Abstract. Even though many of today's vision algorithms are very successful, they lack robustness, since they are typically tailored
to a particular situation. In this paper, we argue that the principles of sensor and model integration can increase the robustness
of today's computer-vision systems substantially. As an example, multi-cue tracking of faces is discussed. The approach is
based on the principles of self-organization of the integration mechanism and self-adaptation of the cue models during tracking.
Experiments show that the robustness of simple models is leveraged significantly by sensor and model integration.
Keywords: Tracking – Cue integration – Self-organization – Condensation