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arxiv: 1807.03612 · v2 · pith:XLENG2DHnew · submitted 2018-07-10 · 📡 eess.AS · eess.SP

Revisiting Synthesis Model of Sparse Audio Declipper

classification 📡 eess.AS eess.SP
keywords audios-spadesparsea-spadealgorithmsbeendeclipperiterations
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The state of the art in audio declipping has currently been achieved by SPADE (SParse Audio DEclipper) algorithm by Kiti\'c et al. Until now, the synthesis/sparse variant, S-SPADE, has been considered significantly slower than its analysis/cosparse counterpart, A-SPADE. It turns out that the opposite is true: by exploiting a recent projection lemma, individual iterations of both algorithms can be made equally computationally expensive, while S-SPADE tends to require considerably fewer iterations to converge. In this paper, the two algorithms are compared across a range of parameters such as the window length, window overlap and redundancy of the transform. The experiments show that although S-SPADE typically converges faster, the average performance in terms of restoration quality is not superior to A-SPADE.

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