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Face recognition with multi-resolution spectral feature images. | LitMetric

Face recognition with multi-resolution spectral feature images.

PLoS One

School of Electrical Engineering and Automation, Anhui University, Hefei, China.

Published: August 2013

AI Article Synopsis

  • The one-sample-per-person problem in face recognition has gained attention due to its challenges, mainly due to limited training samples and variability in lighting and expressions.
  • A new algorithm based on spectral feature images and 2DLDA aims to improve recognition accuracy by creating multi-resolution images to expand the training set.
  • The method combines features from various orientations and scales while using a classifier committee learning strategy to address and reduce the negative impacts of lighting and expression variations.

Article Abstract

The one-sample-per-person problem has become an active research topic for face recognition in recent years because of its challenges and significance for real-world applications. However, achieving relatively higher recognition accuracy is still a difficult problem due to, usually, too few training samples being available and variations of illumination and expression. To alleviate the negative effects caused by these unfavorable factors, in this paper we propose a more accurate spectral feature image-based 2DLDA (two-dimensional linear discriminant analysis) ensemble algorithm for face recognition, with one sample image per person. In our algorithm, multi-resolution spectral feature images are constructed to represent the face images; this can greatly enlarge the training set. The proposed method is inspired by our finding that, among these spectral feature images, features extracted from some orientations and scales using 2DLDA are not sensitive to variations of illumination and expression. In order to maintain the positive characteristics of these filters and to make correct category assignments, the strategy of classifier committee learning (CCL) is designed to combine the results obtained from different spectral feature images. Using the above strategies, the negative effects caused by those unfavorable factors can be alleviated efficiently in face recognition. Experimental results on the standard databases demonstrate the feasibility and efficiency of the proposed method.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC3572116PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0055700PLOS

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