Current state-of-the-art deep learning based face recognition (FR) models require a large number of face identities for central training. However, due to the growing privacy awareness, it is prohibited to access the face images on user devices to continually improve face recognition models. Federated Learning (FL) is a technique to address the privacy issue, which can collaboratively optimize the model without sharing the data between clients. In this work, we propose a FL based framework called FedFR to improve the generic face representation in a privacy-aware manner. Besides, the framework jointly optimizes personalized models for the corresponding clients via the proposed Decoupled Feature Customization module. The client-specific personalized model can serve the need of optimized face recognition experience for registered identities at the local device. To the best of our knowledge, we are the first to explore the personalized face recognition in FL setup. The proposed framework is validated to be superior to previous approaches on several generic and personalized face recognition benchmarks with diverse FL scenarios. The source codes and our proposed personalized FR benchmark under FL setup are available at https://github.com/jackie840129/FedFR.
翻译:目前最先进的基于面部识别的深层次学习模式要求大量面部身份用于中央培训,然而,由于隐私意识的提高,禁止获取用户设备上的面部图像,以不断改进面部识别模式。联邦学习(FL)是解决隐私问题的一种方法,可以合作优化模型,而不必在客户之间共享数据。在这项工作中,我们提议了一个基于FedFR的框架,即FedFFF,以隐私意识方式改进通用面部识别基准。此外,该框架通过拟议的脱couped自定义模块,联合优化相应客户的个人化模型。客户专用个人化模型可以满足对本地设备已登记身份的优化面部识别经验的需要。根据我们所知,我们首先探索FL设置的个人化面部识别。拟议框架经过验证后,优于先前采用的若干通用和个人化面部识别基准,并有不同的FL情景。源代码和我们根据FL设置的个人化FR基准,可在 https://github.com/rackie0129/FRISed上查阅。