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Published September 21, 2025 | Version v1
Conference paper Open

LiLAC: A Lightweight Latent ControlNet for Musical Audio Generation

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Description

Text-to-audio diffusion models produce high-quality and diverse music but lack fine-grained, time-varying controls, which are essential for music production. ControlNet enables attaching external controls to a pre-trained generative model by cloning and fine-tuning its encoder on new conditionings. However, this approach incurs a large memory footprint and restricts users to a fixed set of controls. We propose a lightweight, modular architecture that considerably reduces parameter count while matching ControlNet in audio quality and condition adherence. Our method offers greater flexibility and significantly lower memory usage, enabling more efficient training and deployment of independent controls. We conduct extensive objective and subjective evaluations and provide numerous audio examples on the accompanying website.

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