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📄 Abstract
Abstract: Robust object pose estimation is essential for manipulation and interaction
tasks in robotics, particularly in scenarios where visual data is limited or
sensitive to lighting, occlusions, and appearances. Tactile sensors often offer
limited and local contact information, making it challenging to reconstruct the
pose from partial data. Our approach uses sensorimotor exploration to actively
control a robot hand to interact with the object. We train with Reinforcement
Learning (RL) to explore and collect tactile data. The collected 3D point
clouds are used to iteratively refine the object's shape and pose. In our
setup, one hand holds the object steady while the other performs active
exploration. We show that our method can actively explore an object's surface
to identify critical pose features without prior knowledge of the object's
geometry. Supplementary material and more demonstrations will be provided at
https://amirshahid.github.io/BimanualTactilePose .