Salvato in:
Dettagli Bibliografici
Autori principali: Zhou, Jianyi, Gao, Ziteng, Hong, Feiyang, Liu, Zirui, Zhang, Guannan, Dai, Weisheng, Zhen, Ruichen, Lyu, Chuqiao, Wu, Haotian, Mao, Yinian, Wang, Xushi, Jiang, Yuxiang, Ding, Wenbo, Yang, Shuo
Natura: Preprint
Pubblicazione: 2026
Soggetti:
Accesso online:https://arxiv.org/abs/2605.13083
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866909039513829376
author Zhou, Jianyi
Gao, Ziteng
Hong, Feiyang
Liu, Zirui
Zhang, Guannan
Dai, Weisheng
Zhen, Ruichen
Lyu, Chuqiao
Wu, Haotian
Mao, Yinian
Wang, Xushi
Jiang, Yuxiang
Ding, Wenbo
Yang, Shuo
author_facet Zhou, Jianyi
Gao, Ziteng
Hong, Feiyang
Liu, Zirui
Zhang, Guannan
Dai, Weisheng
Zhen, Ruichen
Lyu, Chuqiao
Wu, Haotian
Mao, Yinian
Wang, Xushi
Jiang, Yuxiang
Ding, Wenbo
Yang, Shuo
contents Egocentric human video data, which captures rich human-environment interactions and can be collected at scale, has become a key driver of embodied intelligence research. However, existing egocentric datasets typically lack tactile sensing, a critical modality that provides direct cues about contact, force, and pressure in human-object interaction. Without such signals, models struggle to learn physically grounded representations of real-world interaction dynamics. While tactile sensors provide these cues, deploying high-quality tactile hardware at scale remains expensive and cumbersome. This raises a central question: can tactile feedback be inferred directly from visual observations, enabling scalable tactile supervision for egocentric video data and supporting physically grounded embodied learning? To enable research in this direction, we introduce EgoTouch, a large-scale multi-view egocentric dataset with dense tactile supervision for bimanual hand-object interaction. EgoTouch comprises 208 manipulation tasks spanning 1,891 episodes in diverse indoor and outdoor environments, with synchronized multi-view RGB (head-mounted egocentric and dual wrist-mounted cameras), bimanual 3D hand pose, and continuous pressure maps from wearable tactile sensors. Building on EgoTouch, we introduce TouchAnything, a baseline multi-view vision-to-touch prediction framework that uses the egocentric view as the primary input and flexibly leverages available wrist-mounted views at inference time. Experiments show that incorporating wrist-mounted views generally improves tactile prediction over egocentric-only input, achieving up to 5.0% relative improvement in Contact IoU and 6.1% relative improvement in Volumetric IoU. We will publicly release the dataset, code, and benchmark.
format Preprint
id arxiv_https___arxiv_org_abs_2605_13083
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TouchAnything: A Dataset and Framework for Bimanual Tactile Estimation from Egocentric Video
Zhou, Jianyi
Gao, Ziteng
Hong, Feiyang
Liu, Zirui
Zhang, Guannan
Dai, Weisheng
Zhen, Ruichen
Lyu, Chuqiao
Wu, Haotian
Mao, Yinian
Wang, Xushi
Jiang, Yuxiang
Ding, Wenbo
Yang, Shuo
Robotics
Egocentric human video data, which captures rich human-environment interactions and can be collected at scale, has become a key driver of embodied intelligence research. However, existing egocentric datasets typically lack tactile sensing, a critical modality that provides direct cues about contact, force, and pressure in human-object interaction. Without such signals, models struggle to learn physically grounded representations of real-world interaction dynamics. While tactile sensors provide these cues, deploying high-quality tactile hardware at scale remains expensive and cumbersome. This raises a central question: can tactile feedback be inferred directly from visual observations, enabling scalable tactile supervision for egocentric video data and supporting physically grounded embodied learning? To enable research in this direction, we introduce EgoTouch, a large-scale multi-view egocentric dataset with dense tactile supervision for bimanual hand-object interaction. EgoTouch comprises 208 manipulation tasks spanning 1,891 episodes in diverse indoor and outdoor environments, with synchronized multi-view RGB (head-mounted egocentric and dual wrist-mounted cameras), bimanual 3D hand pose, and continuous pressure maps from wearable tactile sensors. Building on EgoTouch, we introduce TouchAnything, a baseline multi-view vision-to-touch prediction framework that uses the egocentric view as the primary input and flexibly leverages available wrist-mounted views at inference time. Experiments show that incorporating wrist-mounted views generally improves tactile prediction over egocentric-only input, achieving up to 5.0% relative improvement in Contact IoU and 6.1% relative improvement in Volumetric IoU. We will publicly release the dataset, code, and benchmark.
title TouchAnything: A Dataset and Framework for Bimanual Tactile Estimation from Egocentric Video
topic Robotics
url https://arxiv.org/abs/2605.13083