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Article Dans Une Revue Microprocessors and Microsystems: Embedded Hardware Design Année : 2018

Decomposition and analysis of signals sparse in the dual polynomial Fourier transform

Miloš Daković
Cornel Ioana

Résumé

The acoustic waves transmitted through a dispersive environments can be quite complex for decomposition and localization. A signal which is transmitted through a dispersive channel is usually non-stationary. Even if a simple signal is transmitted, it can change its characteristics (phase and frequency) during the transmission through an underwater acoustic dispersive communication channel. Commonly, several components with different paths are received. In this paper, we present a method for decomposition of multicomponent acoustic signals using the dual polynomial Fourier transform and time-frequency methods. In real-world signals, some disturbances are introduced during the transmission. Common form of disturbances are the sinusoidal signals, making some of the frequency domain signal samples unreliable. Since the signal components can be considered as sparse in the dual polynomial Fourier transform domain, these samples can be omitted and reconstructed using the compressive sensing methods. The acoustic signal decomposition and its reconstruction from a reduced set of frequency domain samples is demonstrated on examples.
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Dates et versions

hal-01969992 , version 1 (04-01-2019)

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Isidora Stankovic, Miloš Daković, Cornel Ioana. Decomposition and analysis of signals sparse in the dual polynomial Fourier transform. Microprocessors and Microsystems: Embedded Hardware Design , 2018, 63, pp.209-215. ⟨10.1016/j.micpro.2018.09.005⟩. ⟨hal-01969992⟩
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