NormalFlow: Fast, Robust, and Accurate Contact-based Object 6DoF Pose Tracking with Vision-based Tactile Sensors
Journal:
arXiv
Published Date:
Dec 12, 2024
Abstract
Tactile sensing is crucial for robots aiming to achieve human-level
dexterity. Among tactile-dependent skills, tactile-based object tracking serves
as the cornerstone for many tasks, including manipulation, in-hand
manipulation, and 3D reconstruction. In this work, we introduce NormalFlow, a
fast, robust, and real-time tactile-based 6DoF tracking algorithm. Leveraging
the precise surface normal estimation of vision-based tactile sensors,
NormalFlow determines object movements by minimizing discrepancies between the
tactile-derived surface normals. Our results show that NormalFlow consistently
outperforms competitive baselines and can track low-texture objects like table
surfaces. For long-horizon tracking, we demonstrate when rolling the sensor
around a bead for 360 degrees, NormalFlow maintains a rotational tracking error
of 2.5 degrees. Additionally, we present state-of-the-art tactile-based 3D
reconstruction results, showcasing the high accuracy of NormalFlow. We believe
NormalFlow unlocks new possibilities for high-precision perception and
manipulation tasks that involve interacting with objects using hands. The video
demo, code, and dataset are available on our website:
https://joehjhuang.github.io/normalflow.