内容评级的隐私保护年龄估计

Linwei Ye, Binglin Li, N. Mohammed, Yang Wang, Jie Liang
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引用次数: 5

摘要

内容评级(又名。成熟度分级)对各种媒体(如电影和电子游戏)对其受众的适宜性进行评级。防止儿童等特定年龄组的人接触不适当的信息是至关重要的。然而,在实践中,内容评级系统的管理通常是基于媒体来源的建议声明或基于密钥的密码,如果有人忽略建议或不知何故知道密钥,则很容易失败。在本文中,我们提出以一种隐私保护的方式估计用户的年龄,用于自动内容评级。提出了几种不同隐私程度的人脸图像隐私保护方法,并在深度神经网络架构上对年龄估计精度进行了评估。我们还引入了一种注意机制,可以自适应地从处理过的人脸图像中学习判别特征。实验表明,本文提出的基于注意力的模型优于基线模型,并且在测试中达到了与原始图像相比合理的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-Preserving Age Estimation for Content Rating
Content rating (aka. maturity rating) rates the suitability of kinds of media (e.g., movies and video games) to its audience. It is essential to prevent a specific age group of people such as children from inappropriate information. However, in practice the administration of content rating system is usually suggestion-based declaration by media sources or key-based password which can easily fail if someone ignores the suggestions or somehow knows the keys. In this paper, we propose to estimate user's age in a privacy-preserving manner for automatic content rating. Several privacy-preserving approaches on facial images with different degree of privacy are proposed and evaluated on a deep neural network architecture for age estimation accuracy. We also introduce an attention mechanism which can adaptively learn discriminative features from the processed facial images. Experiments show that the proposed attention-based model performs better than the baseline model and achieves a reasonable performance to that with raw images in testing.
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