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SToLa: Self-Adaptive Touch-Language Framework with Tactile Commonsense Reasoning in Open-Ended Scenarios

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This paper explores the challenges of integrating tactile sensing into intelligent systems for multimodal reasoning, particularly in enabling commonsense reasoning about the open-ended physical world. We identify two key challenges: modality discrepancy, where existing large touch-language models often treat touch as a mere sub-modality of language, and open-ended tactile data scarcity, where current datasets lack the diversity, open-endness and complexity needed for reasoning. To overcome these challenges, we introduce SToLa, a Self-Adaptive Touch-Language framework. SToLa utilizes Mixture of Experts (MoE) to dynamically process, unify, and manage tactile and language modalities, capturing their unique characteristics. Crucially, we also present a comprehensive tactile commonsense reasoning dataset and benchmark featuring free-form questions and responses, 8 physical properties, 4 interactive characteristics, and diverse commonsense knowledge. Experiments show SToLa exhibits competitive performance compared to existing models on the PhysiCLeAR benchmark and self-constructed datasets, proving the effectiveness of the Mixture of Experts architecture in multimodal management and the performance advantages for open-scenario tactile commonsense reasoning tasks.

Ning Cheng, Jinan Xu, Jialing Chen, Bin Fang, Wenjuan Han• 2025

Related benchmarks

TaskDatasetResultRank
Tactile ReasoningTouchReason-Bench
H-Acc63.7
12
Tactile Property UnderstandingPHYSICLEAR
PC Accuracy62.28
6
Commonsense-Driven ReasoningTactileBench 1.0 (test)
METEOR26.15
4
Fundamental property UnderstandingTactileBench 1.0 (test)
METEOR Score31.34
4
Tactile Commonsense ReasoningTactileBench
METEOR Score30.27
4
Tactile Interaction PerceptionTactileBench 1.0 (test)
METEOR Score31.24
4
Tactile Question AnsweringPHYSICLEAR
CIDEr195
3
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