4.7 Article

Hierarchical Deep CNN Feature Set-Based Representation Learning for Robust Cross-Resolution Face Recognition

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2020.3042178

关键词

Face recognition; Feature extraction; Image resolution; Training; Generative adversarial networks; Fuses; Gallium nitride; Face recognition; representation learning; feature set; hierarchical fusion

资金

  1. Development Program of China [2018AAA0100102, 2018AAA0100100]
  2. National Natural Science Foundation of China [61972212, 61772568, 61833011]
  3. Six Talent Peaks Project in Jiangsu Province [RJFW-011]
  4. Natural Science Foundation of Jiangsu Province [BK20190089]
  5. Fundamental Research Funds for the Central Universities [18lgzd15]

向作者/读者索取更多资源

This paper introduces the problem of cross-resolution face recognition and proposes a method to address it using multi-level deep convolutional neural network feature set. The method adaptively fuses contextual features, utilizes feature set-based representation learning and fuses hierarchical recognition outputs to achieve more robust and accurate face recognition.
Cross-resolution face recognition (CRFR), which is important in intelligent surveillance and biometric forensics, refers to the problem of matching a low-resolution (LR) probe face image against high-resolution (HR) gallery face images. Existing shallow learning-based and deep learning-based methods focus on mapping the HR-LR face pairs into a joint feature space where the resolution discrepancy is mitigated. However, little works consider how to extract and utilize the intermediate discriminative features from the noisy LR query faces to further mitigate the resolution discrepancy due to the resolution limitations. In this study, we desire to fully exploit the multi-level deep convolutional neural network (CNN) feature set for robust CRFR. In particular, our contributions are threefold. (i) To learn more robust and discriminative features, we desire to adaptively fuse the contextual features from different layers. (ii) To fully exploit these contextual features, we design a feature set-based representation learning (FSRL) scheme to collaboratively represent the hierarchical features for more accurate recognition. Moreover, FSRL utilizes the primitive form of feature maps to keep the latent structural information, especially in noisy cases. (iii) To further promote the recognition performance, we desire to fuse the hierarchical recognition outputs from different stages. Meanwhile, the discriminability from different scales can also be fully integrated. By exploiting these advantages, the efficiency of the proposed method can be delivered. Experimental results on several face datasets have verified the superiority of the presented algorithm to the other competitive CRFR approaches.

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