CLaD: Planning with Grounded Foresight via Cross-Modal Latent Dynamics
About
Robotic manipulation involves kinematic and semantic transitions that are inherently coupled via underlying actions. However, existing approaches plan within either semantic or latent space without explicitly aligning these cross-modal transitions. To address this, we propose CLaD, a framework that models how proprioceptive and semantic states jointly evolve under actions through asymmetric cross-attention that allows kinematic transitions to query semantic ones. CLaD predicts grounded latent foresights via self-supervised objectives with EMA target encoders and auxiliary reconstruction losses, preventing representation collapse while anchoring predictions to observable states. Predicted foresights are modulated with observations to condition a diffusion policy for action generation. On LIBERO-LONG benchmark, CLaD achieves 94.7\% success rate, competitive with large VLAs with significantly fewer parameters.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Robot Manipulation | LIBERO Object | -- | 70 | |
| Robotic Manipulation | LIBERO Long | -- | 44 | |
| Robotic Manipulation | LIBERO Goal | -- | 21 | |
| Robotic Manipulation | LIBERO Spatial | Average Success Rate97.3 | 17 | |
| Robot Manipulation | LIBERO Long | Inference Frequency (Hz)25 | 3 |