5,522 research outputs found
Extracting user spatio-temporal profiles from location based social networks
Report de RecercaLocation Based Social Networks (LBSN) like Twitter or Instagram are a good source for user spatio-temporal behavior. These social network provide a low rate sampling of user's location information during large intervals of time that can be used to discover complex behaviors, including mobility profiles, points of interest or unusual events. This information is important for different domains like mobility route planning, touristic recommendation systems or city planning.
Other approaches have used the data from LSBN to categorize areas of a city depending on the categories of the places that people visit or to discover user behavioral patterns from their visits. The aim of this paper is to analyze how the spatio-temporal behavior of a large number of users in a well limited geographical area can be segmented in different profiles. These behavioral profiles are obtained by means of clustering algorithms that show the different behaviors that people have when living and visiting a city.
The data analyzed was obtained from the public data feeds of Twitter and Instagram inside the area of the city of Barcelona for a period of several months. The analysis of these data shows that these kind of algorithms can be successfully applied to data from any city (or any general area) to discover useful profiles that can be described on terms of the city singular places and areas and their temporal relationships. These profiles can be used as a basis for making decisions in different application domains, specially those related with mobility inside and outside a city.Preprin
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Identification and prediction of abnormal behaviour activities of daily living in intelligent environments
The aim of this research is to investigate efficient mining of useful information from a sensor network forming an Ambient Intelligence (AmI) environment. In this thesis, we investigate methods for supporting independent living of the elderly (and specifically patients who are suffering from dementia) by means of equipping their home with a simple sensor network to monitor their behaviour and identify their Activities of Daily Living (ADL). Dementia is considered to be one of the most important causes of disability in the elderly. Mostpatients would prefer to use non-intrusive technology to help them tomaintain their independence. Such monitoring and prediction would allow the caregiver to see any trend in the behaviour of the elderly person and to be informed of any abnormal behaviour
Probabilistic modelling and inference of human behaviour from mobile phone time series
With an estimated 4.1 billion subscribers around the world, the mobile phone offers a unique
opportunity to sense and understand human behaviour from location, co-presence and communication
data. While the benefit of modelling this unprecedented amount of data is widely
recognised, a number of challenges impede the development of accurate behaviour models. In
this thesis, we identify and address two modelling problems and show that their consideration
improves the accuracy of behaviour inference.
We first examine the modelling of long-range dependencies in human behaviour. Human behaviour
models only take into account short-range dependencies in mobile phone time series.
Using information theory, we quantify long-range dependencies in mobile phone time series for
the first time, demonstrate that they exhibit periodic oscillations and introduce novel tools to
analyse them. We further show that considering what the user did 24 hours earlier improves
accuracy when predicting user behaviour five hours or longer in advance.
The second problem that we address is the modelling of temporal variations in human behaviour.
The time spent by a user on an activity varies from one day to the next. In order to
recognise behaviour patterns despite temporal variations, we establish a methodological connection
between human behaviour modelling and biological sequence alignment. This connection
allows us to compare, cluster and model behaviour sequences and introduce novel features for
behaviour recognition which improve its accuracy.
The experiments presented in this thesis have been conducted on the largest publicly available
mobile phone dataset labelled in an unsupervised fashion and are entirely repeatable. Furthermore,
our techniques only require cellular data which can easily be recorded by today's mobile
phones and could benefit a wide range of applications including life logging, health monitoring,
customer profiling and large-scale surveillance
Ambient Intelligence in Healthcare: A State-of-the-Art
Information technology advancement leads to an innovative paradigm called Ambient Intelligence (AmI). A digital environment is employed along with AmI to enable individuals to be aware to their behaviors, needs, emotions and gestures. Several applications of the AmI systems in healthcare environment attract several researchers. AmI is considered one of the recent technologies that support hospitals, patients, and specialists for personal healthcare with the aid of artificial intelligence techniques and wireless sensor networks. The improvement in the wearable devices, mobile devices, embedded software and wireless technologies open the doors to advanced applications in the AmI paradigm. The WSN and the BAN collect medical data to be used for the progress of the intelligent systems adapted inevitably. The current study outlines the AmI role in healthcare concerning with its relational and technological nature. Health
A context aware architecture to support people with partial visual impairments
Nowadays there are several systems that help people with disabilities on their quotidian tasks. The visual impairment is a problem that affects several people in their tasks and movements. In this work we propose an architecture capable of processing information from the environment and suggesting actions to the user with visual impairments, to avoid a possible obstacle. This architecture intends to improve the support given to the user in their daily movements. The idea is to use speculative computation to predict the users’ intentions and even to justify the reactive or proactive users’ behaviors.(undefined
Ambient intelligence in home care in the Netherlands
Paper based in the report for the unit “Social Factors of Innovation” of the Master degree on Computer Sciences at Faculty of Sciences and Technology, Universidade Nova de Lisboa, under the supervision of António Brandão MonizThe largest age group in the Netherlands is aging and when they are in need of home care, there will not be enough people to take care of them in the current healthcare system. One solution could be found in Ambient Intelligence, for it could aid in maintaining independency and postpone the time that people have to go to a nursing home. Furthermore, it could make the job of the caretakers easier. There are pros and cons to use Ambient Intelligence in this delicate matter that will be discussed in this paper. Furthermore, the implications of employing Ambient Intelligence strategies in home care situations will be considered. The conclusions of a recent study by the Rathenau Institute will be used as the red thread, critically looked at and taken into consideration for the recommendations of how to implement Ambient Intelligence in home care
Early diagnosis of disorders based on behavioural shifts and biomedical signals
There are many disorders that directly affect people’s behaviour. The people that are suffering from such a disorder are not aware of their situation, and too often the disorders are identified by relatives or co-workers because they notice behavioural shifts. However, when these changes become noticeable, it is often too late and irreversible damages have already been produced. Early detection is the key to prevent severe health-related damages and healthcare costs, as well as to improve people’s quality of life.
