Automatic Incremental Model Learning for Scene Interpretation

In this paper, we investigate automatic model learning for the interpretation of complex scenes with structured objects. We present a learning, interpretation, and evaluation cycle for processing such scenes. By including learning and interpretation in one framework, an evaluation and feedback learning is enabled that takes interpretation challenges like context and combination of diverse types of structured objectes into account. The framework is tested with the interpretation of terrestrial images of man-made structures.