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Performance appraisal of estimation algorithms and application of estimation algorithms to target tracking.

机译:估计算法的性能评估以及估计算法在目标跟踪中的应用。

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This dissertation consists of two parts. The first part deals with the performance appraisal of estimation algorithms. The second part focuses on the application of estimation algorithms to target tracking.; Performance appraisal is crucial for understanding, developing and comparing various estimation algorithms. In particular, with the evolvement of estimation theory and the increase of problem complexity, performance appraisal is getting more and more challenging for engineers to make comprehensive conclusions. However, the existing theoretical results are inadequate for practical reference. The first part of this dissertation is dedicated to performance measures which include local performance measures, global performance measures and model distortion measure.; The second part focuses on application of the recursive best linear unbiased estimation (BLUE) or linear minimum mean square error (LIB-M-ISE) estimation to nonlinear measurement problem in target tracking. Kalman filter has been the dominant basis for dynamic state filtering for several decades. Beyond Kalman filter, a more fundamental basis for the recursive best linear unbiased filtering has been thoroughly investigated in a series of papers by my advisor Dr. X. Rong Li. Based on the so-called quasi-recursive best linear unbiased filtering technique, the constraints of the Kalman filter Linear-Gaussian assumptions can be relaxed such that a general linear filtering technique for nonlinear systems can be achieved. An approximate optimal BLUE filter is implemented for nonlinear measurements in target tracking which outperforms the existing method significantly in terms of accuracy, credibility and robustness.
机译:本文由两部分组成。第一部分涉及估计算法的性能评估。第二部分着重于估计算法在目标跟踪中的应用。绩效评估对于理解,开发和比较各种评估算法至关重要。尤其是随着评估理论的发展和问题复杂性的增加,性能评估对工程师做出综合结论的挑战越来越大。但是,现有的理论结果不足以提供实际参考。本文的第一部分致力于绩效评估,包括地方绩效评估,全球绩效评估和模型失真评估。第二部分着重将递归最佳线性无偏估计(BLUE)或线性最小均方误差(LIB-M-ISE)估计应用于目标跟踪中的非线性测量问题。几十年来,卡尔曼滤波器一直是动态状态滤波的主要基础。除卡尔曼滤波器外,我的顾问X. Rong Li博士在一系列论文中对递归最佳线性无偏滤波的更基本基础进行了深入研究。基于所谓的拟递归最佳线性无偏滤波技术,可以放宽卡尔曼滤波器线性高斯假设的约束条件,从而可以实现非线性系统的通用线性滤波技术。针对目标跟踪中的非线性测量实现了近似最优的BLUE滤波器,在准确性,可信度和鲁棒性方面,该滤波器明显优于现有方法。

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