Abstract

Pose variation remains to be a major challenge for real-world face recognition. We approach this problem through a probabilistic elastic matching method. We take a part based representation by extracting local features (e.g., LBP or SIFT) from densely sampled multi-scale image patches. By augmenting each feature with its location, a Gaussian mixture model (GMM) is trained to capture the spatial-appearance distribution of all face images in the training corpus. Each mixture component of the GMM is confined to be a spherical Gaussian to balance the influence of the appearance and the location terms. Each Gaussian component builds correspondence of a pair of features to be matched between two faces/face tracks. For face verification, we train an SVM on the vector concatenating the difference vectors of all the feature pairs to decide if a pair of faces/face tracks is matched or not. We further propose a joint Bayesian adaptation algorithm to adapt the universally trained GMM to better model the pose variations between the target pair of faces/face tracks, which consistently improves face verification accuracy. Our experiments show that our method outperforms the state-of-the-art in the most restricted protocol on Labeled Face in the Wild (LFW) and the YouTube video face database by a significant margin.

Keywords

Artificial intelligencePattern recognition (psychology)Computer scienceFace (sociological concept)Scale-invariant feature transformMatching (statistics)Probabilistic logicFeature (linguistics)Mixture modelComputer visionFeature extractionGaussianFeature vectorFacial recognition systemSupport vector machineMathematicsStatistics

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Publication Info

Year
2013
Type
article
Pages
3499-3506
Citations
199
Access
Closed

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Haoxiang Li, Gang Hua, Zhe Lin et al. (2013). Probabilistic Elastic Matching for Pose Variant Face Verification. , 3499-3506. https://doi.org/10.1109/cvpr.2013.449

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DOI
10.1109/cvpr.2013.449