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Auteurs principaux: Hu, Guimin, Zhao, Zirui, Heilmann, Lukas, Vardar, Yasemin, Seifi, Hasti
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2411.02118
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author Hu, Guimin
Zhao, Zirui
Heilmann, Lukas
Vardar, Yasemin
Seifi, Hasti
author_facet Hu, Guimin
Zhao, Zirui
Heilmann, Lukas
Vardar, Yasemin
Seifi, Hasti
contents Designing and displaying haptic signals with sensory and emotional attributes can improve the user experience in various applications. Free-form user language provides rich sensory and emotional information for haptic design (e.g., ``This signal feels smooth and exciting''), but little work exists on linking user descriptions to haptic signals (i.e., language grounding). To address this gap, we conducted a study where 12 users described the feel of 32 signals perceived on a surface haptics (i.e., electrovibration) display. We developed a computational pipeline using natural language processing (NLP) techniques, such as GPT-3.5 Turbo and word embedding methods, to extract sensory and emotional keywords and group them into semantic clusters (i.e., concepts). We linked the keyword clusters to haptic signal features (e.g., pulse count) using correlation analysis. The proposed pipeline demonstrates the viability of a computational approach to analyzing haptic experiences. We discuss our future plans for creating a predictive model of haptic experience.
format Preprint
id arxiv_https___arxiv_org_abs_2411_02118
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Grounding Emotional Descriptions to Electrovibration Haptic Signals
Hu, Guimin
Zhao, Zirui
Heilmann, Lukas
Vardar, Yasemin
Seifi, Hasti
Human-Computer Interaction
Computation and Language
Designing and displaying haptic signals with sensory and emotional attributes can improve the user experience in various applications. Free-form user language provides rich sensory and emotional information for haptic design (e.g., ``This signal feels smooth and exciting''), but little work exists on linking user descriptions to haptic signals (i.e., language grounding). To address this gap, we conducted a study where 12 users described the feel of 32 signals perceived on a surface haptics (i.e., electrovibration) display. We developed a computational pipeline using natural language processing (NLP) techniques, such as GPT-3.5 Turbo and word embedding methods, to extract sensory and emotional keywords and group them into semantic clusters (i.e., concepts). We linked the keyword clusters to haptic signal features (e.g., pulse count) using correlation analysis. The proposed pipeline demonstrates the viability of a computational approach to analyzing haptic experiences. We discuss our future plans for creating a predictive model of haptic experience.
title Grounding Emotional Descriptions to Electrovibration Haptic Signals
topic Human-Computer Interaction
Computation and Language
url https://arxiv.org/abs/2411.02118