Facial age estimation based on label-sensitive learning and age-oriented regression

Pattern Recognition(2013)

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摘要
This paper provides a new age estimation approach, which distinguishes itself with the following three contributions. First, we combine distance metric learning and dimensionality reduction to better explore the connections between facial features and age labels. Second, to exploit the intrinsic ordinal relationship among human ages and overcome the potential data imbalance problem, a label-sensitive concept and several imbalance treatments are introduced in the system training phase. Finally, an age-oriented local regression is presented to capture the complicated facial aging process for age determination. The simulation results show that our approach achieves the lowest estimation error against existing methods.
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关键词
new age estimation approach,potential data imbalance problem,age-oriented regression,facial age estimation,lowest estimation error,label-sensitive learning,complicated facial aging process,age-oriented local regression,age determination,human age,age label,facial feature,imbalance treatment,machine learning,dimensionality reduction,pattern recognition,local regression,manifold learning
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