOI

A review of smartphones-based indoor positioning: Challenges and applications

TL;DR: In this paper, a taxonomy of smartphones sensors is introduced, which serves as the basis to categorise different positioning systems for reviewing, and a set of criteria to be used for the evaluation purpose will be devised.
Posted Content

Epidemic contact tracing with smartphone sensors

TL;DR: In this article, the authors proposed a novel, yet practical smartphone-based contact tracing approach, employing WiFi and acoustic sound for relative distance estimate, in addition to the air pressure and the magnetic field for ambient environment matching.
Journal ArticleDOI

Using passive Wi-Fi for community crowd sensing during the COVID-19 pandemic

TL;DR: In this paper , the authors address the detection of crowds in points of interest (POI) by using a territory grid analysis categorizing POIs by the services available in each location and comparing data gathered from a community passive Wi-Fi infrastructure against mobile cellular tower association data from telecom companies.
Journal ArticleDOI

Special Issue on "Smart City and Smart Infrastructure".

TL;DR: In this paper, the main enabler of smart cities is identified as sensor technologies and data-driven approaches, which have been recognized as the main drivers of the smart cities.
References
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Journal ArticleDOI

Principal component analysis

TL;DR: Principal component analysis (PCA) as discussed by the authors is a multivariate technique that analyzes a data table in which observations are described by several inter-correlated quantitative dependent variables, and its goal is to extract the important information from the table, to represent it as a set of new orthogonal variables called principal components, and display the pattern of similarity of the observations and of the variables as points in maps.
BookDOI

New Introduction to Multiple Time Series Analysis

TL;DR: This reference work and graduate level textbook considers a wide range of models and methods for analyzing and forecasting multiple time series, which include vector autoregressive, cointegrated, vector Autoregressive moving average, multivariate ARCH and periodic processes as well as dynamic simultaneous equations and state space models.
OtherDOI

Principal Component Analysis

TL;DR: Principal component analysis (PCA) as mentioned in this paper replaces the p original variables by a smaller number, q, of derived variables, the principal components, which are linear combinations of the original variables.
Proceedings Article

Derivative Dynamic Time Warping.

TL;DR: Dynamic time warping (DTW), is a technique for efficiently achieving this warping of sequences that have the approximately the same overall component shapes, but these shapes do not line up in X-axis.
Journal ArticleDOI

Analysis of Microarray Data Using Z Score Transformation

TL;DR: It is concluded that the Z score transformation normalization method accompanied by either Z ratios or Z tests for significance estimates offers a useful method for the basic analysis of microarray data.
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