Dissertação
Modelo para predição de ações e inferência de situações de risco em ambientes sensíveis ao contexto
Fecha
2015-07-31Registro en:
FABRO NETO, Alfredo Del. A MODEL FOR ACTION PREDICTION AND RISK SITUATION INFERENCE IN
CONTEXT-AWARE ENVIRONMENTS. 2015. 74 f. Dissertação (Mestrado em Ciência da Computação) - Universidade Federal de Santa Maria, Santa Maria, 2015.
Autor
Fabro Neto, Alfredo Del
Institución
Resumen
The availability of low cost sensors and mobile devices allowed many advances in
research of ubiquitous and pervasive computing area. With the capture of contextual data provided
by the sensors attached to these devices it is possible to obtain user state information
and the environment, and thus map the relationship between them. One approach to map these
relationships are the activities performed by the user, which also are part of the context itself.
However, even that human activities could cause injuries, there is not much discussion in the
academy of how ubiquitous computing could assess the risk related to them. In this sense, the
Activity Project aims to determine the risk situations related to activities performed by people
in a context aware environment, through a middleware that considers the risk in the actions that
composes an activity and the user performance while performing an activity. This thesis aims to
specify the Activity Manager middleware layer proposed for the Activity Project, whose goal is
to address issues relating to the prediction of actions and activities and the detection of risk situation
in the actions performed by an user. The model developed to address the composition and
prediction of activities is based on the Activity Theory, while the risk in actions is determined
by changes in the physiological context of the user caused by the actions performed by itself,
modeled through the model named Hyperspace Analogous to Context. Tests were conducted
and developed models outperformed proposals found for action prediction, with an accuracy
of 78.69%, as well as for risk situations detection, with an accuracy of 98.94%, showing the
efficiency of the proposed solution.