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Multivariate iterative hard thresholding for sparse decomposition with flexible sparsity patterns

机译:具有灵活稀疏模式的稀疏分解的多元迭代硬阈值

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We address the problem of decomposing several consecutive sparse signals, such as audio time frames or image patches. A typical approach is to process each signal sequentially and independently, with an arbitrary sparsity level fixed for each signal. Here, we propose to process several frames simultaneously, allowing for more flexible sparsity patterns to be considered. We propose a multivariate sparse coding approach, where sparsity is enforced on average across several frames. We propose a Multivariate Iterative Hard Thresholding to solve this problem. The usefulness of the proposed approach is demonstrated on audio coding and denoising tasks. Experiments show that the proposed approach leads to better results when the signal contains both transients and tonal components.
机译:我们解决了分解几个连续的稀疏信号(例如音频时间帧或图像补丁)的问题。一种典型的方法是依次为每个信号进行独立处理,并为每个信号固定一个任意的稀疏度。在这里,我们建议同时处理几个帧,以便考虑更灵活的稀疏模式。我们提出了一种多元稀疏编码方法,其中稀疏性在多个帧上平均执行。我们提出了一个多元迭代硬阈值来解决这个问题。在音频编码和去噪任务上证明了该方法的有效性。实验表明,当信号既包含瞬变又包含音调成分时,所提出的方法会产生更好的结果。

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