posted on 2008-01-01, 00:00authored byMinh Hoai Nguyen, Fernando De la Torre
Parameterized Appearance Models (PAMs) (e.g. Eigen-tracking, Active Appearance Models, Morphable Models)
are commonly used to model the appearance and shapevariation of objects in images. While PAMs have numerous
advantages relative to alternate approaches, they have at
least two drawbacks. First, they are especially prone to local minima in the fitting process. Second, often few if any of
the local minima of the cost function correspond to acceptable solutions. To solve these problems, this paper proposes
a method to learn a cost function by explicitly optimizing
that the local minima occur at and only at the places corresponding to the correct fitting parameters. To the best of
our knowledge, this is the first paper to address the problem
of learning a cost function to explicitly model local properties of the error surface to fit PAMs. Synthetic and real
examples show improvement in alignment performance in
comparison with traditional approaches.