Humongous amounts of data bring various challenges to face image retrieval. This paper proposes an efficient method to solve those problems. Firstly, we use accurate facial landmark locations as shape features. Secondly, we utilise shape priors to provide discriminative texture features for convolutional neural networks. These shape and texture features are fused to make the learned representation more robust. Finally, in order to increase efficiency, a coarse-tofine search mechanism is exploited to efficiently find similar objects. Extensive experiments on the CASIAWebFace, MSRA-CFW, and LFW datasets illustrate the superiority of our method.
CITATION STYLE
Lu, Z., Yang, J., & Liu, Q. (2017). Face image retrieval based on shape and texture feature fusion. Computational Visual Media, 3(4), 359–368. https://doi.org/10.1007/s41095-017-0091-7
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