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Adapting Matching Pursuit Dictionaries to Waveform Structure Using Particle Filtering

机译:使用粒子滤波调整匹配追求词典到波形结构

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Although the matching pursuit algorithm can accurately decompose waveforms, its use in real applications is limited. This is because it can be computationally intensive as it is based on selecting elements from complete dictionaries spanning the time-frequency plane of interest. There is, therefore, a need for smaller dictionaries that can still result in accurate waveform decompositions. In this paper, we propose the particle filter matching pursuit algorithm that adapts the dictionary to the waveform structure. This algorithm uses particle filtering, a sequential Monte Carlo approach, to estimate the dictionary suitable for the decomposition of a given waveform, and then uses the matching pursuit algorithm to decompose the waveform. We demonstrate, using simulations, that the particle filtering matching pursuit can decompose waveforms faster than the matching pursuit.
机译:虽然匹配追踪算法可以准确地分解波形,但其在实际应用中的使用是有限的。这是因为它可以是基于来自跨越感兴趣的时频平面的完整词典的选择元素的计算密集。因此,需要仍然可以导致精确的波形分解的较小词典。在本文中,我们提出了粒子滤波器匹配追踪算法,将字典呈现给波形结构。该算法使用粒子滤波,顺序蒙特卡罗方法,估计适用于给定波形分解的字典,然后使用匹配的追踪算法来分解波形。我们使用模拟证明粒子过滤匹配追踪可以比匹配追求更快地分解波形。

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