Department of Electronic Engineering, Tsinghua University, Beijing 100084, China.
Sensors (Basel). 2010;10(12):11618-32. doi: 10.3390/s101211618. Epub 2010 Dec 20.
This article concerns the problem of the estimation bound for tracking an extended target observed by a high resolution sensor. Two types of commonly used models for extended targets and the corresponding posterior Cramer-Rao lower bound (PCRLB) are discussed. The first type is the equation-extension model which extends the state space to include parameters such as target size and shape. Thus, the extended state vector can be estimated through the measurements obtained by a high resolution sensor. The measurement vector is also an expansion of the conventional one, and the additional measurements such as target extent can provide extra information for the estimation. The second model is based on multiple target measurements, each of which is an independent random draw from a spatial probability distribution. As the number of measurements per frame is unknown and random, the general form of the measurement contribution to the Fisher information matrix (FIM) conditional on the number of measurements is presented, and an extended information reduction factor (EIRF) approach is proposed to calculate the overall FIM and, therefore, the PCRLB. The bound of the second extended target model is also less than that of the point model, on condition that the average number of measurements is greater than one. Illustrative simulation examples of the two models are discussed and demonstrated.
本文研究了利用高分辨率传感器观测扩展目标的跟踪估计界问题。讨论了两种常用的扩展目标模型及其对应的后验克拉美罗下界(PCRLB)。第一种是方程扩展模型,它将状态空间扩展到包括目标尺寸和形状等参数。因此,可以通过高分辨率传感器获得的测量值来估计扩展状态向量。测量向量也是常规向量的扩展,额外的测量值,如目标范围,可以为估计提供额外的信息。第二种模型基于多个目标测量值,每个测量值都是空间概率分布的独立随机抽样。由于每一帧的测量次数是未知的和随机的,因此提出了基于测量次数的条件下,测量对 Fisher 信息矩阵(FIM)贡献的一般形式,并提出了扩展信息减少因子(EIRF)方法来计算整体 FIM,从而得到 PCRLB。在平均测量次数大于 1 的条件下,第二个扩展目标模型的界也小于点模型的界。讨论并演示了这两种模型的说明性仿真示例。