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Fast Dictionary Learning for Sparse Representations of Speech Signals

机译:语音信号稀疏表示的快速字典学习

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For dictionary-based decompositions of certain types, it has been observed that there might be a link between sparsity in the dictionary and sparsity in the decomposition. Sparsity in the dictionary has also been associated with the derivation of fast and efficient dictionary learning algorithms. Therefore, in this paper we present a greedy adaptive dictionary learning algorithm that sets out to find sparse atoms for speech signals. The algorithm learns the dictionary atoms on data frames taken from a speech signal. It iteratively extracts the data frame with minimum sparsity index, and adds this to the dictionary matrix. The contribution of this atom to the data frames is then removed, and the process is repeated. The algorithm is found to yield a sparse signal decomposition, supporting the hypothesis of a link between sparsity in the decomposition and dictionary. The algorithm is applied to the problem of speech representation and speech denoising, and its performance is compared to other existing methods. The method is shown to find dictionary atoms that are sparser than their time-domain waveform, and also to result in a sparser speech representation. In the presence of noise, the algorithm is found to have similar performance to the well established principal component analysis.
机译:对于某些类型的基于字典的分解,已经观察到字典中的稀疏性与分解中的稀疏性之间可能存在联系。字典中的稀疏性也与快速有效的字典学习算法的派生有关。因此,在本文中,我们提出了一种贪婪的自适应字典学习算法,该算法着手寻找语音信号的稀疏原子。该算法从语音信号中获取数据帧上的字典原子。迭代地提取具有最小稀疏性索引的数据帧,并将其添加到字典矩阵。然后,删除该原子对数据帧的贡献,并重复该过程。发现该算法产生了稀疏信号分解,支持了分解中稀疏性和字典之间联系的假设。该算法适用于语音表示和语音去噪问题,并将其性能与其他现有方法进行了比较。示出了该方法以查找比其时域波形稀疏的字典原子,并且还导致稀疏语音表示。在存在噪声的情况下,发现该算法与完善的主成分分析具有相似的性能。

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