Deep neural networks (DNNs) have shown promising results for acoustic echo cancellation (AEC). But the DNN-based AEC models let through all near-end speakers including the interfering speech. In light of recent studies on personalized speech enhancement, we investigate the feasibility of personalized acoustic echo cancellation (PAEC) in this paper for full-duplex communications, where background noise and interfering speakers may coexist with acoustic echoes. Specifically, we first propose a novel backbone neural network termed as gated temporal convolutional neural network (GTCNN) that outperforms state-of-the-art AEC models in performance. Speaker embeddings like d-vectors are further adopted as auxiliary information to guide the GTCNN to focus on the target speaker. A special case in PAEC is that speech snippets of both parties on the call are enrolled. Experimental results show that auxiliary information from either the near-end speaker or the far-end speaker can improve the DNN-based AEC performance. Nevertheless, there is still much room for improvement in the utilization of the finite-dimensional speaker embeddings.
翻译:深神经网络(DNN)在声波回声取消(AEC)方面已经显示出令人乐观的结果。但基于DNN的AEC模型通过所有近端演讲者,包括干扰性演讲者,都通过DNN的AEC模型获得。根据最近关于个人化演讲增强能力的研究,我们调查了本文中关于完全两面性通信的个性化声取消(PAEC)的可行性,其中背景噪音和干扰性演讲者可能与声音回声共存。具体地说,我们首先提议建立一个新型的骨干神经网络,称为门性时钟神经网络(GTCNN),该网络在性能方面优于最先进的AEC模型。诸如d-vectors的演讲者被进一步作为辅助信息被采纳,指导GTCNN(GTCNN)专注于目标演讲者。在PAEC的一个特殊案例是,双方的演讲片段被加入。实验结果显示,来自近端演讲者或远端演讲者提供的辅助信息可以改善DNNE的AEC性表演。然而,在使用有限层发言人嵌入式演讲者方面仍有很大的改进余地。