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Ovi: Twin Backbone Cross-Modal Fusion for Audio-Video Generation

Canonical reference. 89% of citing Pith papers cite this work as background.

22 Pith papers citing it
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abstract

Audio-video generation has often relied on complex multi-stage architectures or sequential synthesis of sound and visuals. We introduce Ovi, a unified paradigm for audio-video generation that models the two modalities as a single generative process. By using blockwise cross-modal fusion of twin-DiT modules, Ovi achieves natural synchronization and removes the need for separate pipelines or post hoc alignment. To facilitate fine-grained multimodal fusion modeling, we initialize an audio tower with an architecture identical to that of a strong pretrained video model. Trained from scratch on hundreds of thousands of hours of raw audio, the audio tower learns to generate realistic sound effects, as well as speech that conveys rich speaker identity and emotion. Fusion is obtained by jointly training the identical video and audio towers via blockwise exchange of timing (via scaled-RoPE embeddings) and semantics (through bidirectional cross-attention) on a vast video corpus. Our model enables cinematic storytelling with natural speech and accurate, context-matched sound effects, producing movie-grade video clips. All the demos, code and model weights are published at https://aaxwaz.github.io/Ovi

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representative citing papers

Native Audio-Visual Alignment for Generation

cs.CV · 2026-05-28 · unverdicted · novelty 7.0

NAVA proposes native audio-visual alignment via Align-then-Fuse MMDiT and Timbre-in-Context Conditioning for joint audio-video generation with improved synchronization and timbre control.

InstructAV2AV: Instruction-Guided Audio-Video Joint Editing

cs.CV · 2026-05-18 · unverdicted · novelty 7.0

InstructAV2AV is an end-to-end instruction-guided audio-video joint editing model that adapts a pre-trained backbone with gated attention and two-stage training, outperforming prior methods on 11 metrics after building the InsAVE-80K dataset.

TMD-Bench: A Multi-Level Evaluation Paradigm for Music-Dance Co-Generation

cs.SD · 2026-05-03 · unverdicted · novelty 7.0

TMD-Bench is a multi-level benchmark that measures music-dance co-generation quality including beat-level rhythmic synchronization, supported by a new dataset and Music Captioner, and shows commercial models lag in rhythm while a new baseline performs competitively.

EMOSH: Expressive Motion and Shape Disentanglement for Human Animation

cs.CV · 2026-06-26 · unverdicted · novelty 6.0

EMOSH proposes an Expressive Human Model with disentangled parameters, coarse-to-fine motion injection, and spatially-aligned conditioning to generate high-fidelity expressive human videos without driving-subject shape leakage.

LTX-2: Efficient Joint Audio-Visual Foundation Model

cs.CV · 2026-01-06 · conditional · novelty 5.0

LTX-2 generates high-quality synchronized audiovisual content from text prompts via an asymmetric 14B-video / 5B-audio dual-stream transformer with cross-attention and modality-aware guidance.

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