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Facial Smile Detection Based on Deep Learning Features Authors: Kaihao Zhang, Yongzhen Huang, Hong Wu and Liang Wang Center for Research on Intelligent Perception and Computing, National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences
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Outline Introduction Method Experiments Conclusions 2/15
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Outline Introduction Method Experiments Conclusions 3/15
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Introduction Facial smile detection play an important role in understanding human emotions. Applications – Smiling payment – Patient monitoring – Photo selection Extracting powerful facial expression features is a challenging problem 4/15
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Introduction Traditional Methods – Hand-crafted features 5/15 Hand-crafted features (LBP, HOG, SIFT) SVM Our Methods – Deep learning features Deep Convolutional Neural Networks Softmax
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Introduction Main Contributions: – Propose a new CNN structure to learn facial smile features – Use two loss functions to train our model 6/15
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Outline Introduction Method Experiments Conclusions 7/15
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Method 8/15 Our framework
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Method 9/15 Loss Functions
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Outline Introduction Method Experiments Conclusions 10/15
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Experiments Dataset – GENKI-4K dataset : ≈4,000 images with a wide range of subjects with different ages and races. Results 11/15
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Qualitative results 12/15 Smile detection accuracy of our proposed structure of CNN versus different number of images on the GENKI-4K database. The two loss functions are weighted by a value of k.
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Outline Introduction Method Experiments Conclusions 13/15
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Conclusions A new structure of CNN is present to learn facial smile features. Utilize two loss functions to train our model. Experimental results show that our method outperforms the state-of-the-art methods 14/15
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THANK YOU Suggestions Questions Email: super.khzhang@gmail.com
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