GelSplitter: Tactile Reconstruction from Near Infrared and Visible Images
The GelSight-like visual tactile (VT) sensor has gained popularity as a high-resolution tactile sensing technology for robots, capable of measuring touch geometry using a single RGB camera. However, the development of multi-modal perception for VT sensors remains a challenge, limited by the mono cam...
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Zusammenfassung: | The GelSight-like visual tactile (VT) sensor has gained popularity as a
high-resolution tactile sensing technology for robots, capable of measuring
touch geometry using a single RGB camera. However, the development of
multi-modal perception for VT sensors remains a challenge, limited by the mono
camera. In this paper, we propose the GelSplitter, a new framework approach the
multi-modal VT sensor with synchronized multi-modal cameras and resemble a more
human-like tactile receptor. Furthermore, we focus on 3D tactile reconstruction
and implement a compact sensor structure that maintains a comparable size to
state-of-the-art VT sensors, even with the addition of a prism and a near
infrared (NIR) camera. We also design a photometric fusion stereo neural
network (PFSNN), which estimates surface normals of objects and reconstructs
touch geometry from both infrared and visible images. Our results demonstrate
that the accuracy of RGB and NIR fusion is higher than that of RGB images
alone. Additionally, our GelSplitter framework allows for a flexible
configuration of different camera sensor combinations, such as RGB and thermal
imaging. |
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DOI: | 10.48550/arxiv.2309.08096 |