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κ-Same-Net: Neural-Network-Based Face Deidentification

机译:κ-setern:基于神经网络的脸部

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An increasing amount of video and image data is being shared between government entities and other relevant stakeholders and requires careful handling of personal information. A popular approach for privacy protection in such data is the use of deidentification techniques, which aim at concealing the identity of individuals in the imagery while still preserving certain aspects of the data deidentification. In this work, we propose a novel approach towards face deidentification, called k-Same-Net, which combines recent generative neural networks (GNNs) with the well-known k-anonymity mechanism and provides formal guarantees regarding privacy protection on a closed set of identities. Our GNN is able to generate synthetic surrogate face images for idedentification by seamlessly combining features of identities used to train the GNN mode. furthermore, it allows us to guide the image-generation process with a small set of appearance-related parameters that can be used to alter specific aspects (e.g., facial expressions, age, gender) of the synthesized surrogate images. We demonstrate the feasibility of k-Same-Net in comparative experiments with competing techniques on the XM2VTS dataset and discuss the main characteristics of our approach.
机译:在政府实体和其他相关利益攸关方之间正在共享越来越多的视频和图像数据,需要仔细处理个人信息。这种数据中的一种流行的隐私保护方法是使用脱田技术,其目的在于隐藏图像中的个人的身份,同时仍然保持数据展示的某些方面。在这项工作中,我们提出了一种朝着众所周知的K-Anonymity机制结合了近期生成神经网络(GNNS)的基础展示的新方法,并提供了关于隐私保护的正式保证身份。我们的GNN能够通过无缝结合用于训练GNN模式的身份的特征来生成识别的合成代理人员面部图像。此外,它允许我们引导具有一小一组外观相关参数的图像生成过程,该参数可用于改变合成的代理图像的特定方面(例如,面部表情,年龄,性别)。我们展示了XM2VTS数据集竞争技术的比较实验中的K-Sublet Net的可行性,并讨论了我们方法的主要特征。

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