Two-Target Tracking Over Heterogenous Sensor Networks Under Deception Attacks

Shunyuan Xiao, Xiaohua Ge, Q. Han, Z. Cao
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Abstract

This paper addresses the problem of two-target tracking over a heterogenous sensor network under deception attacks. To track the corresponding targets, the spatially distributed sensors are classified into two groups, and the sensors in each group are capable of exchanging measurement information only with their neighboring sensors in accordance with some prescribed interaction topologies. In the presence of deception attacks, the measurement received by each sensor suffers deliberate modification and thus the tracking performance of the two targets may be degraded or even disrupted. First, a heterogenous distributed estimation scheme based on the two distinct groups of sensors is developed to deal with the simultaneous effects of the unknown but bounded process noises as well as the physically constrained deception attacks. Second, criteria for designing the desired distributed estimators and the weights of interacting information links among the inter- and intra-group sensors are derived. It is shown that the true states of the two moving targets are guaranteed to be enclosed by two groups of estimate ellipsoidal sets at each time step regardless of process noises and deception attacks. Third, an optimization problem is proposed to minimize the obtained ellipsoids, aiming to provide optimal tracking performance. Finally, an illustrative example is given to demonstrate the effectiveness of the proposed target tracking method.
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欺骗攻击下异构传感器网络的双目标跟踪
研究了异构传感器网络在欺骗攻击下的双目标跟踪问题。为了跟踪相应的目标,将空间分布的传感器分为两组,每组传感器只能按照一定的交互拓扑与相邻传感器交换测量信息。在存在欺骗攻击的情况下,每个传感器接收到的测量数据都会被故意修改,从而导致两个目标的跟踪性能下降甚至中断。首先,提出了一种基于两组不同传感器的异构分布式估计方案,以处理未知但有界的过程噪声和物理约束欺骗攻击的同时影响。其次,导出了设计期望分布估计量的准则以及组内和组间传感器之间交互信息链路的权重。结果表明,在不考虑过程噪声和欺骗攻击的情况下,两个运动目标的真实状态保证被两组估计椭球集所包围。第三,提出了一个优化问题,使得到的椭球体最小,以提供最优的跟踪性能。最后,通过一个算例验证了所提目标跟踪方法的有效性。
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