A learning framework for age rank estimation based on face images with scattering transform.

IEEE Transactions on Image Processing(2015)

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摘要
This paper presents a cost-sensitive ordinal hyperplanes ranking algorithm for human age estimation based on face images. The proposed approach exploits relative-order information among the age labels for rank prediction. In our approach, the age rank is obtained by aggregating a series of binary classification results, where cost sensitivities among the labels are introduced to improve the aggregating performance. In addition, we give a theoretical analysis on designing the cost of individual binary classifier so that the misranking cost can be bounded by the total misclassification costs. An efficient descriptor, scattering transform, which scatters the Gabor coefficients and pooled with Gaussian smoothing in multiple layers, is evaluated for facial feature extraction. We show that this descriptor is a generalization of conventional bioinspired features and is more effective for face-based age inference. Experimental results demonstrate that our method outperforms the state-of-the-art age estimation approaches.
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关键词
binary classification,face recognition,human age estimation,scattering transform,active appearance model,smoothing methods,vocabulary,descriptor,gaussian smoothing,age rank estimation,cost-sensitive ordinal hyperplanes ranking,estimation theory,gabor filters,bioinspired features,feature extraction,image classification,relative-order information,ordinal ranking,facial feature extraction,rank prediction,learning framework,facial image processing,face images,gabor coefficients,multiple layers,misclassification costs,kernel,aging,manifolds,face,estimation
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