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Bibliographic Details
Main Authors: Ghosh, Bishal, Li, Emma, Guha, Tanaya
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.20188
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author Ghosh, Bishal
Li, Emma
Guha, Tanaya
author_facet Ghosh, Bishal
Li, Emma
Guha, Tanaya
contents A key component of dyadic spoken interactions is the contextually relevant non-verbal gestures, such as head movements that reflect a listener's response to the interlocutor's speech. Although significant progress has been made in the context of generating co-speech gestures, generating listener's response has remained a challenge. We introduce the task of generating continuous head motion response of a listener in response to the speaker's speech in real time. To this end, we propose a graph-based end-to-end crossmodal model that takes interlocutor's speech audio as input and directly generates head pose angles (roll, pitch, yaw) of the listener in real time. Different from previous work, our approach is completely data-driven, does not require manual annotations or oversimplify head motion to merely nods and shakes. Extensive evaluation on the dyadic interaction sessions on the IEMOCAP dataset shows that our model produces a low overall error (4.5 degrees) and a high frame rate, thereby indicating its deployability in real-world human-robot interaction systems. Our code is available at - https://github.com/bigzen/Active-Listener
format Preprint
id arxiv_https___arxiv_org_abs_2409_20188
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Active Listener: Continuous Generation of Listener's Head Motion Response in Dyadic Interactions
Ghosh, Bishal
Li, Emma
Guha, Tanaya
Robotics
Sound
Audio and Speech Processing
A key component of dyadic spoken interactions is the contextually relevant non-verbal gestures, such as head movements that reflect a listener's response to the interlocutor's speech. Although significant progress has been made in the context of generating co-speech gestures, generating listener's response has remained a challenge. We introduce the task of generating continuous head motion response of a listener in response to the speaker's speech in real time. To this end, we propose a graph-based end-to-end crossmodal model that takes interlocutor's speech audio as input and directly generates head pose angles (roll, pitch, yaw) of the listener in real time. Different from previous work, our approach is completely data-driven, does not require manual annotations or oversimplify head motion to merely nods and shakes. Extensive evaluation on the dyadic interaction sessions on the IEMOCAP dataset shows that our model produces a low overall error (4.5 degrees) and a high frame rate, thereby indicating its deployability in real-world human-robot interaction systems. Our code is available at - https://github.com/bigzen/Active-Listener
title Active Listener: Continuous Generation of Listener's Head Motion Response in Dyadic Interactions
topic Robotics
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2409.20188