This paper investigates a framework of
search-based face annotation (SBFA) by mining weakly labeled facial images that
are freely available on the World Wide Web (WWW). One challenging problem for
search-based face annotation scheme is how to effectively perform annotation by
exploiting the list of most similar facial images and their weak labels that
are often noisy and incomplete. To tackle this problem, we propose an effective
unsupervised label refinement (ULR) approach for refining the labels of web
facial images using machine learning techniques. We formulate the learning
problem as a convex optimization and develop effective optimization algorithms
to solve the large-scale learning task efficiently. To further speed up the
proposed scheme, we also propose a clustering-based approximation algorithm
which can improve the scalability considerably. We have conducted an extensive
set of empirical studies on a large-scale web facial image testbed, in which
encouraging results showed that the proposed ULR algorithms can significantly
boost the performance of the promising SBFA scheme
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