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Avoiding local trap in nonlinear acoustic echo cancellation with clipping compensation

机译:避免剪切补偿中非线性声学回声消除本地陷阱

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For the nonlinear acoustic echo cancellation, we present an adaptive learning of the saturation effect of the amplifier and the room propagation in terms of the hard-clipping and the FIR system. The conventional learning algorithms are based on a gradient descent method, i.e., rely on local information, which results in a major drawback that the estimation of the hard-clipping is trapped in local minima. In this paper, we solve this drawback by exploiting global information embodied as a set including the desired hard-clipping with high-probability. The proposed adaptive learning of the hard-clipping is designed to track the sets with a projection-based algorithm. In the adaptive learning of the FIR system, we propose the use of the Huber loss function for the robustness against the error in the estimation of the hard-clipping. Numerical examples show that the proposed algorithm is never trapped in the local minima and has an excellent steady-state behavior.
机译:对于非线性声学回波消除,我们在硬夹和冷杉系统方面呈现了放大器和房间传播的饱和效应的自适应学习。传统的学习算法基于梯度下降方法,即,依赖于局部信息,这导致了在局部最小值中捕获硬夹的估计的主要缺点。在本文中,我们通过利用体现为一个集合的全局信息来解决该缺点,包括具有高概率的所需的硬剪裁。拟议的硬剪切自适应学习被设计为以基于投影的算法跟踪集合。在FIR系统的自适应学习中,我们提出了使用Huber损耗功能,以防止估计硬剪切的错误。数值示例表明,所提出的算法从未陷入局部最小值并且具有出色的稳态行为。

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