合成人脸数据的质量和多样性及其与生成器训练数据的关系

Biying Fu, Marcel Klemt, F. Boutros, N. Damer
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引用次数: 2

摘要

近年来,深度学习技术和大规模身份标记数据集的进步使面部识别算法能够快速获得性能。然而,由于隐私问题、伦理问题以及管理生物识别样本处理、传输和存储的法规,一些公开可用的人脸图像数据集正在被其创建者撤回。原因是这些数据集大多是从网上抓取的,可能并非所有用户都正确同意处理他们的生物特征数据。为了缓解这一问题,基于生成方法的合成人脸图像被用来代替真实人脸图像来训练和测试人脸识别。在这项工作中,我们从一般图像质量和人脸图像质量两个方面研究了合成人脸图像数据与生成器真实训练数据之间的关系,以及真实数据与合成数据之间的关系。第一个术语是指感知图像质量,第二个术语是衡量人脸图像对自动人脸识别算法的效用。为了进一步量化这些关系,我们建立了两个术语的分析,即质量值的不相似性表示质量分布的一般差异,质量多样性的不相似性表示质量值的多样性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Quality and Diversity of Synthetic Face Data and its Relation to the Generator Training Data
In recent years, advances in deep learning techniques and large-scale identity-labeled datasets have enabled facial recognition algorithms to rapidly gain performance. However, due to privacy issues, ethical concerns, and regulations governing the processing, transmission, and storage of biometric samples, several publicly available face image datasets are being withdrawn by their creators. The reason is that these datasets are mostly crawled from the web with the possibility that not all users had properly consented to processing their biometric data. To mitigate this problem, synthetic face images from generative approaches are motivated to substitute the need for authentic face images to train and test face recognition. In this work, we investigate both the relation between synthetic face image data and the generator authentic training data and the relation between the authentic data and the synthetic data in general under two aspects, i.e. the general image quality and face image quality. The first term refers to perceived image quality and the second measures the utility of a face image for automatic face recognition algorithms. To further quantify these relations, we build the analyses under two terms denoted as the dissimilarity in quality values expressing the general difference in quality distributions and the dissimilarity in quality diversity expressing the diversity in the quality values.
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