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Improved Method for Pedestrian Recognition Based on Generative Adversarial Networks

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DOI: 10.23977/jaip.2023.060204 | Downloads: 15 | Views: 470

Author(s)

Lu Jianheng 1

Affiliation(s)

1 School of Data Science, Guangzhou Huashang College, Guangzhou, China

Corresponding Author

Lu Jianheng

ABSTRACT

Traditional supervisory person re-id technology learning methods mainly relies on pre-marked image data, but there are a lot of unlabeled data in actual security scene, which seriously limits the application of person re-id technology in security monitoring field. Therefore, it is very important to study the semi-supervised learning of unlabeled data generated by antagonistic network. In the process of using GAN to generate data, in this paper we use global and local information of pedestrian image to generate realistic pedestrian image conditionally, and trains robust feature representations for different intra-class changes of cameras, so as to improve the accuracy of person re-id. The experimental results show that this method is more effective than the benchmark method. The performance of dataset Market1501 and Duke MTMC-reID improved by 4% and 3% respectively.

KEYWORDS

Re-Identification; Unlabeled Sample; Semi-supervised; Generative Adversarial Networks

CITE THIS PAPER

Lu Jianheng, Improved Method for Pedestrian Recognition Based on Generative Adversarial Networks. Journal of Artificial Intelligence Practice (2023) Vol. 6: 23-30. DOI: http://dx.doi.org/10.23977/jaip.2023.060204.

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