Abstract


Age estimation performance has been greatly improved by using convolutional neural network. However, existing methods have an inconsistency between the training objectives and evaluation metric, so they may be suboptimal. In addition, these methods always adopt image classification or face recognition models with a large amount of parameters which bring expensive computation cost and storage overhead. To alleviate these issues, we design a light network architecture and propose a unified framework which can jointly learn age distribution and regress age. The effectiveness of our approach has been demonstrated on apparent and real age estimation tasks. Our method achieves new state-of-the-art results using the single model with 36$\times$ fewer parameters and 2.6$\times$ reduction in inference time. Moreover, our method can achieve comparable results as the state-of-the-art even though model parameters are further reduced to 0.9M~(3.8MB disk storage). We also analyze that Ranking methods are implicitly learning label distributions.

Downloads


The pre-trained models and align&cropped face imgaes are publicly avaliable.(May 1, 2018).

  • Align&Cropped
    Images

  • Train&Test list
    Lists

  • ThinAgeNet
    14.9 MB

  • TinyAgeNet
    3.8 MB

  • Code
    Github


  • Download from Google Drive


    Dataset Images List ThinModel TinyModel
    ChaLearn15 Align-ChaLearn15.tar.gz train_val_list_ChaLearn15.tar.gz ThinAgeNet-ChaLearn15.t7 TinyAgeNet-ChaLearn15.t7
    ChaLearn16 Align-ChaLearn16.tar.gz train_val_list_ChaLearn16.tar.gz ThinAgeNet-ChaLearn16.t7 TinyAgeNet-ChaLearn16.t7
    Morph Align-Morph.tar.gz train_val_list_Morph.tar.gz ThinAgeNet-Morph.t7 TinyAgeNet-Morph.t7

    Main Results

    Low Error:

    High Efficiency:

    Visual Assessment:

    Video Demo


    TinyAgeNet (trained on ChaLearn16).

    Image Demo



    The propopsed ThinAgeNet (trained on ChaLearn16) at the Trump Family Photo.


    The propopsed ThinAgeNet (trained on ChaLearn16) at Oscars 2017.


    The propopsed ThinAgeNet (trained on ChaLearn16) at Elementary school students.

    Citation

    @inproceedings{gao2018dldlv2,
    	title={Age Estimation Using Expectation of Label Distribution Learning},
    	author={Gao, Bin-Bin and Zhou, Hong-Yu and Wu, Jianxin and Geng, Xin},
    	booktitle={Proc. The 27th International Joint Conference on Artificial Intelligence (IJCAI 2018)},
    	year={2018}
             }

    Contact


    Please contact Prof. Jianxin Wu (email) and Bin-Bin Gao (email) for questions about the paper.
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