Demography-based facial retouching detection using subclass supervised sparse autoencoder

Aparna Bharati, Mayank Vatsa, Richa Singh, K. Bowyer, Xin Tong
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引用次数: 23

Abstract

Digital retouching of face images is becoming more widespread due to the introduction of software packages that automate the task. Several researchers have introduced algorithms to detect whether a face image is original or retouched. However, previous work on this topic has not considered whether or how accuracy of retouching detection varies with the demography of face images. In this paper, we introduce a new Multi-Demographic Retouched Faces (MDRF) dataset, which contains images belonging to two genders, male and female, and three ethnicities, Indian, Chinese, and Caucasian. Further, retouched images are created using two different retouching software packages. The second major contribution of this research is a novel semi-supervised autoencoder incorporating “sub-class” information to improve classification. The proposed approach outperforms existing state-of-the-art detection algorithms for the task of generalized retouching detection. Experiments conducted with multiple combinations of ethnicities show that accuracy of retouching detection can vary greatly based on the demographics of the training and testing images.
基于子类监督稀疏自编码器的人口统计学面部修饰检测
由于自动化软件包的引入,面部图像的数字修饰正变得越来越普遍。一些研究人员已经引入了算法来检测人脸图像是原始的还是经过修饰的。然而,之前关于这一主题的工作并没有考虑修饰检测的准确性是否以及如何随着人脸图像的人口统计学而变化。在本文中,我们引入了一个新的多人口修饰面部(MDRF)数据集,该数据集包含两种性别(男性和女性)和三个种族(印度人、中国人和高加索人)的图像。此外,使用两种不同的修饰软件包创建修饰图像。本研究的第二个主要贡献是一种新型的半监督自动编码器,该编码器结合了“子类”信息来改进分类。提出的方法优于现有的最先进的检测算法,用于广义修饰检测任务。多种族组合的实验表明,修图检测的准确性会因训练和测试图像的人口统计学特征而有很大差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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