首页> 外文会议>Conference on Signal and Data Processing of Small Targets 2003; Aug 5-7, 2003; San Diego, California, USA >An EM-ML Algorithm for Track Initialization with Features Using Possibly Non-informative Data
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An EM-ML Algorithm for Track Initialization with Features Using Possibly Non-informative Data

机译:具有可能使用非信息性数据的特征的轨道初始化的EM-ML算法

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Initializing and maintaining a track for a low observable (low SNR, low target detection probability and high false alarm rate) target can be very challenging because of the low information content of measurements. In addition, in some scenarios, target-originated measurements might not be present in many consecutive scans because of mispointing, target maneuvers or erroneous preprocessing. That is, one might have a set of non-informative scans that could result in poor track initialization and maintenance. In this paper an algorithm based on the Expectation-Maximization (EM) algorithm combined with Maximum Likelihood (ML) estimation is presented for tracking slowly maneuvering targets in heavy clutter and possibly non-informative scans. The adaptive sliding-window EM-ML approach, which operates in batch mode, tries to reject or weight down non-informative scans using the Q-function in the M-step of the EM algorithm. A track validation technique is used to confirm the validity of the EM-ML estimates. It is shown that target features in the form of, for example, amplitude information, can also be used to improve the estimates. In addition, performance bounds based on the supplemented EM (SEM) technique are also presented. The effectiveness of new algorithm is first demonstrated on a 78-frame Long Wave Infrared (LWIR) data sequence consisting of an F1 Mirage fighter jet in heavy clutter. Previously, this scenario has been used as a benchmark for evaluating the performance of other track initialization algorithms. The new EM-ML estimator confirms the track by frame 20 while the ML-PDA (Maximum Likelihood estimator combined with Probabilistic Data Association) algorithm, the IMM-MHT (Interacting Multiple Model estimator combined with Multiple Hypothesis Tracking) and the IMM-PDA estimator previously required 28, 38 and 39 frames, respectively. The benefits of the new algorithm in terms of accuracy, early detection and computational load are illustrated using simulated scenarios as well.
机译:由于测量的信息量较低,因此初始化和维护低可观察性(低SNR,低目标检测概率和高虚警率)目标的跟踪可能非常具有挑战性。此外,在某些情况下,由于指向错误,目标操作或错误的预处理,在许多连续扫描中可能不会出现源自目标的测量。也就是说,可能会有一组非信息性扫描,这可能会导致不良的磁道初始化和维护。本文提出了一种基于期望最大化(EM)算法与最大似然(ML)估计相结合的算法,该算法可用于跟踪繁杂杂乱且可能非信息性扫描中的缓慢机动目标。以批处理模式运行的自适应滑动窗口EM-ML方法尝试使用EM算法的M步中的Q函数拒绝非信息性扫描或降低其加权。跟踪验证技术用于确认EM-ML估计的有效性。示出了例如振幅信息形式的目标特征也可以用于改善估计。此外,还介绍了基于补充EM(SEM)技术的性能范围。新算法的有效性首先在78帧长波红外(LWIR)数据序列上得到了证明,该数据序列由F1 Mirage战斗机在杂乱中组成。以前,此方案已用作评估其他轨道初始化算法性能的基准。新的EM-ML估算器通过第20帧确认轨迹,而ML-PDA(最大概率估算器与概率数据关联)算法,IMM-MHT(交互多模型估算器与多重假设跟踪组合)和IMM-PDA估算器之前分别需要28、38和39帧。还在模拟场景中说明了新算法在准确性,早期检测和计算负荷方面的优势。

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