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Conditional Posterior Cramér–Rao Lower Bounds for Nonlinear Sequential Bayesian Estimation

机译:非线性顺序贝叶斯估计的条件后验Cramér–Rao下界

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摘要

The posterior CramérRao lower bound (PCRLB) for sequential Bayesian estimators, which was derived by Tichavsky in 1998, provides a performance bound for a general nonlinear filtering problem. However, it is an offline bound whose corresponding Fisher information matrix (FIM) is obtained by taking the expectation with respect to all the random variables, namely the measurements and the system states. As a result, this unconditional PCRLB is not well suited for adaptive resource management for dynamic systems. The new concept of conditional PCRLB is proposed and derived in this paper, which is dependent on the actual observation data up to the current time, and is implicitly dependent on the underlying system state. Therefore, it is adaptive to the particular realization of the underlying system state and provides a more accurate and effective online indication of the estimation performance than the unconditional PCRLB. Both the exact conditional PCRLB and its recursive evaluation approach including an approximation are derived. Further, a general sequential Monte Carlo solution is proposed to compute the conditional PCRLB recursively for nonlinear non-Gaussian sequential Bayesian estimation problems. The differences between this new bound and existing measurement dependent PCRLBs are investigated and discussed. Illustrative examples are also provided to show the performance of the proposed conditional PCRLB.
机译:Tichavsky在1998年推导的顺序贝叶斯估计量的后CramérRao下界(PCRLB)为一般的非线性滤波问题提供了性能极限。但是,它是一个脱机界线,其脱机界线是通过对所有随机变量(即测量值和系统状态)进行期望来获得其相应的Fisher信息矩阵(FIM)。结果,此无条件PCRLB不适用于动态系统的自适应资源管理。本文提出并推导了条件PCRLB的新概念,该概念依赖于当前时间之前的实际观测数据,而隐含地依赖于底层系统状态。因此,它与基础系统状态的特定实现相适应,并且比无条件PCRLB提供了更准确,更有效的在线评估性能指示。精确的条件PCRLB及其包括近似值的递归评估方法都可以导出。此外,提出了一种通用的顺序蒙特卡洛解决方案,用于对非线性非高斯顺序贝叶斯估计问题进行递归计算条件PCRLB。研究和讨论了这个新的绑定和现有的依赖测量的PCRLB之间的差异。还提供了说明性示例以显示建议的条件PCRLB的性能。

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