This paper presents a
novel learning method for precise eye localization, a challenge to be solved in
order to improve the performance of face processing algorithms. Few existing
approaches can directly detect and localize eyes with arbitrary angels in
predicted eye regions, face images, and original portraits at the same time. To
preserve rotation invariant property throughout the entire eye localization
framework, a codebook of invariant local features is proposed for the
representation of eye patterns. A heat map is then generated by integrating a
2−class sparse representation classifier with a pyramid-like detecting and
locating strategy to fulfill the task of discriminative classification and
precise localization. Furthermore, a series of prior information is adopted to
improve the localization precision and accuracy. Experimental results on three
different databases show that our method is capable of effectively locating
eyes in arbitrary rotation situations (360° in plane).
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