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FGR
2008
IEEE

Learning image alignment without local minima for face detection and tracking

13 years 11 months ago
Learning image alignment without local minima for face detection and tracking
Active Appearance Models (AAMs) have been extensively used for face alignment during the last 20 years. While AAMs have numerous advantages relative to alternate approaches, they suffer from two major drawbacks: (i) AAMs are especially prone to local minima in the fitting process; (ii) few if any of the local minima of the cost function correspond to acceptable solutions. To minimize these problems, this paper proposes a method to learn the fitting cost function that explicitly optimizes that the local minima occur at and only at the places corresponding to the correct fitting parameters. The paper explores two methods to parameterize the cost function: pixel weighting and subspace learning. Experiments on synthetic and real data show the effectiveness of our approach for face alignment.
Minh Hoai Nguyen, Fernando De la Torre
Added 29 May 2010
Updated 29 May 2010
Type Conference
Year 2008
Where FGR
Authors Minh Hoai Nguyen, Fernando De la Torre
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