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    基于深度学习的人脸去识别化研究综述

    Review of Face De-identification Research Based on Deep Learning

    • 摘要: 近年来,随着深度学习技术的迅速发展,为人脸去识别提供了全新的解决思路. 相较于传统的图像处理技术,深度生成模型在人脸去识别领域展现出了显著的优势,包括生成图像质量高、模型鲁棒性强等特点. 综述回顾并总结了近年来利用深度学习技术在人脸去识别问题上的理论探索和研究成果. 首先概述了深度学习在人脸去识别中所采用的网络架构和基本原理,接着深入讨论了基于这些技术的去识别方法,包括面部交换、特征扰动等关键技术,并介绍了评估这些技术的标准实验指标. 进一步地,总结了当前技术面临的主要挑战,如姿态与表情的稳定性、属性解耦以及视频应用的适应性等问题,并展望了未来研究中亟需攻克的难题. 最后,强调了深度学习技术在人脸去识别领域的重要性,并指出了未来研究的方向. 综述旨在为读者提供人脸去识别领域的深入见解,并激发未来研究的新思路和方向.

       

      Abstract: In recent years, the rapid advancement of deep learning technology has introduced innovative solutions to the field of facial de-identification. Compared to traditional image processing techniques, deep generative models have demonstrated significant advantages in this domain, including high-quality image generation and robust model performance. This article reviews and synthesizes the theoretical explorations and research outcomes of deep learning technology in addressing facial de-identification challenges. It begins by outlining the network architectures and fundamental principles employed in deep learning for facial de-identification. It then delves into the de-identification methods based on these technologies, covering key techniques such as facial swapping and feature perturbation, and introduces the standard experimental metrics used to evaluate these methods. Furthermore, the article summarizes the main challenges currently faced by the technology, such as the stability of posture and expression, attribute disentanglement, and the adaptability to video applications, and looks forward to the pressing issues that future research needs to address. Ultimately, this article emphasizes the importance of deep learning technology in the field of facial de-identification and points out the direction for future research. It aims to provide readers with in-depth insights into the field of facial de-identification and inspire new ideas and directions for future studies.

       

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