Saved in:
Bibliographic Details
Main Authors: Liu, Haiyang, Zhu, Zihao, Becherini, Giorgio, Peng, Yichen, Su, Mingyang, Zhou, You, Zhe, Xuefei, Iwamoto, Naoya, Zheng, Bo, Black, Michael J.
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2401.00374
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914735351398400
author Liu, Haiyang
Zhu, Zihao
Becherini, Giorgio
Peng, Yichen
Su, Mingyang
Zhou, You
Zhe, Xuefei
Iwamoto, Naoya
Zheng, Bo
Black, Michael J.
author_facet Liu, Haiyang
Zhu, Zihao
Becherini, Giorgio
Peng, Yichen
Su, Mingyang
Zhou, You
Zhe, Xuefei
Iwamoto, Naoya
Zheng, Bo
Black, Michael J.
contents We propose EMAGE, a framework to generate full-body human gestures from audio and masked gestures, encompassing facial, local body, hands, and global movements. To achieve this, we first introduce BEAT2 (BEAT-SMPLX-FLAME), a new mesh-level holistic co-speech dataset. BEAT2 combines a MoShed SMPL-X body with FLAME head parameters and further refines the modeling of head, neck, and finger movements, offering a community-standardized, high-quality 3D motion captured dataset. EMAGE leverages masked body gesture priors during training to boost inference performance. It involves a Masked Audio Gesture Transformer, facilitating joint training on audio-to-gesture generation and masked gesture reconstruction to effectively encode audio and body gesture hints. Encoded body hints from masked gestures are then separately employed to generate facial and body movements. Moreover, EMAGE adaptively merges speech features from the audio's rhythm and content and utilizes four compositional VQ-VAEs to enhance the results' fidelity and diversity. Experiments demonstrate that EMAGE generates holistic gestures with state-of-the-art performance and is flexible in accepting predefined spatial-temporal gesture inputs, generating complete, audio-synchronized results. Our code and dataset are available https://pantomatrix.github.io/EMAGE/
format Preprint
id arxiv_https___arxiv_org_abs_2401_00374
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle EMAGE: Towards Unified Holistic Co-Speech Gesture Generation via Expressive Masked Audio Gesture Modeling
Liu, Haiyang
Zhu, Zihao
Becherini, Giorgio
Peng, Yichen
Su, Mingyang
Zhou, You
Zhe, Xuefei
Iwamoto, Naoya
Zheng, Bo
Black, Michael J.
Computer Vision and Pattern Recognition
We propose EMAGE, a framework to generate full-body human gestures from audio and masked gestures, encompassing facial, local body, hands, and global movements. To achieve this, we first introduce BEAT2 (BEAT-SMPLX-FLAME), a new mesh-level holistic co-speech dataset. BEAT2 combines a MoShed SMPL-X body with FLAME head parameters and further refines the modeling of head, neck, and finger movements, offering a community-standardized, high-quality 3D motion captured dataset. EMAGE leverages masked body gesture priors during training to boost inference performance. It involves a Masked Audio Gesture Transformer, facilitating joint training on audio-to-gesture generation and masked gesture reconstruction to effectively encode audio and body gesture hints. Encoded body hints from masked gestures are then separately employed to generate facial and body movements. Moreover, EMAGE adaptively merges speech features from the audio's rhythm and content and utilizes four compositional VQ-VAEs to enhance the results' fidelity and diversity. Experiments demonstrate that EMAGE generates holistic gestures with state-of-the-art performance and is flexible in accepting predefined spatial-temporal gesture inputs, generating complete, audio-synchronized results. Our code and dataset are available https://pantomatrix.github.io/EMAGE/
title EMAGE: Towards Unified Holistic Co-Speech Gesture Generation via Expressive Masked Audio Gesture Modeling
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.00374