Our research concerns multimodal information processing for adaptive
systems. Knowledge discovery in large heterogeneous data sets, with
different scales, different uncertainty levels, sometimes incomplete,
from different sources, with dynamic changes, to be used in prediction,
feedback and decision is pursuited through computational intelligence
techniques (neural networks, fuzzy systems, support vector machines,
relevance machines, advanced signal processing, etc.,). Applications
are in medical/clinical systems, industrial processes and internet
distributed learning. The main research axes are: - eHealth for preventive and early diagnosis as
well as supporting autonomous living through advanced monitoring and
adaptive data analysis. Adaptive data analysis methods, including image
analysis algorithms, are researched in order to develop non-invasive
solutions for early diagnosis and prediction of life-critical or
potentially life-critical events, such as heart diseases, sleep and
neurological disturbances (epilepsy). Advanced monitoring research is
focused on codec research for bio-signals and colour distortion models
for accurate imaging in tele-medicine applications. The group
participates in two FP7 projects one for heart deseases prevention
other for epilepsy seizures prediction (this last as coordinator).
- Incremental kernel algorithms specially
designed for data analysis in large data sets with efficient and
adaptive selection methods, with application to biological and
physiological data analysis, namely in the context of a proposed
project to FP7 about epilepsy seizures prediction.
- Advanced kernel-based learning techniques
applied to text classification in large data sets and internet
scenarios, including active learning and hybrid strategies, powered by
the increased availability of texts in digital form and the commanding
need to organize them.
- Spectral heterogeneous learning in structured,
heterogeneous and distributed databases to provide computational tools
for representing, integrating and modeling these databases, namely the
massive amounts of biological data accessible in over a thousand of
databases. -Metaheuristics to improve multidimensional
scaling in high dimensional spaces (simulated annealing, genetic
algorithms, tabu search, …) for classification of data with application
to seizure prediction in epileptic patients (in the context of P7
Project) and supervision of industrial processes (applied to Sines Galp
refinery). - Data analysis and dynamic systems modeling for
safety control in critical industrial systems in order to support fault
tolerance, control over the internet and monitoring of embedded control
systems with application to a refinery (Galp), a paper machine
(Soporcel) and safety control of railway systems (CP). -Performance control of wireless sensor networks in the framework of an international project submitted FP7 in September 2007.
- Intelligent risk management to improve safety and reduce losses from natural railways hazards.
Group contacts:
Centre for Informatics and Systems of the University of Coimbra
Polo II, Pinhal de Marrocos, 3030-290 Coimbra, Portugal
Phone: +351.239.790.000 Fax: +351.239.701.266 Group Coordinator:
António Dourado (dourado-at-dei-dot-uc-dot-pt)
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