CVMMSDMar 25

AVControl: Efficient Framework for Training Audio-Visual Controls

arXiv:2603.2479398.33 citationsh-index: 9
Predicted impact top 3% in CV · last 90 daysOriginality Highly original
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This addresses the need for modular and efficient control in audio-visual generation for researchers and practitioners, offering a significant improvement over monolithic or costly methods.

The paper tackles the problem of efficiently training diverse audio-visual controls for video and audio generation by introducing AVControl, a lightweight framework that uses separate LoRA adapters for each modality, achieving state-of-the-art results on depth- and pose-guided generation tasks and competitive performance on camera and audio-visual benchmarks.

Controlling video and audio generation requires diverse modalities, from depth and pose to camera trajectories and audio transformations, yet existing approaches either train a single monolithic model for a fixed set of controls or introduce costly architectural changes for each new modality. We introduce AVControl, a lightweight, extendable framework built on LTX-2, a joint audio-visual foundation model, where each control modality is trained as a separate LoRA on a parallel canvas that provides the reference signal as additional tokens in the attention layers, requiring no architectural changes beyond the LoRA adapters themselves. We show that simply extending image-based in-context methods to video fails for structural control, and that our parallel canvas approach resolves this. On the VACE Benchmark, we outperform all evaluated baselines on depth- and pose-guided generation, inpainting, and outpainting, and show competitive results on camera control and audio-visual benchmarks. Our framework supports a diverse set of independently trained modalities: spatially-aligned controls such as depth, pose, and edges, camera trajectory with intrinsics, sparse motion control, video editing, and, to our knowledge, the first modular audio-visual controls for a joint generation model. Our method is both compute- and data-efficient: each modality requires only a small dataset and converges within a few hundred to a few thousand training steps, a fraction of the budget of monolithic alternatives. We publicly release our code and trained LoRA checkpoints.

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