The aim of this project is to advance the state of the art of cognitive systems by developing a methodology for autonomous and continuous learning.
The project will concentrate on structural learning, where relations between components and compositional hierarchies play a central role in object categorization. Such learning is particularly relevant for the interpretation of man-made objects, hence the project will use the recognition of buildings in outdoor scenes as its exemplary application domain. Due to the diversity of shapes and spatial arrangements of the different parts of a building, the recognition system must be capable of continually updating its conceptual knowledge. This requires the development of innovative methods for continuous learning.
The project will advance the state of the art by concentrating on techniques of pattern discovery, concept learning and ultimately self-learning. Just like a human child which has to be taught not only a certain subject but also the skills of autonomous learning, the proposed system will incorporate several levels of learning with decreasing responsibility of the teacher and increasing autonomy of the trained system, developing some self-awareness.
The project will use symbolic primitives extracted by low-level modules. The relationships between the extracted components will be represented by
- Bayesian network which will be used to model hierarchical structures,
- Markov Random fields which will be used to model peer-to-peer relations,
- logical structures which represent taxonomical and compositional hierarchies, and
- 2D grammars which will attempt to capture the structural relations syntactically.
Kooperatiospartner: University of Bonn, University fof Hamburg, Imperial College London, Czech Technical University inf Prague
Projektseite: eTrims Projektseite