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Main Authors: Cheng, Ning, Guan, Changhao, Gao, Jing, Wang, Weihao, Li, You, Meng, Fandong, Zhou, Jie, Fang, Bin, Xu, Jinan, Han, Wenjuan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.03813
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author Cheng, Ning
Guan, Changhao
Gao, Jing
Wang, Weihao
Li, You
Meng, Fandong
Zhou, Jie
Fang, Bin
Xu, Jinan
Han, Wenjuan
author_facet Cheng, Ning
Guan, Changhao
Gao, Jing
Wang, Weihao
Li, You
Meng, Fandong
Zhou, Jie
Fang, Bin
Xu, Jinan
Han, Wenjuan
contents Touch holds a pivotal position in enhancing the perceptual and interactive capabilities of both humans and robots. Despite its significance, current tactile research mainly focuses on visual and tactile modalities, overlooking the language domain. Inspired by this, we construct Touch100k, a paired touch-language-vision dataset at the scale of 100k, featuring tactile sensation descriptions in multiple granularities (i.e., sentence-level natural expressions with rich semantics, including contextual and dynamic relationships, and phrase-level descriptions capturing the key features of tactile sensations). Based on the dataset, we propose a pre-training method, Touch-Language-Vision Representation Learning through Curriculum Linking (TLV-Link, for short), inspired by the concept of curriculum learning. TLV-Link aims to learn a tactile representation for the GelSight sensor and capture the relationship between tactile, language, and visual modalities. We evaluate our representation's performance across two task categories (namely, material property identification and robot grasping prediction), focusing on tactile representation and zero-shot touch understanding. The experimental evaluation showcases the effectiveness of our representation. By enabling TLV-Link to achieve substantial improvements and establish a new state-of-the-art in touch-centric multimodal representation learning, Touch100k demonstrates its value as a valuable resource for research. Project page: https://cocacola-lab.github.io/Touch100k/.
format Preprint
id arxiv_https___arxiv_org_abs_2406_03813
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Touch100k: A Large-Scale Touch-Language-Vision Dataset for Touch-Centric Multimodal Representation
Cheng, Ning
Guan, Changhao
Gao, Jing
Wang, Weihao
Li, You
Meng, Fandong
Zhou, Jie
Fang, Bin
Xu, Jinan
Han, Wenjuan
Robotics
Touch holds a pivotal position in enhancing the perceptual and interactive capabilities of both humans and robots. Despite its significance, current tactile research mainly focuses on visual and tactile modalities, overlooking the language domain. Inspired by this, we construct Touch100k, a paired touch-language-vision dataset at the scale of 100k, featuring tactile sensation descriptions in multiple granularities (i.e., sentence-level natural expressions with rich semantics, including contextual and dynamic relationships, and phrase-level descriptions capturing the key features of tactile sensations). Based on the dataset, we propose a pre-training method, Touch-Language-Vision Representation Learning through Curriculum Linking (TLV-Link, for short), inspired by the concept of curriculum learning. TLV-Link aims to learn a tactile representation for the GelSight sensor and capture the relationship between tactile, language, and visual modalities. We evaluate our representation's performance across two task categories (namely, material property identification and robot grasping prediction), focusing on tactile representation and zero-shot touch understanding. The experimental evaluation showcases the effectiveness of our representation. By enabling TLV-Link to achieve substantial improvements and establish a new state-of-the-art in touch-centric multimodal representation learning, Touch100k demonstrates its value as a valuable resource for research. Project page: https://cocacola-lab.github.io/Touch100k/.
title Touch100k: A Large-Scale Touch-Language-Vision Dataset for Touch-Centric Multimodal Representation
topic Robotics
url https://arxiv.org/abs/2406.03813