José R. Casar
Technical University of Madrid
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Publication
Featured researches published by José R. Casar.
Sensors | 2011
Paula Tarrío; Ana M. Bernardos; José R. Casar
The practical deployment of wireless positioning systems requires minimizing the calibration procedures while improving the location estimation accuracy. Received Signal Strength localization techniques using propagation channel models are the simplest alternative, but they are usually designed under the assumption that the radio propagation model is to be perfectly characterized a priori. In practice, this assumption does not hold and the localization results are affected by the inaccuracies of the theoretical, roughly calibrated or just imperfect channel models used to compute location. In this paper, we propose the use of weighted multilateration techniques to gain robustness with respect to these inaccuracies, reducing the dependency of having an optimal channel model. In particular, we propose two weighted least squares techniques based on the standard hyperbolic and circular positioning algorithms that specifically consider the accuracies of the different measurements to obtain a better estimation of the position. These techniques are compared to the standard hyperbolic and circular positioning techniques through both numerical simulations and an exhaustive set of real experiments on different types of wireless networks (a wireless sensor network, a WiFi network and a Bluetooth network). The algorithms not only produce better localization results with a very limited overhead in terms of computational cost but also achieve a greater robustness to inaccuracies in channel modeling.
international conference on multisensor fusion and integration for intelligent systems | 2008
Sofía Aparicio; Javier Pérez; Ana M. Bernardos; José R. Casar
This paper proposes a method for merging Bluetooth and WLAN technologies to face the problem of indoor positioning. Firstly, using Bluetooth measurements the zone where the target object is located is enclosed. Afterwards, processing WiFi measurements the RSS readings are compared only against the fingerprints of the points within the previously determined zone for the precise determination of the object position. In a recent work, we approached this problem by constructing simulated Bluetooth and WLAN maps and assuming that Bluetooth measurements determine precisely the zone where the object is located. Here we present a new algorithm to cope with erroneous identification of the preselected region. The performance of this method has been tested experimentally and the comparison between the localization results obtained using both technologies and using only WiFi is presented.
applied sciences on biomedical and communication technologies | 2008
Ana Hristova; Ana M. Bernardos; José R. Casar
Ambient assisted living is a paradigm that promotes independency in the old age with the support of advanced technologies. Ambient home care systems (AHCS) are specially design for this purpose; they aim at minimizing the potential risks that living alone may suppose for an elder, thanks to their capability of gathering data of the user, inferring information about his activity and state, and taking decisions on it. In this paper, we present a number of context-aware services (heart rate monitoring, medication prompting, generation of agenda reminders, weather alerts, emergency notifications, etc.) for the elder and his caregivers. They run on the top of an AHCS, which collects data from a network of environmental, health and physical sensors. The AHCS follows a layered fusion architecture, formed by an in-home developed context acquisition framework and a context manager (customized on the Context Toolkit) that holds the inference and reasoning functionalities. On the deployed prototype, we analyze the suitability of the selected technical approach for ambient assisted living applications.
Applied Intelligence | 2005
Jesús García Herrero; Antonio Berlanga; José M. Molina; José R. Casar
Simulation and decision support tools can help airport ground controllers to improve surface operations and safety, leading to enhancements in the process of traffic flow management. In this paper, two planning approaches for automatically finding the best routes and sequences for demanded operations are proposed and analyzed. These approaches are integrated into a general decision support system architecture. The problem addressed is the global management of departure operations, moving aircraft along airport taxiways between gate positions and runways. Two global optimization approaches have been developed together with a suitable problem representation: a modified time-space flow algorithm and a genetic algorithm, both aimed at minimizing the total ground delay. The capability and performance of these planning techniques have been illustrated on simulated samples of ground operations at Madrid Barajas International Airport.
international symposium on wireless communication systems | 2008
Paula Tarrío; Ana M. Bernardos; Juan A. Besada; José R. Casar
In this paper we propose the use of a weighted least squares estimator to calculate the position of a mobile node in RSS-based localization systems for ad hoc networks. This technique outperforms the traditional positioning algorithms in terms of localization accuracy and robustness to inaccuracy in the channel model. The performance of the method is shown both through numerical simulations and through some experiments with real data for a wireless sensor network and a WiFi network.
international conference on indoor positioning and indoor navigation | 2010
Ana M. Bernardos; José R. Casar; Paula Tarrío
Due to the random characteristics of the indoor propagation channel, received signal strength-based localization systems usually need to be manually calibrated once and again to guarantee their best performance. Calibration processes are costly in terms of time and resources, so they should be eliminated or reduced to a minimum. In this direction, this paper presents an optimization algorithm to automatically calibrate a propagation channel model by using a Least Mean Squares technique: RSS samples gathered in a number of reference points (with known positions) are used by a LMS algorithm to calculate those values for the channel models constants that minimize the error computed by a hyperbolic triangulation positioning algorithm. Preliminary results on simulated and real data show that the localization error in distance is effectively reduced after a number of training samples. The LMS algorithms simplicity and its low computational and memory costs make it adequate to be used in real systems.
distributed computing and artificial intelligence | 2009
Sofía Aparicio; Javier Pérez; Paula Tarrío; Ana M. Bernardos; José R. Casar
This paper proposes a method for merging Bluetooth and WLAN technologies to face the problem of indoor positioning. The method consists in the construction of a fusion map based on calibrated WiFi RSS and simulated Bluetooth RSSI. On a recent work, we have presented a different approach for fusing both technologies. The performance of this method is tested experimentally and the comparison between the localization results obtained using both technologies and using only WiFi is presented.
parallel and distributed computing: applications and technologies | 2009
Ana M. Bernardos; Paula Tarrío; José R. Casar
The development of ambient intelligence (AmI) applications usually implies dealing with complex sensor access and context reasoning tasks, which may significantly slow down the application development cycle when vertically assumed. To face this issue, we present CASanDRA, a middleware which provides easily consumable context information about a given user and his environment, retrieving and fusing data from personal mobile devices and external sensors. The framework is built following a layered service oriented approach. The output data from every CASanDRA’s layer are fully accessible through semantic interfaces; this allows AmI applications to retrieve raw context features, aggregated context data and complex ‘ images of context’, depending on their information needs. Moreover, different query modes -subscription, event-based, continuous and on-demand- are available. The current ‘mobile-assisted’ version of CASanDRA is composed by a CASanDRA Server, developed on an applications container and hosting the system intelligence, and CASanDRA Lite, a mobile client bundling a set of sensor level acquisition services. How an AmI application may be effortlessly built on CASanDRA is described in the paper through the design of an ‘ Ambient Home Care Monitor’.
international symposium on wireless pervasive computing | 2007
Juan A. Besada; Ana M. Bernardos; Paula Tarrío; José R. Casar
In this paper we perform a comparative analysis of several localization and tracking methods based on WIFI networks. We describe the signal environment basis of the position observations, and we discuss on training needs, localization computational needs, accuracy, stability, etc. The study is based on simulations of the signal fading effects, and on measurements taken in an experimental deployment
international conference on sensor technologies and applications | 2007
Paula Tarrío; Ana M. Bernardos; José R. Casar
In this paper a new localization method based on parametric channel models is presented. In order to reduce localization errors when working with real data, we also propose to calculate the median value of several received signal strength measurements prior to the application of the localization method. The performance of the method is shown through both numerical simulations and some tests with real data from a wireless sensor network.