In-Hand Object Pose Estimation via Visual-Tactile Fusion
Journal:
arXiv
Published Date:
Jun 12, 2025
Abstract
Accurate in-hand pose estimation is crucial for robotic object manipulation,
but visual occlusion remains a major challenge for vision-based approaches.
This paper presents an approach to robotic in-hand object pose estimation,
combining visual and tactile information to accurately determine the position
and orientation of objects grasped by a robotic hand. We address the challenge
of visual occlusion by fusing visual information from a wrist-mounted RGB-D
camera with tactile information from vision-based tactile sensors mounted on
the fingertips of a robotic gripper. Our approach employs a weighting and
sensor fusion module to combine point clouds from heterogeneous sensor types
and control each modality's contribution to the pose estimation process. We use
an augmented Iterative Closest Point (ICP) algorithm adapted for weighted point
clouds to estimate the 6D object pose. Our experiments show that incorporating
tactile information significantly improves pose estimation accuracy,
particularly when occlusion is high. Our method achieves an average pose
estimation error of 7.5 mm and 16.7 degrees, outperforming vision-only
baselines by up to 20%. We also demonstrate the ability of our method to
perform precise object manipulation in a real-world insertion task.