Abstract
The development of facial databases with an abundance of annotated facial data captured under unconstrained ’inthe-wild’ conditions have made discriminative facial deformable models the de facto choice for generic facial landmark localization. Even though very good performance for the facial landmark localization has been shown by many recently proposed discriminative techniques, when it comes to the applications that require excellent accuracy, such as facial behaviour analysis and facial motion capture, the semi-automatic person-specifific or even tedious manual tracking is still the preferred choice. One way to construct a person-specifific model automatically is through incremental updating of the generic model. This paper deals with the problem of updating a discriminative facial deformable model, a problem that has not been thoroughly studied in the literature. In particular, we study for the fifirst time, to the best of our knowledge, the strategies to update a discriminative model that is trained by a cascade of regressors. We propose very effificient strategies to update the model and we show that is possible to automatically construct robust discriminative person and imaging condition specifific models ’in-the-wild’ that outperform state-of-the-art generic face alignment strategies.