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ViTacFormer: Learning Cross-Modal Representation for Visuo-Tactile Dexterous Manipulation

About

Dexterous manipulation is a cornerstone capability for robotic systems aiming to interact with the physical world in a human-like manner. Although vision-based methods have advanced rapidly, tactile sensing remains crucial for fine-grained control, particularly in unstructured or visually occluded settings. We present ViTacFormer, a representation-learning approach that couples a cross-attention encoder to fuse high-resolution vision and touch with an autoregressive tactile prediction head that anticipates future contact signals. Building on this architecture, we devise an easy-to-challenging curriculum that steadily refines the visual-tactile latent space, boosting both accuracy and robustness. The learned cross-modal representation drives imitation learning for multi-fingered hands, enabling precise and adaptive manipulation. Across a suite of challenging real-world benchmarks, our method achieves approximately 50% higher success rates than prior state-of-the-art systems. To our knowledge, it is also the first to autonomously complete long-horizon dexterous manipulation tasks that demand highly precise control with an anthropomorphic hand, successfully executing up to 11 sequential stages and sustaining continuous operation for 2.5 minutes.

Liang Heng, Haoran Geng, Kaifeng Zhang, Pieter Abbeel, Jitendra Malik• 2025

Related benchmarks

TaskDatasetResultRank
Dexterous ManipulationCap Twist
Success Rate100
9
Contact-rich manipulationWipe Vase
Overall Success Rate9
8
Dexterous ManipulationPeg Insertion
Success Rate10
5
Dexterous ManipulationBook Flip
Success Rate90
5
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