Seamless situational awareness provided by modern radar systems relies on effective methods for multiobject tracking (MOT). This paper presents a graph-based Bayesian method for nonlinear and high-dimensional MOT problems that embeds particle flow. To perform operations on the graph effectively, particles are migrated towards regions of high likelihood based on the solution of a partial differential equation. This makes it possible to obtain good object detection and tracking performance with a relatively small number of particles even if object states are high dimensional and sensor measurements are very informative. Simulation results demonstrate reduced computational complexity and memory requirements as well as favorable detection and estimation accuracy in a challenging 3-D MOT scenario.
翻译:现代雷达系统提供的无缝状况认识取决于多物体跟踪的有效方法。本文件介绍了一种基于图表的贝耶斯方法,用于处理嵌入粒子流动的非线性和高维性MOT问题。为了在图形上有效运行,粒子根据局部差分方程的解决方案转移到极有可能的区域。这样就有可能以相对较少的粒子探测和跟踪性能,即使物体状态是高维的,传感器测量也非常丰富。模拟结果显示计算复杂性和记忆要求降低,在具有挑战性的三维MOT情景中,可进行有利的探测和估计准确性。