Curtin University Homepage
  • Library
  • Help
    • Admin

    espace - Curtin’s institutional repository

    JavaScript is disabled for your browser. Some features of this site may not work without it.
    View Item 
    • espace Home
    • espace
    • Curtin Research Publications
    • View Item
    • espace Home
    • espace
    • Curtin Research Publications
    • View Item

    Identity Adaptation for Person Re-Identification

    Access Status
    Fulltext not available
    Authors
    Ke, Q.
    Bennamoun, M.
    Rahmani, H.
    An, Senjian
    Sohel, F.
    Boussaid, F.
    Date
    2018
    Type
    Journal Article
    
    Metadata
    Show full item record
    Citation
    Ke, Q. and Bennamoun, M. and Rahmani, H. and An, S. and Sohel, F. and Boussaid, F. 2018. Identity Adaptation for Person Re-Identification. IEEE Access. 6: pp. 48147-48155.
    Source Title
    IEEE Access
    DOI
    10.1109/ACCESS.2018.2867898
    ISSN
    2169-3536
    School
    School of Electrical Engineering, Computing and Mathematical Science (EECMS)
    URI
    http://hdl.handle.net/20.500.11937/70782
    Collection
    • Curtin Research Publications
    Abstract

    © 2013 IEEE. Person re-identification (re-ID), which aims to identify the same individual from a gallery collected with different cameras, has attracted increasing attention in the multimedia retrieval community. Current deep learning methods for person re-ID focus on learning classification models on training identities to obtain an ID-discriminative embedding (IDE) extractor, which is used to extract features from testing images for re-ID. The IDE features of the testing identities might not be discriminative due to that the training identities are different from the testing identities. In this paper, we introduce a new ID-adaptation network (ID-AdaptNet), which aims to improve the discriminative power of the IDE features of the testing identities for better person re-ID. The main idea of the ID-AdaptNet is to transform the IDE features to a common discriminative latent space, where the representations of the 'seen' training identities are enforced to adapt to those of the 'unseen' training identities. More specifically, the ID-AdaptNet is trained by simultaneously minimizing the classification cross-entropy and the discrepancy between the 'seen' and the 'unseen' training identities in the hidden space. To calculate the discrepancy, we represent their probability distributions as moment sequences and calculate their distance using their central moments. We further propose a stacking ID-AdaptNet that jointly trains multiple ID-AdaptNets with a regularization method for better re-ID. Experiments show that the ID-AdaptNet and stacking ID-AdaptNet effectively improve the discriminative power of IDE features.

    Related items

    Showing items related by title, author, creator and subject.

    • Moral choice in an agency framework and related motivational typologies as impacted by personal and contextual factors for financial institutions in China.
      Woodbine, Gordon F. (2002)
      In this study an empirical investigation is conducted of the factors affecting moral choice, a necessary antecedent to moral behaviour (or action). The theoretical framework has drawn upon Rest's (1983, 1986) model of ...
    • Mental health disparities within the LGBT population: A comparison between transgender and nontransgender individuals
      Su, D.; Irwin, J.; Fisher, Christopher; Ramos, A.; Kelley, M.; Rogel-Mednoza, D.; Coleman, J. (2016)
      Purpose: This study assessed within a Midwestern LGBT population whether, and the extent to which, transgender identity was associated with elevated odds of reported discrimination, depression symptoms, and suicide attempts. ...
    • Face recognition via local preserving average neighbourhood margin maximization and extreme learning machine
      Chen, Xiaoming; Liu, Wan-Quan; Lai, J.; Li, Z.; Lu, C. (2012)
      Average neighborhood maximum margin (ANMM) is an effective method for feature extraction in appearance-based face recognition. In this paper, we extend ANMM to locality preserving average neighborhood margin maximization ...
    Advanced search

    Browse

    Communities & CollectionsIssue DateAuthorTitleSubjectDocument TypeThis CollectionIssue DateAuthorTitleSubjectDocument Type

    My Account

    Admin

    Statistics

    Most Popular ItemsStatistics by CountryMost Popular Authors

    Follow Curtin

    • 
    • 
    • 
    • 
    • 

    CRICOS Provider Code: 00301JABN: 99 143 842 569TEQSA: PRV12158

    Copyright | Disclaimer | Privacy statement | Accessibility

    Curtin would like to pay respect to the Aboriginal and Torres Strait Islander members of our community by acknowledging the traditional owners of the land on which the Perth campus is located, the Whadjuk people of the Nyungar Nation; and on our Kalgoorlie campus, the Wongutha people of the North-Eastern Goldfields.