State estimation using an extended Kalman filter with privacy-protected observed inputs

F. González-Serrano, A. Amor-Martín, Jorge Casamayon-Anton
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引用次数: 20

Abstract

In this paper, we focus on the parameter estimation of dynamic state-space models using privacy-protected data. We consider an scenario with two parties: on one side, the data owner, which provides privacy-protected observations to, on the other side, an algorithm owner, that processes them to learn the system's state vector. We combine additive homomorphic encryption and Secure Multiparty Computation protocols to develop secure functions (multiplication, division, matrix inversion) that keep all the intermediate values encrypted in order to effectively preserve the data privacy. As an application, we consider a tracking problem, in which a Extended Kalman Filter estimates the position, velocity and acceleration of a moving target in a collaborative environment where encrypted distance measurements are used.
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使用具有隐私保护的观察输入的扩展卡尔曼滤波器进行状态估计
本文主要研究了使用隐私保护数据的动态状态空间模型的参数估计问题。我们考虑一个有两方的场景:一方是数据所有者,它向另一方提供受隐私保护的观察,另一方是算法所有者,它处理它们以学习系统的状态向量。我们将加性同态加密与安全多方计算协议相结合,开发了安全函数(乘法、除法、矩阵反演),对所有中间值进行加密,以有效地保护数据的隐私性。作为一个应用,我们考虑了一个跟踪问题,其中扩展卡尔曼滤波器在使用加密距离测量的协作环境中估计运动目标的位置,速度和加速度。
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