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Nonlinear acoustic echo cancellation based on a parallel-cascade kernel affine projection algorithm

机译:基于并行级联核仿射投影算法的非线性声学回声消除

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In acoustic echo cancellation (AEC) applications, oftentimes an acoustic path from a loudspeaker to a microphone is estimated by means of a linear adaptive filter. However, loudspeakers introduce nonlinear distortions which may strongly degrade the adaptive filter performance, thus nonlinear filters have to be considered. This paper proposes two adaptive algorithms namely the parallel and cascade sliding-window kernel based affine projection algorithm (PSW-KAPA and CSW-KAPA) to solve the problem of nonlinear AEC (NLAEC) while keeping the computational complexity low. They are based on a leaky KAPA which employs the theory and algorithms of kernel methods. The basic concept is to perform adaptive filtering in a linear space that is nonlinearly related to the original input space. A kernel specifically designed for acoustic applications is proposed, which consists in a weighted sum of the linear and the Gaussian kernels. The motivation is basically to separate the problem into linear and nonlinear subproblems. The weights in the kernel also impose different forgetting mechanisms in the sliding window which in turn translates to a more flexible regularization. Simulation results show that PSW-KAPA and CSW-KAPA consistently outperform the linear NLMS, and generalize well both in high and low linear to nonlinear ratio (LNLR).
机译:在声学回声消除(AEC)应用中,通常会通过线性自适应滤波器来估计从扬声器到麦克风的声学路径。但是,扬声器会引入非线性失真,这可能会严重降低自适应滤波器的性能,因此必须考虑非线性滤波器。提出了两种自适应算法,即基于并行和级联滑窗核的仿射投影算法(PSW-KAPA和CSW-KAPA),以解决非线性AEC(NLAEC)问题,同时保持较低的计算复杂度。它们基于泄漏的KAPA,该KAPA采用了内核方法​​的理论和算法。基本概念是在与原始输入空间非线性相关的线性空间中执行自适应滤波。提出了专门为声学应用设计的内核,该内核包含线性和高斯内核的加权和。动机基本上是将问题分为线性和非线性子问题。内核中的权重还在滑动窗口中施加了不同的遗忘机制,进而转化为更灵活的正则化。仿真结果表明,PSW-KAPA和CSW-KAPA始终优于线性NLMS,并且在高和低线性与非线性比(LNLR)方面均能很好地推广。

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