8 research outputs found

    LOCATE-US: Indoor Positioning for Mobile Devices Using Encoded Ultrasonic Signals, Inertial Sensors and Graph- Matching

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    Indoor positioning remains a challenge and, despite much research and development carried out in the last decade, there is still no standard as with the Global Navigation Satellite Systems (GNSS) outdoors. This paper presents an indoor positioning system called LOCATE-US with adjustable granularity for use with commercial mobile devices, such as smartphones or tablets. LOCATE-US is privacy-oriented and allows every device to compute its own position by fusing ultrasonic, inertial sensor measurements and map information. Ultrasonic Local Positioning Systems (ULPS) based on encoded signals are placed in critical zones that require an accuracy below a few decimeters to correct the accumulated drift errors of the inertial measurements. These systems are well suited to work at room level as walls confine acoustic waves inside. To avoid audible artifacts, the U-LPS emission is set at 41.67 kHz, and an ultrasonic acquisition module with reduced dimensions is attached to the mobile device through the USB port to capture signals. Processing in the mobile device involves an improved Time Differences of Arrival (TDOA) estimation that is fused with the measurements from an external inertial sensor to obtain real-time location and trajectory display at a 10 Hz rate. Graph-matching has also been included, considering available prior knowledge about the navigation scenario. This kind of device is an adequate platform for Location-Based Services (LBS), enabling applications such as augmented reality, guiding applications, or people monitoring and assistance. The system architecture can easily incorporate new sensors in the future, such as UWB, RFiD or others.Universidad de AlcaláJunta de Comunidades de Castilla-La ManchaAgencia Estatal de Investigació

    Off-line evaluation of mobile-centric indoor positioning systems: the experiences from the 2017 IPIN competition

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    The development of indoor positioning solutions using smartphones is a growing activity with an enormous potential for everyday life and professional applications. The research activities on this topic concentrate on the development of new positioning solutions that are tested in specific environments under their own evaluation metrics. To explore the real positioning quality of smartphone-based solutions and their capabilities for seamlessly adapting to different scenarios, it is needed to find fair evaluation frameworks. The design of competitions using extensive pre-recorded datasets is a valid way to generate open data for comparing the different solutions created by research teams. In this paper, we discuss the details of the 2017 IPIN indoor localization competition, the different datasets created, the teams participating in the event, and the results they obtained. We compare these results with other competition-based approaches (Microsoft and Perf-loc) and on-line evaluation web sites. The lessons learned by organising these competitions and the benefits for the community are addressed along the paper. Our analysis paves the way for future developments on the standardization of evaluations and for creating a widely-adopted benchmark strategy for researchers and companies in the field.We would like to thank Topcon Corporation for sponsoring the competition track with an award for the winning team. We are also grateful to Francesco Potorti, Sangjoon Park, Hideo Makino, Nobuo Kawaguchi, Takeshi Kurata and Jesus Urena for their invaluable help in organizing and promoting the IPIN competition and conference. Many thanks to Raul Montoliu, Emilio Sansano, Marina Granel and Luis Alisandra for collecting the databases in the UJITI building. Parts of this work were carried out with the financial support received from projects and grants: REPNIN network (TEC2015-71426-REDT), LORIS (TIN2012-38080-C04-04), TARSIUS (TIN2015-71564-C4-2-R (MINECO/FEDER)), SmartLoc (CSIC-PIE Ref. 201450E011), "Metodologias avanzadas para el diseno, desarrollo, evaluacion e integracion de algoritmos de localizacion en interiores" (TIN2015-70202-P), GEO-C (Project ID: 642332, H2020-MSCA-ITN-2014-Marie Sklodowska-Curie Action: Innovative Training Networks), and financial support from the Ministry of Science and Technology, Taiwan (106-3114-E-007-005 and 105-2221-E-155-013-MY3). The HFTS team has been supported in the frame of the German Federal Ministry of Education and Research programme "FHprofUnt2013" under contract 03FH035PB3 (Project SPIRIT). The UMinho team has been supported by COMPETE: POCI-01-0145-FEDER-007043 and FCT-Fundacao para a Ciencia e Tecnologia within the Project Scope: UID/CEC/00319/2013. G.M. Mendoza-Silva gratefully acknowledges funding from grant PREDOC/2016/55 by Universitat Jaume I.info:eu-repo/semantics/publishedVersio

    Localización de personas mediante sensores inerciales y su fusión con otras tecnologías

