Goksel Dedeoglu,
Takeo Kanade and
Simon Baker
The Robotics Institute
Carnegie Mellon University
Pittsburgh, PA 15213
Abstract
We validate our analysis in the domain of model-based face tracking. We show how the usual Active Appearance Model (AAM) formulation overlooks the asymmetry issue, causing the fitting accuracy to degrade quickly when the observed objects are smaller than their model. We formulate a novel, ``resolution-aware fitting'' (RAF) algorithm that respects the asymmetry, and incorporates an explicit model of the blur caused by the camera's sensing elements into the fitting formulation. We compare the RAF algorithm against a state-of-the-art tracker across a variety of resolutions and AAM complexity levels. Experimental results show that RAF significantly improves the estimation accuracy of both shape and appearance parameters when fitting to low resolution data.
Recognizing and accounting for the asymmetry of image registration leads to tangible accuracy improvements in analyzing low resolution imagery.
IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 29, No. 5, May 2007, pp. 807-823 (CMU-RI-TR-06-06).
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