Kernel ELM and CNN Based Facial Age Estimation

IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops(2016)

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摘要
We propose a two-level system for apparent age estimation from facial images. Our system first classifies samples into overlapping age groups. Within each group, the apparent age is estimated with local regressors, whose outputs are then fused for the final estimate. We use a deformable parts model based face detector, and features from a pretrained deep convolutional network. Kernel extreme learning machines are used for classification. We evaluate our system on the ChaLearn Looking at People 2016 - Apparent Age Estimation challenge dataset, and report 0.3740 normal score on the sequestered test set.
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关键词
kernel ELM based facial age estimation,kernel CNN based facial age estimation,facial images,two-level system,local regressors,deformable part model based face detector,pretrained deep convolutional network,kernel extreme learning machines
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