Ocean Acoustic Technology Laboratory, Institute of Acoustics, Chinese Academy of Sciences, Beijing 100190, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2022 Dec 9;22(24):9649. doi: 10.3390/s22249649.
This work studies the underwater detection and tracking of diver targets under a low signal-to-reverberation ratio (SRR) in active sonar systems. In particular, a particle filter track-before-detect based on a knowledge-aided (KA-PF-TBD) algorithm is proposed. Specifically, the original echo data is directly used as the input of the algorithm, which avoids the information loss caused by threshold detection. Considering the prior motion knowledge of the underwater diver target, we established a multi-directional motion model as the state transition model. An efficient method for calculating the statistical characteristics of echo data about the extended target is proposed based on the non-parametric kernel density estimation theory. The multi-directional movement model set and the statistical characteristics of the echo data are used as the knowledge-aided information of the particle filter process: this is used to calculate the particle weight with the sub-area instead of the whole area, and then the particles with the highest weight are used to estimate the target state. Finally, the effectiveness of the proposed algorithm is proved by simulation and sea-level experimental data analysis through joint evaluation of detection and tracking performance.
本工作研究了主动声纳系统中在低信噪比 (SRR) 下水下潜水员目标的水下检测和跟踪。特别是,提出了一种基于知识辅助(KA-PF-TBD)算法的粒子滤波前检测跟踪器(Particle Filter Track-Before-Detect)。具体来说,直接将原始回波数据用作算法的输入,避免了阈值检测引起的信息丢失。考虑到水下潜水员目标的先验运动知识,我们建立了一个多方向运动模型作为状态转移模型。基于非参数核密度估计理论,提出了一种计算扩展目标回波数据统计特性的有效方法。将多方向运动模型集和回波数据的统计特性作为粒子滤波器过程的知识辅助信息:这用于使用子区域而不是整个区域计算粒子权重,然后使用具有最高权重的粒子来估计目标状态。最后,通过联合评估检测和跟踪性能,通过仿真和海试数据分析证明了所提出算法的有效性。