Abstract
With the increment of the number of Gaussian components, the computation cost increases in the Gaussian mixture probability hypothesis density (GM-PHD) filter. Based on the theory of Chen et al, we propose an improved pruning algorithm for the GM-PHD filter, which utilizes not only the Gaussian components' means and covariance, but their weights as a new criterion to improve the estimate accuracy of the conventional pruning algorithm for tracking very closely proximity targets. Moreover, it solves the end-less while-loop problem without the need of a second merging step. Simulation results show that this improved algorithm is easier to implement and more robust than the formal ones.
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CITATION STYLE
Yongfang, N., & Tao, Z. (2018). Improved pruning algorithm for Gaussian mixture probability hypothesis density filter. Journal of Systems Engineering and Electronics, 29(2), 229–235. https://doi.org/10.21629/JSEE.2018.02.02
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