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Main Authors: Torshizi, Parisa Ghanad, Hensel, Laura B., Shapiro, Ari, Marsella, Stacy C.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.14408
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author Torshizi, Parisa Ghanad
Hensel, Laura B.
Shapiro, Ari
Marsella, Stacy C.
author_facet Torshizi, Parisa Ghanad
Hensel, Laura B.
Shapiro, Ari
Marsella, Stacy C.
contents Co-speech gestures convey a wide variety of meanings and play an important role in face-to-face human interactions. These gestures significantly influence the addressee's engagement, recall, comprehension, and attitudes toward the speaker. Similarly, they impact interactions between humans and embodied virtual agents. The process of selecting and animating meaningful gestures has thus become a key focus in the design of these agents. However, automating this gesture selection process poses a significant challenge. Prior gesture generation techniques have varied from fully automated, data-driven methods, which often struggle to produce contextually meaningful gestures, to more manual approaches that require crafting specific gesture expertise and are time-consuming and lack generalizability. In this paper, we leverage the semantic capabilities of Large Language Models to develop a gesture selection approach that suggests meaningful, appropriate co-speech gestures. We first describe how information on gestures is encoded into GPT-4. Then, we conduct a study to evaluate alternative prompting approaches for their ability to select meaningful, contextually relevant gestures and to align them appropriately with the co-speech utterance. Finally, we detail and demonstrate how this approach has been implemented within a virtual agent system, automating the selection and subsequent animation of the selected gestures for enhanced human-agent interactions.
format Preprint
id arxiv_https___arxiv_org_abs_2503_14408
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Large Language Models for Virtual Human Gesture Selection
Torshizi, Parisa Ghanad
Hensel, Laura B.
Shapiro, Ari
Marsella, Stacy C.
Human-Computer Interaction
Computation and Language
Co-speech gestures convey a wide variety of meanings and play an important role in face-to-face human interactions. These gestures significantly influence the addressee's engagement, recall, comprehension, and attitudes toward the speaker. Similarly, they impact interactions between humans and embodied virtual agents. The process of selecting and animating meaningful gestures has thus become a key focus in the design of these agents. However, automating this gesture selection process poses a significant challenge. Prior gesture generation techniques have varied from fully automated, data-driven methods, which often struggle to produce contextually meaningful gestures, to more manual approaches that require crafting specific gesture expertise and are time-consuming and lack generalizability. In this paper, we leverage the semantic capabilities of Large Language Models to develop a gesture selection approach that suggests meaningful, appropriate co-speech gestures. We first describe how information on gestures is encoded into GPT-4. Then, we conduct a study to evaluate alternative prompting approaches for their ability to select meaningful, contextually relevant gestures and to align them appropriately with the co-speech utterance. Finally, we detail and demonstrate how this approach has been implemented within a virtual agent system, automating the selection and subsequent animation of the selected gestures for enhanced human-agent interactions.
title Large Language Models for Virtual Human Gesture Selection
topic Human-Computer Interaction
Computation and Language
url https://arxiv.org/abs/2503.14408