Proceedings Article10.1109/CVPR.2003.1211375
Recognizing expression variant faces from a single sample image per class
Aleix M. Martinez
- 18 Jun 2003
- Vol. 1, pp 353-358
TL;DR: The experimental results show that the method proposed in this contribution outperforms the classical Euclidean distance (correlation) measure and the PCA (principal component analysis) approach.
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Abstract: Although important contributions to face recognition have been reported, few focus on how to robustly recognize expression variant faces from as few as one single training sample per class. Since learning cannot generally be applied when only one sample per class is available, matching techniques (distance measures) are usually employed instead (e.g. correlations). However, distance measures generally attempt to match all features with equal importance (weighting), because not only is it difficult to know which features are more useful (for classification), but when or under which circumstances this happens. For example, when recognizing faces in the original image space (e.g. using the Euclidean distance-correlation), it is not known which pixels are more and which are less appropriate for use. We use the optical flow between the testing and sample images as a measure of how good each pixel is. Pixels that have a small flow will have high weights, pixels with a large flow will have small weights. Our experimental results show that the method proposed in this contribution outperforms the classical Euclidean distance (correlation) measure and the PCA (principal component analysis) approach.
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Citations
Face recognition from a single image per person: A survey
TL;DR: Categorize and evaluate face recognition algorithms that rely heavily on the size and representative of training set, and the prominent algorithms are described and critically analyzed.
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Using the original and 'symmetrical face' training samples to perform representation based two-step face recognition
TL;DR: This paper proposes to exploit the symmetry of the face to generate new samples and devise a representation based method to perform face recognition that outperforms state-of-the-art face recognition methods including the sparse representation classification (SRC), linear regression classification (LRC), collaborative representation (CR) and two-phase test sample sparse representation (TPTSSR).
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Face recognition using face-ARG matching
TL;DR: Experimental results demonstrate that the proposed algorithm is quite robust to various facial expression changes, varying illumination conditions and occlusion, even when a single sample per person is given.
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A survey on techniques to handle face recognition challenges: occlusion, single sample per subject and expression
TL;DR: Various strategies that have been developed recently for overcoming the challenge of facial occlusion, the problem of dealing with a single sample per subject (SSPS) and facial expression are described and analyzed.
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Adaptive discriminant learning for face recognition
TL;DR: Adaptive Discriminant Analysis (ADA) is proposed in which the within-class scatter matrix of each enrolled subject is inferred using his/her single sample, by leveraging a generic set with multiple samples per person.
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Matthew Turk,Alex Pentland +1 more
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