数字档案中人脸图像的跨年龄识别

Yinxue Wang, Shiqing Bai, Xueyu Wan, Fangyan Chen
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引用次数: 0

摘要

数字档案中的人脸图像年龄跨度大,随着时间的推移会出现不同程度的图像退化,导致通用人脸识别模型的性能显著下降。针对上述问题,本文提出了一种抗噪声跨年龄人脸识别模型。该模型结合局部残差学习和软阈值分割模块,将其嵌入到骨干网络中,去除无关特征,引导网络提取有效的初始人脸特征。在这种情况下,软阈值模块通过在两个不同的尺度上分支来自适应地设置阈值。将初始面部特征分解为年龄相关特征和身份相关特征。将与身份相关的特征用于人脸识别。同时,构建了基于真实档案的基准测试数据集。研究表明,该模型具有较高的鲁棒性和抗噪声干扰能力。此外,软阈值对噪声抑制也有积极的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-age face recognition for face images in digital archives
Face images in digital archives have a large age span and suffer from varying degrees of image degradation over time, leading to a significant degradation in the performance of generic face recognition models. To address the above problems, this paper proposed an anti-noise cross-age face recognition model. The model combines local residual learning and soft thresholding module, then embeds them into the backbone network to remove irrelevant features and guide the network to extract valid initial facial features. In this case, the soft thresholding module adaptively sets thresholds by branching at two different scales. The initial facial features are decomposed into age-related features and identity-related features. The identity-related features are used for face recognition. Meanwhile, a benchmark test dataset based on real archives was constructed in this paper. The study shows that the model has a high degree of robustness and anti-noise interference. Also, soft thresholding has a positive impact on noise suppression.
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