ASSDSPMay 15

A Survey of Advancing Audio Super-Resolution and Bandwidth Extension from Discriminative to Generative Models

arXiv:2605.1668170.5
Predicted impact top 33% in AS · last 90 daysOriginality Synthesis-oriented
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For researchers in audio processing, this survey offers a comprehensive, structured overview of the field's evolution and open challenges.

This survey reviews audio super-resolution/bandwidth extension, covering the shift from discriminative DNNs to generative models (AR, VAE, GAN, diffusion, flow, Schrödinger bridges) and emerging LLM-based approaches, providing a structured taxonomy and roadmap.

Audio super-resolution (SR), also referred to as bandwidth extension (BWE), aims to reconstruct high-fidelity signals from low-resolution (LR) or band-limited (BL) observations, an inherently ill-posed task due to the ambiguity of missing high-frequency (HF) content. This survey provides a comprehensive overview of the field, with a particular focus on the paradigm shift from discriminative mapping to modern generative modeling. We first review early discriminative deep neural network (DNN) models, which formulate BWE/SR as a deterministic mapping problem and are prone to regression-to-the-mean effects and spectral over-smoothing. We then systematically review generative approaches, including autoregressive (AR) models, variational autoencoders (VAEs), generative adversarial networks (GANs), diffusion and score-based models, flow-based methods, and Schrödinger bridges. Across these approaches, we examine key design aspects, including representation domain, architecture, conditioning mechanisms, and trade-offs among reconstruction fidelity, perceptual quality, robustness, and computational efficiency. Furthermore, we discuss emerging directions involving large language models (LLMs) and multimodal foundation models, and highlight open challenges in perceptual evaluation, phase modeling, and real-world generalization. By providing a structured taxonomy and unified perspective, this survey establishes a comprehensive foundation and offers a practical roadmap for advancing BWE/SR from deterministic point estimation toward distribution-aware generative modeling.

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