Active Appearance Model Fitting under Occlusion using Fast-Robust PCA. Storer, M., Roth, P., M., Urschler, M., Bischof, H., & Birchbauer, J., A. In Proceedings of the Fourth International Conference on Computer Vision Theory and Applications, pages 129-136, 2009. SciTePress - Science and and Technology Publications.
Website doi abstract bibtex The Active Appearance Model (AAM) is a widely used method for model based vision showing excellent results. But one major drawback is that the method is not robust against occlusions. Thus, if parts of the image are occluded the method converges to local minima and the obtained results are unreliable. To overcome this problem we propose a robust AAM fitting strategy. The main idea is to apply a robust PCA model to reconstruct the missing feature information and to use the thus obtained image as input for the standard AAM fitting process. Since existing methods for robust PCA reconstruction are computationally too expensive for real-time processing we developed a more efficient method: fast robust PCA (FR-PCA). In fact, by using our FR-PCA the computational effort is drastically reduced. Moreover, more accurate reconstructions are obtained. In the experiments, we evaluated both, the fast robust PCA model on the publicly available ALOI database and the whole robust AAM fitting chain on facial images. The results clearly show the benefits of our approach in terms of accuracy and speed when processing disturbed data (i.e., images containing occlusions).
@inproceedings{
title = {Active Appearance Model Fitting under Occlusion using Fast-Robust PCA},
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abstract = {The Active Appearance Model (AAM) is a widely used method for model based vision showing excellent results. But one major drawback is that the method is not robust against occlusions. Thus, if parts of the image are occluded the method converges to local minima and the obtained results are unreliable. To overcome this problem we propose a robust AAM fitting strategy. The main idea is to apply a robust PCA model to reconstruct the missing feature information and to use the thus obtained image as input for the standard AAM fitting process. Since existing methods for robust PCA reconstruction are computationally too expensive for real-time processing we developed a more efficient method: fast robust PCA (FR-PCA). In fact, by using our FR-PCA the computational effort is drastically reduced. Moreover, more accurate reconstructions are obtained. In the experiments, we evaluated both, the fast robust PCA model on the publicly available ALOI database and the whole robust AAM fitting chain on facial images. The results clearly show the benefits of our approach in terms of accuracy and speed when processing disturbed data (i.e., images containing occlusions).},
bibtype = {inproceedings},
author = {Storer, Markus and Roth, Peter M. and Urschler, Martin and Bischof, Horst and Birchbauer, Josef A.},
doi = {10.5220/0001768701290136},
booktitle = {Proceedings of the Fourth International Conference on Computer Vision Theory and Applications}
}
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