Tied factor analysis for face recognition across large pose differences

  • Simon J.D. Prince
  • , James H. Elder
  • , Jonathan Warrell
  • , Fatima M. Felisberti

    Research output: Contribution to journalArticlepeer-review

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    Abstract

    Face recognition algorithms perform very unreliably when the pose of the probe face is different from the gallery face: typical feature vectors vary more with pose than with identity. We propose a generative model that creates a one-to-many mapping from an idealized ‟identity” space to the observed data space. In identity space, the representation for each individual does not vary with pose. We model the measured feature vector as being generated by a pose-contingent linear transformation of the identity variable in the presence of Gaussian noise. We term this model ‟tied” factor analysis. The choice of linear transformation (factors) depends on the pose, but the loadings are constant (tied) for a given individual. We use the EM algorithm to estimate the linear transformations and the noise parameters from training data. We propose a probabilistic distance metric that allows a full posterior over possible matches to be established. We introduce a novel feature extraction process and investigate recognition performance by using the FERET, XM2VTS, and PIE databases. Recognition performance compares favorably with contemporary approaches.
    Original languageEnglish
    Pages (from-to)970-984
    JournalIEEE Transactions on Pattern Analysis and Machine Intelligence
    Volume30
    Issue number6
    DOIs
    Publication statusPublished - Jun 2008

    Bibliographical note

    Note: Collaboration between UCL and Kingston University. This work was supported by Engineering and Physical Sciences Research Council (EPSRC); OCE-Etech; GEOIDE and PRECARN.

    Keywords

    • Psychology
    • algorithms
    • applications
    • computing methodologies
    • face and gesture recognition
    • information technology
    • models
    • pattern recognition

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