ArXiv TLDR

VTouch++: A Multimodal Dataset with Vision-Based Tactile Enhancement for Bimanual Manipulation

🐦 Tweet
2604.20444

Qianxi Hua, Xinyue Li, Zheng Yan, Yang Li, Chi Zhang + 2 more

cs.ROcs.AIcs.DBcs.LG

TLDR

VTouch++ is a new multimodal dataset leveraging vision-based tactile sensing to improve bimanual manipulation in contact-rich tasks.

Key contributions

  • Introduces VTouch++, a multimodal dataset for bimanual manipulation.
  • Leverages vision-based tactile sensing for high-fidelity physical interaction signals.
  • Features a matrix-style task design and automated collection for systematic, scalable learning.
  • Validated through cross-modal retrieval and real-robot evaluations.

Why it matters

Bimanual manipulation, especially in contact-rich tasks, is challenging due to insufficient datasets. VTouch++ addresses this by offering high-fidelity tactile signals, systematic task organization, and scalable data collection. This dataset can significantly advance embodied intelligence and robot learning for complex real-world bimanual tasks.

Original Abstract

Embodied intelligence has advanced rapidly in recent years; however, bimanual manipulation-especially in contact-rich tasks remains challenging. This is largely due to the lack of datasets with rich physical interaction signals, systematic task organization, and sufficient scale. To address these limitations, we introduce the VTOUCH dataset. It leverages vision based tactile sensing to provide high-fidelity physical interaction signals, adopts a matrix-style task design to enable systematic learning, and employs automated data collection pipelines covering real-world, demand-driven scenarios to ensure scalability. To further validate the effectiveness of the dataset, we conduct extensive quantitative experiments on cross-modal retrieval as well as real-robot evaluation. Finally, we demonstrate real-world performance through generalizable inference across multiple robots, policies, and tasks.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.