校内登录
个人信息 更多+

钟德星

教授 博士生导师 硕士生导师

  • 所在单位: 自动化科学与工程学院
  • 学历: 硕博连读
  • 学位: 博士
  • 所属院系: 自动化科学与工程学院

我的新闻

当前位置: 中文主页 - 我的新闻

Paper ACCEPTED by IEEE Transactions on Circuits and Systems for Video Technology (IF: 4.133)

发布时间:2020-09-16
点击次数:
发布时间:
2020-09-16
文章标题:
Paper ACCEPTED by IEEE Transactions on Circuits and Systems for Video Technology (IF: 4.133)
内容:

 [58] X. Du, D. Zhong, and H. Shao, “Cross-Domain Palmprint Recognition Via Regularized Adversarial Domain Adaptive Hashing,” IEEE Transactions on Circuits and Systems for Video Technology, Accepted, Sep. 15, 2020.

Abstract—As an effective method of biometrics, palmprint recognition allows the safe identity recognition of humans without spatial and temporal limitations. To build a more robust palmprint recognition system, recent promising Convolutional Neural Networks (CNN) has been incorporated for better palmprint feature extraction and representation. However, the increasing number of palmprint datasets presents us with a crossdomain recognition problem where the upcoming images may come from different imaging conditions compared to the registered palmprints, which will undermine the recognition accuracy significantly. As a supervised approach, the performance of CNN-based model depends on the availability of data and labels from the same domain, which is hard for transferring recognition. To keep the outperforming recognition result of CNN-based models, we propose a novel Regularized Adversarial Domain Adaptative Hashing method (R-ADAH) for cross-domain palmprint recognition based on Deep Hashing Network (DHN). During training, the Maximum Mean Discrepancy (MMD) is incorporated for better adaptive performance. In this scenario, we only train a DHN on the source domain. With the adversarial training, the target network is becoming adaptive to the unlabeled palmprint images with more stable training, unbiased sample gradient and less sensitivity to the hyper-parameter tuning when only domain-specific label is provided. Extensive validation experiments are conducted on benchmark datasets and our selfcollected palmprint datasets by mobile phones to test the performance of our model. The results show a promising increase of the recognition performance.
Index Terms—Biometrics, Adversarial Domain Adaptation, Palmprint Recognition, Deep Hashing Network