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    En el presente trabajo de Tesis se aborda el problema de la localización en entornos interiores utilizando sensores inerciales y su fusión con otras medidas para mejorar la estimación y limitar posibles derivas. Para ello, el algoritmo de localización propuesto se divide en tres partes: Una etapa de estimación del movimiento usando Pedestrian Dead Reckoning (PDR), un esquema de fusión de información que permite integrar múltiples tipos de medidas, aunque tengan relaciones no lineales, y la utilización de medidas externas (como la potencia de la señal de puntos de acceso WiFi, rangos a balizas UWB, GNSS, etc.) para limitar la deriva, proponiendo mejoras a cada una de ellas. Para mejorar el algoritmo PDR se propone la modificación del detector de apoyo utilizando un filtro de media sobre una ventana retardada. Para la estimación y corrección de errores se propone la utilización del filtro de Kalman Unscented (UKF) que simplifica los cálculos necesarios para la estimación y mejora la aproximación no lineal. Debido a la falta de información de la guiñada, una estimación PDR pura divergirá con el tiempo. Para aportar información de la orientación a la estimación se propone medir la rotación del campo magnético de acuerdo a las velocidades angulares observadas en el giróscopo. Se comprueba en varios experimentos que las mejoras evitan errores en la fase de apoyo, mejoran la estimación y disminuyen el efecto de la deriva de la orientación. Para fusionar la información del PDR con medidas externas se propone la utilización de dos esquemas: el primero, un filtro de límites que establece una distancia máxima entre 2 estimaciones, y el segundo un esquema basado en un filtro de partículas a dos etapas. El filtro de límites modifica la pdf (función de densidad de probabilidad) para evitar estimaciones muy distantes entre sí. Se comprueba que, al utilizar este método, se logra evitar la deriva un sistema PDR utilizando medidas UWB en otra parte del cuerpo. El esquema basado en un filtro de partículas utiliza la información de PDR para propagar las partículas y las medidas externas para actualizar los pesos de éstas. Se propone agregar el bias de la velocidad angular a los estados de las partículas para modelar el efecto del bias random walk (sesgo de camino aleatorio) del giróscopo. El filtro de partículas permite utilizar cualquier medida con una función de observación y una distribución de error, por lo que se estudian varios casos de estimaciones PDR fusionadas con medidas de sistemas WiFi, RFID, UWB y ZigBee. Los sistemas RF utilizados tienen un error de posicionamiento de 5 m (90 % de los casos) y la estimación PDR tiene un error creciente, pero al fusionar las estimaciones se logra un error inferior a 2 m (90 % de los casos). Por último, se utiliza el mapa del edificio para corregir las estimaciones y encauzarlas en las áreas caminables del edificio. Para ello se utiliza un método de eliminación de hipótesis (partículas) que atraviesan paredes. Este algoritmo se optimiza utilizando solo las paredes de la habitación en que se encuentra la partícula y se propone una sectorización de las operaciones para poder ser utilizada en MATLAB a tiempo real. Se demostró con señales reales que el algoritmo es capaz de auto localizar a una persona si el recorrido es no simétrico, obteniendo un nivel de error que dependerá del edificio, en nuestro caso cercano a 1 m. Si se utilizan medidas RF y el mapa, la estimación converge significativamente más rápido, y el nivel de error y el número de partículas necesarias (por ende, el tiempo de cómputo) disminuyen

    Visual-Inertial first responder localisation in large-scale indoor training environments.

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    Accurately and reliably determining the position and heading of first responders undertaking training exercises can provide valuable insights into their situational awareness and give a larger context to the decisions made. Measuring first responder movement, however, requires an accurate and portable localisation system. Training exercises of- ten take place in large-scale indoor environments with limited power infrastructure to support localisation. Indoor positioning technologies that use radio or sound waves for localisation require an extensive network of transmitters or receivers to be installed within the environment to ensure reliable coverage. These technologies also need power sources to operate, making their use impractical for this application. Inertial sensors are infrastructure independent, low cost, and low power positioning devices which are attached to the person or object being tracked, but their localisation accuracy deteriorates over long-term tracking due to intrinsic biases and sensor noise. This thesis investigates how inertial sensor tracking can be improved by providing correction from a visual sensor that uses passive infrastructure (fiducial markers) to calculate accurate position and heading values. Even though using a visual sensor increase the accuracy of the localisation system, combining them with inertial sensors is not trivial, especially when mounted on different parts of the human body and going through different motion dynamics. Additionally, visual sensors have higher energy consumption, requiring more batteries to be carried by the first responder. This thesis presents a novel sensor fusion approach by loosely coupling visual and inertial sensors to create a positioning system that accurately localises walking humans in largescale indoor environments. Experimental evaluation of the devised localisation system indicates sub-metre accuracy for a 250m long indoor trajectory. The thesis also proposes two methods to improve the energy efficiency of the localisation system. The first is a distance-based error correction approach which uses distance estimation from the foot-mounted inertial sensor to reduce the number of corrections required from the visual sensor. Results indicate a 70% decrease in energy consumption while maintaining submetre localisation accuracy. The second method is a motion type adaptive error correction approach, which uses the human walking motion type (forward, backward, or sideways) as an input to further optimise the energy efficiency of the localisation system by modulating the operation of the visual sensor. Results of this approach indicate a 25% reduction in the number of corrections required to keep submetre localisation accuracy. Overall, this thesis advances the state of the art by providing a sensor fusion solution for long-term submetre accurate localisation and methods to reduce the energy consumption, making it more practical for use in first responder training exercises