Nowadays, in full swing of ubiquitous computing paradigm, users’ behaviour patterns can be unobtrusively monitored by means of interactions with many electronic devices. The application of this technology for the problem at hand would lead to the development of systems that are able to monitor disorders’ onset and progress in an ubiquitous and unobtrusive way, thus enabling their early detection. Some attempts for the detection of specific disorders based on these technologies have been proposed, but a global methodology that could be useful for the early detection of a wide range of disorders is still missing.
This thesis aims to fill that gap by presenting as main contribution a global screening methodology for the early detection of disorders based on unobtrusive monitoring of physiological and behavioural data. The proposed methodology is the result of a cross-case analysis between two individual validation scenarios: stress in the workplace and Alzheimer’s Disease (AD) at home, from which conclusions that contribute to each of the two research fields have been drawn. The analysis of similarities and
differences between the two case studies has led to a complete and generalized definition of the steps to be taken for the detection of a new disorder based on ubiquitous computing.Jendearen portaeran eragin zuzena duten gaixotasun ugari daude. Hala ere, askotan, gaixotasuna pairatzen duten pertsonak ez dira euren egoerataz ohartzen, eta familiarteko edo lankideek identifikatu ohi dute berau jokabide aldaketetaz ohartzean. Portaera aldaketa hauek nabarmentzean, ordea, beranduegi izan ohi da eta atzerazeinak diren kalteak eraginda egon ohi dira. Osasun kalte larriak eta gehiegizko kostuak ekiditeko eta gaixoen bizi kalitatea hobetzeko gakoa, gaixotasuna garaiz detektatzea da.
Gaur egun, etengabe zabaltzen ari den Nonahiko Konputazioaren paradigmari esker, erabiltzaileen portaera ereduak era diskretu batean monitorizatu daitezke, gailu teknologikoekin izandako interakzioari esker. Eskuartean dugun arazoari konponbidea emateko teknologi hau erabiltzeak gaixotasunen sorrera eta aurrerapena nonahi eta era diskretu batean monitorizatzeko gai diren sistemak
garatzea ekarriko luke, hauek garaiz hautematea ahalbidetuz. Gaixotasun konkretu batzuentzat soluzioak proposatu izan dira teknologi honetan oinarrituz, baina metodologia orokor bat, gaixotasun sorta zabal baten detekzio goiztiarrerako erabilgarria izango dena, oraindik ez da aurkeztu.
Tesi honek hutsune hori betetzea du helburu, mota honetako gaixotasunak garaiz hautemateko, era diskretu batean atzitutako datu fisiologiko eta konportamentalen erabileran oinarritzen den behaketa sistema orokor bat proposatuz. Proposatutako metodologia bi balidazio egoera desberdinen arteko analisi gurutzatu baten emaitza da: estresa lantokian eta Alzheimerra etxean, balidazio egoera
bakoitzari dagozkion ekarpenak ere ondorioztatu ahal izan direlarik. Bi kasuen arteko antzekotasun eta desberdintasunen analisiak, gaixotasun berri bat nonahiko konputazioan oinarrituta detektatzeko jarraitu beharreko pausoak bere osotasunean eta era orokor batean definitzea ahalbidetu du
Patients Monitoring System based on a Wireless Sensor Network Adaptive Platform
Guaranteeing ubiquity and appropriateness of health services provision to the users constitutes a priority issue for the Public Health Authorities. This paper presents an innovative Wireless Personal Area Network architecture that takes advantage of some of the features provided by Intelligent Environments -large number of devices, heterogeneous networks and mobility enhancement- in order to adapt and personalise ambient conditions to the user profile
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