Reliable detection of eye features and eyes in color facial images using ternary eye-verifier
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摘要
Eye detection plays an important role in applications related to face recognition. The position of eyes can be used as a reliable reference for other facial feature detection. This paper presents a novel approach for the precise and reliable detection of eyes by introducing a ternary eye-verifier. Initially, the face region is detected by combining color information and the Haar-like feature detector. The face region is then binarized and filtered with circular filters to detect eye candidates at the peaks in the filtered response. Each eye candidate is fed into a ternary eye-verifier that includes a proposed eye feature extractor based on K-means clustering with compensation for variety in iris color. The eye template in the eye-verifier is constructed based on both the knowledge of eye geometry and the detected eye features. The template matching is made by the ternary Hamming distance. Experiments over a collection of FERET face database and house-made face database with different head poses confirm that the proposed method achieves precise and reliable detection of eyes from color facial images with variation in illumination, pose, eye gazing direction, and race.
论文关键词:Eye verifier,Eye detection,Circular filter,Eye feature extraction,Hybrid face detector,Ternary eye-mask,Ternary eye-template,Eye-weight matrix
论文评审过程:Received 23 June 2011, Revised 3 April 2012, Accepted 7 April 2012, Available online 16 May 2012.
论文官网地址:https://doi.org/10.1016/j.patcog.2012.04.009