Demographic Estimation from Face Images: Human vs. Machine Performance

Pattern Analysis and Machine Intelligence, IEEE Transactions  (2015)

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摘要
Demographic estimation entails automatic estimation of age, gender and race of a person from his face image, which has many potential applications ranging from forensics to social media. Automatic demographic estimation, particularly age estimation, remains a challenging problem because persons belonging to the same demographic group can be vastly different in their facial appearances due to intrinsic and extrinsic factors. In this paper, we present a generic framework for automatic demographic (age, gender and race) estimation. Given a face image, we first extract demographic informative features via a boosting algorithm, and then employ a hierarchical approach consisting of between-group classification, and within-group regression. Quality assessment is also developed to identify low-quality face images that are difficult to obtain reliable demographic estimates. Experimental results on a diverse set of face image databases, FG-NET ($1K$ images), FERET ( $3K$ images), MORPH II ($75K$ images), PCSO ( $100K$ images), and a subset of LFW ( $4K$ images), show that the proposed approach has superior performance compared to t- e state of the art. Finally, we use crowdsourcing to study the human perception ability of estimating demographics from face images. A side-by-side comparison of the demographic estimates from crowdsourced data and the proposed algorithm provides a number of insights into this challenging problem.
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关键词
demographic estimation,crowdsourcing,demographic informative feature,hierarchical approach,human vs. machine,quality assessment,social media,face,active appearance model,shape,boosting algorithm,estimation,regression analysis,forensics,human perception,face recognition,digital forensics,feature extraction,feret,databases
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