P3-04: Mono-to-Stereo Through Parametric Stereo Generation
Joan Serra (Dolby Laboratories)*, Davide Scaini (Dolby Laboratories), Santiago Pascual (Dolby Laboratories), Daniel Arteaga (Dolby Laboratories), Jordi Pons (Dolby Laboratories), Jeroen Breebaart (Dolby Laboratories), Giulio Cengarle (Dolby Laboratories)
Subjects (starting with primary): MIR tasks -> music synthesis and transformation ; MIR fundamentals and methodology -> music signal processing ; MIR and machine learning for musical acoustics -> applications of machine learning to musical acoustics ; MIR tasks -> music generation
Presented In Person: 4-minute short-format presentation
Generating a stereophonic presentation from a monophonic audio signal is a challenging open task, especially if the goal is to obtain a realistic spatial imaging with a specific panning of sound elements. In this work, we propose to convert mono to stereo by means of predicting parametric stereo (PS) parameters using both nearest neighbor and deep network approaches. In combination with PS, we also propose to model the task with generative approaches, allowing to synthesize multiple and equally-plausible stereo renditions from the same mono signal. To achieve this, we consider both autoregressive and masked token modelling approaches. We provide evidence that the proposed PS-based models outperform a competitive classical decorrelation baseline and that, within a PS prediction framework, modern generative models outshine equivalent non-generative counterparts. Overall, our work positions both PS and generative modelling as strong and appealing methodologies for mono-to-stereo upmixing. A discussion of the limitations of these approaches is also provided.
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