    Estimation Algorithms for Non-Gaussian State-Space Models with Application to Positioning

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    State-space models (SSMs) are used to model systems with hidden time-varying state and observable measurement output. In statistical SSMs, the state dynamics is assumed known up to a random term referred to as the process noise, and the measurements contain random measurement noise. Kalman filter (KF) and Rauch– Tung–Striebel smoother (RTSS) are widely-applied closed-form algorithms that provide the parameters of the exact Bayesian filtering and smoothing distributions for discrete-time linear statistical SSMs where the process and measurement noises follow Gaussian distributions. However, when the SSM involves nonlinear functions and/or non-Gaussian noises, the Bayesian filtering and smoothing distributions cannot in general be solved using closed-form algorithms. This thesis addresses approximate Bayesian time-series inference for two positioning-related problems where the assumption of Gaussian noises cannot capture all useful knowledge of the considered system’s statistical properties: map-assisted indoor positioning and positioning using time-delay measurements.The motion constraints imposed by the indoor map are typically incorporated in the position estimate using the particle filter (PF) algorithm. The PF is a Monte Carlo algorithm especially suited for statistical SSMs where the Bayesian posterior distributions are too complicated to be adequately approximated using a well-known distribution family with a low-dimensional parameter space. In mapassisted indoor positioning, the trajectories that cross walls or floor levels get a low probability in the model. In this thesis, improvements to three different PF algorithms for map-assisted indoor positioning are proposed and compared. In the wall-collision PF, weighted random samples, also known as particles, are moved based on inertial sensor measurements, and the particles that collide with the walls are downweighted. When the inertial sensor measurements are very noisy, map information is used to guide the particles such that fewer particles collide with the walls, which implies that more particles contribute to the estimation. When no inertial sensor information is used, the particles are moved along the links of a graph that is dense enough to approximate the set of expected user paths.Time-delay based ranging measurements of e.g. ultra-wideband (UWB) and Global Navigation Satellite Systems (GNSSs) contain occasional positive measurement errors that are large relative to the majority of the errors due to multipath effects and denied line of sight. In this thesis, computationally efficient approximate Bayesian filters and smoothers are proposed for statistical SSMs where the measurement noise follows a skew t -distribution, and the algorithms are applied to positioning using time-delay based ranging measurements. The skew t -distribution is an extension of the Gaussian distribution, which has two additional parameters that affect the heavytailedness and skewness of the distribution. When the measurement noise model is heavy-tailed, the optimal Bayesian algorithm is robust to occasional large measurement errors, and when the model is positively (or negatively) skewed, the algorithms account for the fact that most large errors are known to be positive (or negative). Therefore, the skew t -distribution is more flexible than the Gaussian distribution and captures more statistical features of the error distributions of UWB and GNSS measurements. Furthermore, the skew t -distribution admits a conditionally Gaussian hierarchical form that enables approximating the filtering and smoothing posteriors with Gaussian distributions using variational Bayes (VB) algorithms. The proposed algorithms can thus be computationally efficient compared to Monte Carlo algorithms especially when the state is high-dimensional. It is shown in this thesis that the skew-t filter improves the accuracy of UWB based indoor positioning and GNSS based outdoor positioning in urban areas compared to the extended KF. The skew-t filter’s computational burden is higher than that of the extended KF but of the same magnitude.Tila-avaruusmalleilla mallinnetaan järjestelmiä, joilla on tuntema-ton ajassa muuttuva tila sekä mitatattava ulostulo. Tilastollisissa tila-avaruusmalleissa järjestelmän tilan muutos tunnetaan lukuunotta-matta prosessikohinaksi kutsuttua satunnaista termiä, ja mittauk-set sisältävät satunnaista mittauskohinaa. Kalmanin suodatin sekäRauchin Tungin ja Striebelin