基于安全聚合的基于视频的分布式监控联邦动态图神经网络

Meng Jiang, Taeho Jung, Ryan Karl, Tong Zhao
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引用次数: 12

摘要

分布式监控系统具有检测、跟踪和快照在一定空间内移动的对象的能力。该系统从多个个人设备或街道摄像头生成视频数据。需要智能视频分析模型来学习目标的动态表示,以便进行检测和跟踪。我们是否可以在不将时空视频数据存储在中央服务器的情况下利用结构和动态信息,从而导致侵犯用户隐私?在这项工作中,我们引入了联邦动态图神经网络(federdy),这是一个分布式和安全的框架,用于从图序列中学习对象表示:(1)它聚集当前图中附近对象的结构信息以及前一个图中对象的动态信息。它使用自监督损失来预测物体的轨迹。(2)以联合学习的方式进行训练。位于中心的服务器将模型发送到用户设备。各自用户设备上的本地模型学习并定期将其学习结果发送到中央服务器,而无需向服务器公开用户的数据。(3)研究表明,在服务器进行加权平均后,将聚合后的参数广播给客户端进行模型同步时,可以通过解密进行检测。我们设计了一种合适的安全聚合原语聚合机制,以保护具有可扩展性的联邦学习中的安全性和隐私性。在四个摄像机数据集上的实验和仿真结果表明,Feddy算法具有很高的有效性和安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Dynamic Graph Neural Networks with Secure Aggregation for Video-based Distributed Surveillance
Distributed surveillance systems have the ability to detect, track, and snapshot objects moving around in a certain space. The systems generate video data from multiple personal devices or street cameras. Intelligent video-analysis models are needed to learn dynamic representation of the objects for detection and tracking. Can we exploit the structural and dynamic information without storing the spatiotemporal video data at a central server that leads to a violation of user privacy? In this work, we introduce Federated Dynamic Graph Neural Network (Feddy), a distributed and secured framework to learn the object representations from graph sequences: (1) It aggregates structural information from nearby objects in the current graph as well as dynamic information from those in the previous graph. It uses a self-supervised loss of predicting the trajectories of objects. (2) It is trained in a federated learning manner. The centrally located server sends the model to user devices. Local models on the respective user devices learn and periodically send their learning to the central server without ever exposing the user’s data to server. (3) Studies showed that the aggregated parameters could be inspected though decrypted when broadcast to clients for model synchronizing, after the server performed a weighted average. We design an appropriate aggregation mechanism of secure aggregation primitives that can protect the security and privacy in federated learning with scalability. Experiments on four video camera datasets as well as simulation demonstrate that Feddy achieves great effectiveness and security.
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