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A low-complexity multi-target tracking algorithm in urban environments using sparse modeling

机译:稀疏建模的城市环境下低复杂度多目标跟踪算法

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摘要

We propose a novel sparsity-based algorithm for multiple-target tracking in a time-varying multipath environment. We develop a sparse measurement model for the received signal, by considering a finite dimensional representation of the time-varying system function which characterizes the transmission channel. The measurement model allows us to exploit the joint delay-Doppler diversity offered by the environment. We reformulate the problem of multiple-target tracking as a block support recovery problem and we derive an upper bound on the overall error probability of wrongly identifying the support of the sparse signal. Using this bound, we prove that spread-spectrum waveforms are ideal candidates for signaling. We also prove that under spread-spectrum signaling, the dictionary of the sparse measurement model exhibits a special structure. We exploit this structure to develop a computationally inexpensive support recovery algorithm by projecting the received signal on to the row space of the dictionary. Numerical simulations show that tracking using proposed algorithm for support recovery performs better when compared to tracking using other sparse reconstruction algorithms and tracking using a particle filter. The proposed algorithm takes significantly less time when compared to the time taken by other methods.
机译:我们提出了一种新颖的基于稀疏性的算法,用于时变多径环境中的多目标跟踪。通过考虑表征传输通道的时变系统函数的有限维表示,我们为接收信号开发了一个稀疏的测量模型。测量模型使我们能够利用环境提供的联合延迟多普勒分集。我们将多目标跟踪问题重新定义为块支持恢复问题,并得出错误地识别稀疏信号支持的总体错误概率的上限。使用该界限,我们证明扩频波形是信令的理想候选者。我们还证明,在扩频信号下,稀疏测量模型的字典表现出特殊的结构。通过将接收到的信号投影到字典的行空间上,我们利用此结构来开发一种计算上不昂贵的支持恢复算法。数值模拟表明,与使用其他稀疏重建算法的跟踪和使用粒子滤波器的跟踪相比,使用建议的算法进行支持恢复的跟踪性能更好。与其他方法所花费的时间相比,所提出的算法花费的时间明显更少。

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