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VinT-6D: A Large-Scale Object-in-hand Dataset from Vision, Touch and Proprioception

31 December 2024
Zhaoliang Wan
Yonggen Ling
Senlin Yi
Lu Qi
Wangwei Lee
M. Lu
Sicheng Yang
Xiao Teng
Peng Lu
Xu Yang
Ming Yang
Hui Cheng
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Abstract

This paper addresses the scarcity of large-scale datasets for accurate object-in-hand pose estimation, which is crucial for robotic in-hand manipulation within the ``Perception-Planning-Control" paradigm. Specifically, we introduce VinT-6D, the first extensive multi-modal dataset integrating vision, touch, and proprioception, to enhance robotic manipulation. VinT-6D comprises 2 million VinT-Sim and 0.1 million VinT-Real splits, collected via simulations in MuJoCo and Blender and a custom-designed real-world platform. This dataset is tailored for robotic hands, offering models with whole-hand tactile perception and high-quality, well-aligned data. To the best of our knowledge, the VinT-Real is the largest considering the collection difficulties in the real-world environment so that it can bridge the gap of simulation to real compared to the previous works. Built upon VinT-6D, we present a benchmark method that shows significant improvements in performance by fusing multi-modal information. The project is available atthis https URL.

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