SDLGMMFeb 10

Stemphonic: All-at-once Flexible Multi-stem Music Generation

arXiv:2602.09891v1h-index: 5Has Code
Originality Incremental advance
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This addresses the need for faster and more flexible music generation tools for musicians and producers, offering an incremental improvement over prior stem generation approaches.

The paper tackles the problem of generating multiple synchronized music stems (instrument audio clips) in one inference pass, overcoming the trade-off between flexibility and speed in existing methods, and shows that Stemphonic produces higher-quality outputs while accelerating full mix generation by 25 to 50%.

Music stem generation, the task of producing musically-synchronized and isolated instrument audio clips, offers the potential of greater user control and better alignment with musician workflows compared to conventional text-to-music models. Existing stem generation approaches, however, either rely on fixed architectures that output a predefined set of stems in parallel, or generate only one stem at a time, resulting in slow inference despite flexibility in stem combination. We propose Stemphonic, a diffusion-/flow-based framework that overcomes this trade-off and generates a variable set of synchronized stems in one inference pass. During training, we treat each stem as a batch element, group synchronized stems in a batch, and apply a shared noise latent to each group. At inference-time, we use a shared initial noise latent and stem-specific text inputs to generate synchronized multi-stem outputs in one pass. We further expand our approach to enable one-pass conditional multi-stem generation and stem-wise activity controls to empower users to iteratively generate and orchestrate the temporal layering of a mix. We benchmark our results on multiple open-source stem evaluation sets and show that Stemphonic produces higher-quality outputs while accelerating the full mix generation process by 25 to 50%. Demos at: https://stemphonic-demo.vercel.app.

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