siloitin ovat yleisesti käytettyjä sulje-tun muodon estimointialgoritmeja, jotka tuottavat tarkat bayesiläi-set suodatus- ja siloitusjakaumat diskreettiaikaisille lineaarisille ti-lastollisille tila-avaruusmalleille, joissa prosessi- ja mittauskohinatnoudattavat gaussisia jakaumia. Jos käsiteltyyn tila-avaruusmalliinkuitenkin liittyy epälineaarisia funktioita tai epägaussisia kohinoita,bayesiläisiä suodatus- ja siloitusjakaumia ei yleensä voida ratkais-ta suljetun muodon algoritmeilla. Tässä väitöskirjassa tutkitaan ap-proksimatiivista bayesiläistä aikasarjapäättelyä ja sen soveltamistakahteen paikannusongelmaan, joissa gaussinen jakauma ei mallinnariittävän hyvin kaikkea hyödyllistä tietoa tutkitun järjestelmän tilas-tollisista ominaisuuksista: kartta-avusteinen sisätilapaikannus sekäsignaalin kulkuaikamittauksiin perustuva paikannus.Sisätilakartan tuottamat liikerajoitteet voidaan liittää paikkaestimaat-tiin käyttäen partikkelisuodattimeksi kutsuttua algoritmia. Partik-kelisuodatin on Monte Carlo -algoritmi, joka soveltuu erityisesti ti-lastollisille tila-avaruusmalleille, joissa bayesiläisen posteriorijakau-man tiheysfunktio on niin monimutkainen, että sen approksimointitunnetuilla matalan parametridimension jakaumilla ei ole mielekäs-tä. Kartta-avusteisessa sisätilapaikannuksessa reitit, jotka leikkaavatseiniä tai kerrostasoja, saavat muita pienemmät todennäköisyydet.Tässä väitöskirjassa esitetään parannuksia kolmeen eri partikkelisuo-datusalgoritmiin, joita sovelletaan kartta-avusteiseen sisätilapaikan-vnukseen. Seinätörmayssuodattimessa painolliset satunnaisnäytteeteli partikkelit liikkuvat inertiasensorimittausten mukaisesti, ja sei-nään törmäävät partikkelit saavat pienet painot. Kun inertiasensori-mittauksissa on paljon kohinaa, partikkeleita voidaan ohjata siten,että seinätörmäysten määrä vähenee, jolloin suurempi osa partikke-leista vaikuttaa estimaattiin. Kun inertiasensorimittauksia ei käytetälainkaan, sisätilakartta voidaan esittää graafina, jonka kaarilla partik-kelit liikkuvat ja joka on riittävän tiheä approksimoimaan odotetta-vissa olevien reittien joukkoa.Esimerkiksi laajan taajuuskaistan radioista (UWB, ultra-wideband)tai paikannussatelliiteista saatavat radiosignaalin kulkuaikaan pe-rustuvat etäisyysmittaukset taas voivat sisältää monipolkuheijastus-ten ja suoran reitin estymisen aiheuttamia positiivismerkkisiä vir-heitä, jotka ovat huomattavan suuria useimpiin mittausvirheisiinverrattuna. Tässä väitöskirjassa esitetään laskennallisesti tehokkaitabayesiläisen suodattimen ja siloittimen approksimaatioita tilastol-lisille tila-avaruusmalleille, joissa mittauskohina noudattaa vinoat -jakaumaa. Vino t -jakauma on gaussisen jakauman laajennos, jasillä on kaksi lisäparametria, jotka vaikuttavat jakauman paksuhän-täisyyteen ja vinouteen. Kun mittauskohinaa mallintava jakaumaoletetaan paksuhäntäiseksi, optimaalinen bayesiläinen algoritmi eiole herkkä yksittäisille suurille mittausvirheille, ja kun jakauma olete-taan positiivisesti (tai negatiivisesti) vinoksi, algoritmit hyödyntävättietoa, että suurin osa suurista virheistä on positiivisia (tai negatiivi-sia). Vino t -jakauma on siis gaussista jakaumaa joustavampi, ja sillävoidaan mallintaa kulkuaikaan perustuvien mittausten virhejakau-maa tarkemmin kuin gaussisella jakaumalla. Vinolla t -jakaumalla onmyös ehdollisesti gaussinen esitys, joka soveltuu suodatus- ja siloi-tusposteriorien approksimointiin variaatio-Bayes-algoritmilla. Näinollen esitetyt algoritmit voivat olla laskennallisesti tehokkaampiakuin Monte Carlo -algoritmit erityisesti tilan ollessa korkeaulotteinen.Tässä väitöskirjassa näytetään, että vino-t -virhejakauman käyttö pa-rantaa UWB-radioon perustuvan sisätilapaikannuksen tarkkuuttasekä satelliittipohjaisen ulkopaikannuksen tarkkuutta kaupunkiym-päristössä verrattuna laajennettuun Kalmanin suodattimeen. Vino-t -suodatuksen laskennallinen vaativuus on suurempi mutta samaakertaluokkaa kuin laajennetun Kalmanin suodattimen

    Recent Advances in Indoor Localization Systems and Technologies

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    Despite the enormous technical progress seen in the past few years, the maturity of indoor localization technologies has not yet reached the level of GNSS solutions. The 23 selected papers in this book present the recent advances and new developments in indoor localization systems and technologies, propose novel or improved methods with increased performance, provide insight into various aspects of quality control, and also introduce some unorthodox positioning methods
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