A tactile system recovers 6-DoF object pose from one contact pair by coarse-to-fine localization of point clouds on a known model followed by normal-aware SVD.
InvariantCloud: A Globally Invariant, Uniquely Indexed Point Cloud Framework for Robust 6-DoF Tactile Pose Tracking
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abstract
Recent advances in imitation learning and vision-language models highlight the need for high-fidelity tactile perception, with 6-DoF tactile object pose estimation providing a crucial foundation for precise robotic manipulation. We introduce InvariantCloud, a 6-DoF pose estimation framework that leverages the global invariance of surface marker constellations on vision-based tactile sensors. In contrast to recent approaches, our one-shot globally invariant point cloud registration suppresses cumulative drift and overcomes long-standing limitations in accurately estimating yaw (Z-axis) rotation. Experimental verifications show that InvariantCloud achieves superior yaw tracking accuracy and re-localization repeatability compared to existing benchmarks, demonstrating its precision and robustness in long-sequence manipulation tasks.
fields
cs.RO 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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You Only Touch Once: 6-DoF Object Pose Estimation from Single Tactile Contact
A tactile system recovers 6-DoF object pose from one contact pair by coarse-to-fine localization of point clouds on a known model followed by normal-aware SVD.