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Transfer Learning of Structured Representation for Face Recognition
Chuan-Xian Ren, Dao-Qing Dai
School of Mathematics and Computational Science, Sun Yat-sen University, Guangzhou 510275
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Funding: 中央高校基本科研业务专项基金 (No.13lgpy26)
Opened online:20 November 2014
Accepted by: none
Citation: Chuan-Xian Ren, Dao-Qing Dai.Transfer Learning of Structured Representation for Face Recognition[OL]. [20 November 2014] http://en.paper.edu.cn/en_releasepaper/content/4618425
 
 
Face recognition under uncontrolled conditions, e.g., complex backgrounds and variable resolutions, is still challenging in image processing and computer vision. Although many methods have been proved well-performed in the controlled settings, they are usually of weak generality across different data sets. Meanwhile, several properties of the source domain, such as background and the size of subjects, play an important role in determining the final classification results. A transferrable representation learning model is proposed in this paper to enhance the recognition performance. To deeply exploit the discriminant information from the source domain and the target domain, the bio-inspired face representation is modeled as structured characterization for the commonality between different domains. The method outputs a grouped boost of the features, and presents a reasonable manner for highlighting and sharing discriminant orientations and scales. Notice that the method can be viewed as a framework, since other feature generation operators and classification metrics can be embedded therein. Experiments on the benchmark databases, including uncontrolled FRGC and LFW show the efficacy of the proposed transfer learning algorithm.
Keywords:Face recognition, heterogenous data, image representation, transfer learning
 
 
 

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