基于稀疏性约束的交替投影算法(ALPA)

A. Adiga, C. Seelamantula
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引用次数: 5

摘要

我们解决了将语音信号分离为其激励和声道滤波器组件的问题,该问题属于盲反卷积的框架。通常,在浊音情况下,假设激励是稀疏的,并且声道滤波器稳定。考虑到这些约束,我们开发了一个交替的p - 2投影算法(ALPA)来执行反卷积。该算法是迭代的,并在两个解空间之间交替。初始化是基于标准的线性预测,将语音信号分解成一个自回归滤波器和预测残差。在每次迭代中,通过优化基于p-范数的代价来估计稀疏激励,并推导出声道滤波器作为标准最小二乘最小化问题的解。我们在自然语音信号的浊音片段上验证了该算法,并展示了该算法在历元估计中的应用。我们还与最先进的技术进行了比较,并表明ALPA给出了更稀疏的脉冲样激励,其中脉冲直接表示显著激励的时代或瞬间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An alternating ℓp — ℓ2 projections algorithm (ALPA) for speech modeling using sparsity constraints
We address the problem of separating a speech signal into its excitation and vocal-tract filter components, which falls within the framework of blind deconvolution. Typically, the excitation in case of voiced speech is assumed to be sparse and the vocal-tract filter stable. We develop an alternating ℓp - ℓ2 projections algorithm (ALPA) to perform deconvolution taking into account these constraints. The algorithm is iterative, and alternates between two solution spaces. The initialization is based on the standard linear prediction decomposition of a speech signal into an autoregressive filter and prediction residue. In every iteration, a sparse excitation is estimated by optimizing an ℓp-norm-based cost and the vocal-tract filter is derived as a solution to a standard least-squares minimization problem. We validate the algorithm on voiced segments of natural speech signals and show applications to epoch estimation. We also present comparisons with state-of-the-art techniques and show that ALPA gives a sparser impulse-like excitation, where the impulses directly denote the epochs or instants of significant excitation.
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