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CLTP: Contrastive Language-Tactile Pre-training for 3D Contact Geometry Understanding

13 May 2025
Wenxuan Ma
Xiaoge Cao
Y. Zhang
Chaofan Zhang
Shaobo Yang
Peng Hao
Bin Fang
Yinghao Cai
Shaowei Cui
Shuo Wang
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Abstract

Recent advancements in integrating tactile sensing with vision-language models (VLMs) have demonstrated remarkable potential for robotic multimodal perception. However, existing tactile descriptions remain limited to superficial attributes like texture, neglecting critical contact states essential for robotic manipulation. To bridge this gap, we propose CLTP, an intuitive and effective language tactile pretraining framework that aligns tactile 3D point clouds with natural language in various contact scenarios, thus enabling contact-state-aware tactile language understanding for contact-rich manipulation tasks. We first collect a novel dataset of 50k+ tactile 3D point cloud-language pairs, where descriptions explicitly capture multidimensional contact states (e.g., contact location, shape, and force) from the tactile sensor's perspective. CLTP leverages a pre-aligned and frozen vision-language feature space to bridge holistic textual and tactile modalities. Experiments validate its superiority in three downstream tasks: zero-shot 3D classification, contact state classification, and tactile 3D large language model (LLM) interaction. To the best of our knowledge, this is the first study to align tactile and language representations from the contact state perspective for manipulation tasks, providing great potential for tactile-language-action model learning. Code and datasets are open-sourced atthis https URL.

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@article{ma2025_2505.08194,
  title={ CLTP: Contrastive Language-Tactile Pre-training for 3D Contact Geometry Understanding },
  author={ Wenxuan Ma and Xiaoge Cao and Yixiang Zhang and Chaofan Zhang and Shaobo Yang and Peng Hao and Bin Fang and Yinghao Cai and Shaowei Cui and Shuo Wang },
  journal={arXiv preprint arXiv:2505.08194},
  year={ 2025 }
}
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