This paper presents a robust multi-channel speaker extraction algorithm designed to handle inaccuracies in reference information. While existing approaches often rely solely on either spatial or spectral cues to identify the target speaker, our method integrates both sources of information to enhance robustness. A key aspect of our approach is its emphasis on stability, ensuring reliable performance even when one of the features is degraded or misleading. Given a noisy mixture and two potentially unreliable cues, a dedicated network is trained to dynamically balance their contributions-or disregard the less informative one when necessary. We evaluate the system under challenging conditions by simulating inference-time errors using a simple direction of arrival (DOA) estimator and a noisy spectral enrollment process. Experimental results demonstrate that the proposed model successfully extracts the desired speaker even in the presence of substantial reference inaccuracies.
翻译:本文提出一种鲁棒的多通道说话人提取算法,旨在处理参考信息不准确的情况。现有方法通常仅依赖空间或频谱线索来识别目标说话人,而我们的方法整合了这两种信息源以增强鲁棒性。本方法的一个关键特点是强调稳定性,即使当某一特征退化或具有误导性时仍能保持可靠性能。给定含噪混合信号和两个可能不可靠的线索,我们训练专用网络动态平衡二者的贡献——或在必要时忽略信息量较少的一方。我们通过使用简易波达方向估计器和含噪频谱注册过程模拟推理时误差,在挑战性条件下评估系统性能。实验结果表明,即使在参考信息存在显著误差的情况下,所提模型仍能成功提取目标说话人。