Person Re-Identification Based on Deep Convolutional Generative Adversarial Network and Expanded Neighbor Reranking

被引:0
|
作者
Dai C. [1 ]
Wang H. [1 ]
Ni T. [1 ]
Chen S. [1 ]
机构
[1] School of Information Science and Engineering, Changzhou University, Changzhou, 213164, Jiangsu
基金
中国国家自然科学基金;
关键词
Deep convolutional generative adversarial network; Label smoothing regularization; Person re-identification; Reranking; Unsupervised;
D O I
10.7544/issn1000-1239.2019.20190195
中图分类号
学科分类号
摘要
Person Re-Identification (Re-ID) focuses on identifying the same person among disjoint camera views. This task is highly challenging, especially when there exists only several images per person in the database. Aiming at the problem of insufficient number of person images in person re-identification dataset, a method that generates extra training data from the original dataset is proposed. There are two challenges in this work, one is how to get more training data from the original training set, and the other is how to deal with these newly generated training data. The deep convolutional generative adversarial network is used to generate extra unlabeled person images and label smoothing regularization is used to process these newly generated unlabeled person images. In order to further improve the accuracy of person re-identification, a new unsupervised reranking framework is proposed. This framework neither requires to recalculate a new sorted list for each image pairs nor requires any human interaction or label information. Experiments on the datasets Market-1501, CUHK03, and DukeMTMC-reID verify the effectiveness of the proposed method. © 2019, Science Press. All right reserved.
引用
收藏
页码:1632 / 1641
页数:9
相关论文
共 31 条
  • [1] Zheng L., Yang Y., Hauptmann Alexander G., Person re-identification: Past, present and future, (2016)
  • [2] LeCun Y., Bengio Y., Hinton G., Deep learning, Nature, 521, 7553, pp. 436-444, (2015)
  • [3] Wang H., Ding Z., Zhang J., Et al., Person reidentification by semisupervised dictionary rectification learning with retraining module, Journal of Electronic Imaging, 27, 4, (2018)
  • [4] Ni T., Ding Z., Chen F., Et al., Relative distance metric leaning based on clustering centralization and projection vectors learning for person re-identification, IEEE Access, 6, 1, pp. 11405-11411, (2018)
  • [5] Ding Z., Wang H., Chen F., Et al., Pedestrian weight recognition based on distance centralization and projection vector learning, Journal of Computer Research and Development, 54, 8, pp. 1785-1794, (2017)
  • [6] Liong V.E., Lu J., Ge Y., Regularized local metric learning for person re-identification, Pattern Recognition Letters, 68, 2015, pp. 288-296, (2015)
  • [7] Zheng L., Shen L., Tian L., Et al., Scalable person re-identification: a benchmark, Proc of IEEE Int Conf on Computer Vision, pp. 1116-1124, (2015)
  • [8] Li W., Zhao R., Xiao T., Et al., Deepreid: Deep filter pairing neural network for person re-identification, Proc of the 32nd IEEE Conf on Computer Vision and Pattern Recognition, pp. 152-159, (2014)
  • [9] Ristani E., Solera F., Zou R., Et al., Performance measures and a data set for multi-target, multi-camera tracking, Proc of European Conf on Computer Vision, pp. 17-35, (2016)
  • [10] Ni T., Gu X., Wang H., Et al., Discirminative deep trasfer metric learning for cross-scenario person re-identification, Journal of Electronic Imaging, 27, 4, (2018)