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Hauptverfasser: Liang, Han, Bao, Jiacheng, Zhang, Ruichi, Ren, Sihan, Xu, Yuecheng, