SoundSpring: Loss-Resilient Audio Transceiver With Dual-Functional Masked Language Modeling

Shengshi Yao;Jincheng Dai;Xiaoqi Qin;Sixian Wang;Siye Wang;Kai Niu;Ping Zhang
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Abstract

In this paper, we propose “SoundSpring”, a cutting-edge error-resilient audio transceiver that marries the robustness benefits of joint source-channel coding (JSCC) while also being compatible with current digital communication systems. Unlike recent deep JSCC transceivers, which learn to directly map audio signals to analog channel-input symbols via neural networks, our SoundSpring adopts the layered architecture that delineates audio compression from digital coded transmission, but it sufficiently exploits the impressive in-context predictive capabilities of large language (foundation) models. Integrated with the casual-order mask learning strategy, our single model operates on the latent feature domain and serve dual-functionalities: as efficient audio compressors at the transmitter and as effective mechanisms for packet loss concealment at the receiver. By jointly optimizing towards both audio compression efficiency and transmission error resiliency, we show that mask-learned language models are indeed powerful contextual predictors, and our dual-functional compression and concealment framework offers fresh perspectives on the application of foundation language models in audio communication. Through extensive experimental evaluations, we establish that SoundSpring apparently outperforms contemporary audio transmission systems in terms of signal fidelity metrics and perceptual quality scores. These new findings not only advocate for the practical deployment of SoundSpring in learning-based audio communication systems but also inspire the development of future audio semantic transceivers.
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具有双功能屏蔽语言建模的损失弹性音频收发器
在本文中,我们提出了“SoundSpring”,这是一种先进的抗错误音频收发器,它结合了联合源信道编码(JSCC)的鲁棒性优势,同时也与当前的数字通信系统兼容。最近的深度JSCC收发器通过神经网络学习直接将音频信号映射到模拟通道输入符号,而我们的SoundSpring采用了分层架构,从数字编码传输中描绘音频压缩,但它充分利用了大型语言(基础)模型令人印象深刻的上下文预测能力。与随机顺序掩码学习策略相结合,我们的单一模型在潜在特征域上运行,并具有双重功能:在发送端作为有效的音频压缩器,在接收端作为有效的数据包丢失隐藏机制。通过对音频压缩效率和传输错误弹性的共同优化,我们表明掩码学习语言模型确实是强大的上下文预测器,我们的双功能压缩和隐藏框架为基础语言模型在音频通信中的应用提供了新的视角。通过广泛的实验评估,我们确定SoundSpring在信号保真度指标和感知质量分数方面明显优于当代音频传输系统。这些新发现不仅倡导了SoundSpring在基于学习的音频通信系统中的实际部署,而且还启发了未来音频语义收发器的发展。
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