English

LPM 1.0: Video-based Character Performance Model

Computer Vision and Pattern Recognition 2026-04-16 v2 Artificial Intelligence Multimedia

Abstract

Performance, the externalization of intent, emotion, and personality through visual, vocal, and temporal behavior, is what makes a character alive. Learning such performance from video is a promising alternative to traditional 3D pipelines. However, existing video models struggle to jointly achieve high expressiveness, real-time inference, and long-horizon identity stability, a tension we call the performance trilemma. Conversation is the most comprehensive performance scenario, as characters simultaneously speak, listen, react, and emote while maintaining identity over time. To address this, we present LPM 1.0 (Large Performance Model), focusing on single-person full-duplex audio-visual conversational performance. Concretely, we build a multimodal human-centric dataset through strict filtering, speaking-listening audio-video pairing, performance understanding, and identity-aware multi-reference extraction; train a 17B-parameter Diffusion Transformer (Base LPM) for highly controllable, identity-consistent performance through multimodal conditioning; and distill it into a causal streaming generator (Online LPM) for low-latency, infinite-length interaction. At inference, given a character image with identity-aware references, LPM 1.0 generates listening videos from user audio and speaking videos from synthesized audio, with text prompts for motion control, all at real-time speed with identity-stable, infinite-length generation. LPM 1.0 thus serves as a visual engine for conversational agents, live streaming characters, and game NPCs. To systematically evaluate this setting, we propose LPM-Bench, the first benchmark for interactive character performance. LPM 1.0 achieves state-of-the-art results across all evaluated dimensions while maintaining real-time inference.

Keywords

Cite

@article{arxiv.2604.07823,
  title  = {LPM 1.0: Video-based Character Performance Model},
  author = {Ailing Zeng and Casper Yang and Chauncey Ge and Eddie Zhang and Garvey Xu and Gavin Lin and Gilbert Gu and Jeremy Pi and Leo Li and Mingyi Shi and Shawn Wang and Sheng Bi and Steven Tang and Thorn Hang and Tobey Guo and Vincent Li and Xin Tong and Yikang Li and Yuchen Sun and Yue Zhao and Yuhan Lu and Yuwei Li and Zane Zhang and Zeshi Yang and Zi Ye},
  journal= {arXiv preprint arXiv:2604.07823},
  year   = {2026}
}

Comments

43 pages, 15 figures, 2 tables. Project page: https://large-performance-model.github.io

R2 v1 2026-07-01T12:00:34.775Z