MVP-LAM: Learning Action-Centric Latent Action via Cross-Viewpoint Reconstruction

  • Jung Min Lee ,
  • Dohyeok Lee ,
  • Seokhun Ju ,
  • Taehyun Cho ,
  • Jin Woo Koo ,
  • ,
  • Sangwoo Hong ,
  • Jungwoo Lee

ICML 2026 |

Latent actions learned from diverse human videos serve as pseudo-labels for vision-language-action (VLA) pretraining, but provide effective supervision only if they remain informative about the underlying ground-truth actions. For effective supervision, latent actions should contain information about the underlying actions even though they are inaccessible. We propose Multi-ViewPoint Latent Action Moel (MVP-LAM), which learns latent actions that are highly informative about ground-truth actions from multi-view videos. MVP-LAM trains latent actions with a cross-viewpoint reconstruction objective, so that a latent action from one view must explain the future in another view, reducing reliance on viewpoint-specific cues. On Bridge V2, MVP-LAM produces more action-centric latent actions, achieving higher mutual information with ground-truth actions and improved action prediction, including under out-of-distribution evaluation. Finally, pretraining VLAs with MVP-LAM latent actions improves downstream manipulation performance on various benchmarks.

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