A Deep Learning Approach for Low-Latency Packet Loss Concealment of Audio Signals in Networked Music Performance Applications

Prateek Verma, Alessandro Ilic Mezza, C. Chafe, C. Rottondi
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引用次数: 10

Abstract

Networked Music Performance (NMP) is envisioned as a potential game changer among Internet applications: it aims at revolutionizing the traditional concept of musical interaction by enabling remote musicians to interact and perform together through a telecommunication network. Ensuring realistic conditions for music performance, however, constitutes a significant engineering challenge due to extremely strict requirements in terms of audio quality and, most importantly, network delay. To minimize the end-to-end delay experienced by the musicians, typical implementations of NMP applications use uncompressed, bidirectional audio streams and leverage UDP as transport protocol. Being connectionless and unreliable, audio packets transmitted via UDP which become lost in transit are not retransmitted and thus cause glitches in the receiver audio playout. This article describes a technique for predicting lost packet content in real-time using a deep learning approach. The ability of concealing errors in real time can help mitigate audio impairments caused by packet losses, thus improving the quality of audio playout in realworld scenarios.
网络音乐表演应用中音频信号低延迟丢包隐藏的深度学习方法
网络音乐表演(NMP)被设想为互联网应用程序中的一个潜在的游戏规则改变者:它旨在通过使远程音乐家能够通过电信网络进行互动和表演,从而彻底改变传统的音乐互动概念。然而,由于音频质量和最重要的网络延迟方面的严格要求,确保音乐表演的现实条件构成了重大的工程挑战。为了尽量减少音乐家所经历的端到端延迟,NMP应用程序的典型实现使用未压缩的双向音频流,并利用UDP作为传输协议。由于无连接且不可靠,通过UDP传输的音频数据包在传输过程中丢失,因此不会重新传输,从而导致接收器音频播放中的故障。本文描述了一种使用深度学习方法实时预测丢失包内容的技术。实时隐藏错误的能力可以帮助减轻数据包丢失造成的音频损害,从而提高现实场景中音频播放的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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