Feature-Based Face Recognition Using Mixture-Distance

نویسندگان

  • Ingemar J. Cox
  • Joumana Ghosn
  • Peter N. Yianilos
چکیده

We consider the problem of feature-based face recognition in the setting where only a single example of each face is available for training. The mixture-distance technique we introduce achieves a recognition rate of 95% on a database of 685 people in which each face is represented by 30 measured distances. This is currently the best recorded recognition rate for a feature-based system applied to a database of this size. By comparison, nearest neighbor search using Euclidean distance yields 84%. In our work a novel distance function is constructed based on local second order statistics as estimated by modeling the training data as a mixture of normal densities. We report on the results from mixtures of several sizes. We demonstrate that a at mixture of mixtures performs as well as the best model and therefore represents an eeective solution to the model selection problem. A mixture perspective is also taken for individual Gaussians to choose between rst order (variance) and second order (covariance) models. Here an approximation to at combination is proposed and seen to perform well in practice. Our results demonstrate that even in the absence of multiple training examples for each class, it is sometimes possible to infer from a statistical model of training data, a signiicantly improved distance function for use in pattern recognition.

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تاریخ انتشار 1996