ROAISYSep 20, 2025

TranTac: Leveraging Transient Tactile Signals for Contact-Rich Robotic Manipulation

arXiv:2509.16550v1
Originality Incremental advance
AI Analysis

This addresses the challenge of precise, contact-rich manipulation for robots in scenarios like key or USB insertion, offering a data-efficient and low-cost solution that improves over vision-only and force/torque sensing methods, though it is incremental as it builds on existing tactile and control techniques.

The paper tackles the problem of robotic manipulation failing due to insufficient visual perception in fine insertion tasks by introducing TranTac, a tactile sensing and control framework that uses transient tactile signals to detect subtle pose changes, achieving success rates of 79% on grasping and insertion tasks when combined with vision and up to 88% in tactile-only tasks.

Robotic manipulation tasks such as inserting a key into a lock or plugging a USB device into a port can fail when visual perception is insufficient to detect misalignment. In these situations, touch sensing is crucial for the robot to monitor the task's states and make precise, timely adjustments. Current touch sensing solutions are either insensitive to detect subtle changes or demand excessive sensor data. Here, we introduce TranTac, a data-efficient and low-cost tactile sensing and control framework that integrates a single contact-sensitive 6-axis inertial measurement unit within the elastomeric tips of a robotic gripper for completing fine insertion tasks. Our customized sensing system can detect dynamic translational and torsional deformations at the micrometer scale, enabling the tracking of visually imperceptible pose changes of the grasped object. By leveraging transformer-based encoders and diffusion policy, TranTac can imitate human insertion behaviors using transient tactile cues detected at the gripper's tip during insertion processes. These cues enable the robot to dynamically control and correct the 6-DoF pose of the grasped object. When combined with vision, TranTac achieves an average success rate of 79% on object grasping and insertion tasks, outperforming both vision-only policy and the one augmented with end-effector 6D force/torque sensing. Contact localization performance is also validated through tactile-only misaligned insertion tasks, achieving an average success rate of 88%. We assess the generalizability by training TranTac on a single prism-slot pair and testing it on unseen data, including a USB plug and a metal key, and find that the insertion tasks can still be completed with an average success rate of nearly 70%. The proposed framework may inspire new robotic tactile sensing systems for delicate manipulation tasks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes