个人去身份化:方法、数据集、应用和伦理方面的综合回顾以及新的维度

IF 5
Wasiq Khan;Luke K. Topham;Umar Khayam;Sandra Ortega-Martorell;Heather Panter;Darren Ansell;Dhiya Al-Jumeily;Abir J. Hussain
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引用次数: 0

摘要

由于对隐私保护和相关法规的需求日益增长,个人去身份化已成为一个备受关注的具有挑战性的问题。在这种情况下,计算机视觉和深度学习(DL)算法为人脸去识别(FDeID)提供了自动化解决方案,FDeID通常用于在视觉数据中隐藏个人身份。针对FDeID主题的现有调查研究缺乏对基于现代生成dl的FDeID方法的全面覆盖,数据资源的局限性,提出新的应用以及潜在的技术和伦理研究方向,这是本调查首次涵盖的。在整个手稿中,我们从不同的角度提供了批判性的分析,其反复出现的主题是生成深度学习技术开始对FDeID和相关领域(如步态去识别)产生越来越大的影响。此外,我们从技术和数据集的角度提出了17个新的研究维度和相应的研究问题,这将推动该领域的研究前沿。本调查中提出的见解可以使研究界和不同的利益相关者(如执法、医疗保健、工业等)受益。它对现有方法的性能分析提供了有价值的见解,确定了研究差距,突出了应用领域,并为未来的贡献提出了精确的可能途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Person De-Identification: A Comprehensive Review of Methods, Datasets, Applications, and Ethical Aspects Along With New Dimensions
Person de-identification has become a challenging problem that is receiving substantial attention because of the growing demand for privacy protection and related regulations. In this context, computer vision and Deep Learning (DL) algorithms offer automated solutions for Face de-identification (FDeID), commonly used to conceal personal identities in visual data. The existing survey studies addressing the FDeID topic lack comprehensive coverage of modern generative DL-based FDeID methods, limitations of data resources, proposing new applications, and potential technical and ethical research directions, which are covered for the first time in this survey. Throughout the manuscript, we offer critical analysis from various perspectives with a recurring theme of the growing impact that generative deep learning techniques are beginning to have on FDeID and related areas such as gait de-identification. In addition, we suggest 17 novel research dimensions and corresponding research questions in both technical and dataset perspectives, which will advance the research frontiers in this domain. The insights presented in this survey can benefit the research community and diverse stakeholders such as law enforcement, healthcare, industry, etc. It offers valuable insights into the performance analysis of existing methodologies, identifies research gaps, highlights application domains, and suggests precise possible avenues for future contributions.
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CiteScore
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