Dissertação
Modelo de aquisição de contexto afetivo baseado em autoanálise, classificação de tarefas e aspectos do estresse para a arquitetura ClinicSpace
Fecha
2012-11-09Registro en:
FIORIN, André. Acquisition model of affective context based int self-analysis, task classification and aspects of stress for the ClinicSpace architeture. 2012. 97 f. Dissertação (Mestrado em Ciência da Computação) - Universidade Federal de Santa Maria, Santa Maria, 2012.
Autor
Fiorin, André
Institución
Resumen
The research in Pervasive Computing have directed their efforts to the modeling and development
of programmable and interactive environments, able to assist users in their daily activities.
The Systems Group of Mobile Computing (gMob) of Federal University of Santa Maria,
developed the project ClinicSpace, a system to aid clinical tasks in hospitals based on Pervasive
Computing technologies. On the other hand, the Affective Computing, which is a relatively
new field of research in computer science, came up with the proposal to identify and synthesize
human feelings in machinery, in order to make the interaction with computing devices more
enjoyable and less frustrating. Given that pervasive systems work with context information to
adapt their applications according to user needs, it becomes feasible through the Affective Computing,
identify emotional characteristics of a person for this type of information can be used
as context element, making the adjustment more precise applications pervasive. In this context,
this research proposes a model of acquisition of affective context using techniques of inference
of stress from psychological tools, emotional self-analysis and stressful classification of clinical
tasks. Integrating the concepts of Affective Computing and Pervasive Computing, this model
aims to classify the state of stress of the users of ClinicSpace and use it as an affective context,
increasing the wealth of contextual information used in this system. To develop the proposed
model, studies were performed on the Perceived Stress Scale (PSS), responsible for identifying
stress in an individual, the use of AffectButtons to identify the user s emotional state, and the
development of a questionnaire, applied to health care professionals to identify and classify the
degree of stress of clinical activities. Based on these three approaches was possible to develop
a classification model of stress for ClinicSpace users (doctors). To validate the proposal, was
implemented a prototype of Affective Context Service for architecture ClinicSpace, which was
tested in the Annas Dias Hospital (Ibirubá - RS). The results showed that the model proposed
in this work is able to classify the state of stress for clinicians that this type of information can
be used as an element of context in pervasive systems.