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Autori principali: Siyao, Li, Gu, Tianpei, Yang, Zhitao, Lin, Zhengyu, Liu, Ziwei, Ding, Henghui, Yang, Lei, Loy, Chen Change
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2403.18811
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author Siyao, Li
Gu, Tianpei
Yang, Zhitao
Lin, Zhengyu
Liu, Ziwei
Ding, Henghui
Yang, Lei
Loy, Chen Change
author_facet Siyao, Li
Gu, Tianpei
Yang, Zhitao
Lin, Zhengyu
Liu, Ziwei
Ding, Henghui
Yang, Lei
Loy, Chen Change
contents We introduce a novel task within the field of 3D dance generation, termed dance accompaniment, which necessitates the generation of responsive movements from a dance partner, the "follower", synchronized with the lead dancer's movements and the underlying musical rhythm. Unlike existing solo or group dance generation tasks, a duet dance scenario entails a heightened degree of interaction between the two participants, requiring delicate coordination in both pose and position. To support this task, we first build a large-scale and diverse duet interactive dance dataset, DD100, by recording about 117 minutes of professional dancers' performances. To address the challenges inherent in this task, we propose a GPT-based model, Duolando, which autoregressively predicts the subsequent tokenized motion conditioned on the coordinated information of the music, the leader's and the follower's movements. To further enhance the GPT's capabilities of generating stable results on unseen conditions (music and leader motions), we devise an off-policy reinforcement learning strategy that allows the model to explore viable trajectories from out-of-distribution samplings, guided by human-defined rewards. Based on the collected dataset and proposed method, we establish a benchmark with several carefully designed metrics.
format Preprint
id arxiv_https___arxiv_org_abs_2403_18811
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Duolando: Follower GPT with Off-Policy Reinforcement Learning for Dance Accompaniment
Siyao, Li
Gu, Tianpei
Yang, Zhitao
Lin, Zhengyu
Liu, Ziwei
Ding, Henghui
Yang, Lei
Loy, Chen Change
Computer Vision and Pattern Recognition
Graphics
Sound
Audio and Speech Processing
We introduce a novel task within the field of 3D dance generation, termed dance accompaniment, which necessitates the generation of responsive movements from a dance partner, the "follower", synchronized with the lead dancer's movements and the underlying musical rhythm. Unlike existing solo or group dance generation tasks, a duet dance scenario entails a heightened degree of interaction between the two participants, requiring delicate coordination in both pose and position. To support this task, we first build a large-scale and diverse duet interactive dance dataset, DD100, by recording about 117 minutes of professional dancers' performances. To address the challenges inherent in this task, we propose a GPT-based model, Duolando, which autoregressively predicts the subsequent tokenized motion conditioned on the coordinated information of the music, the leader's and the follower's movements. To further enhance the GPT's capabilities of generating stable results on unseen conditions (music and leader motions), we devise an off-policy reinforcement learning strategy that allows the model to explore viable trajectories from out-of-distribution samplings, guided by human-defined rewards. Based on the collected dataset and proposed method, we establish a benchmark with several carefully designed metrics.
title Duolando: Follower GPT with Off-Policy Reinforcement Learning for Dance Accompaniment
topic Computer Vision and Pattern Recognition
Graphics
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2403.18811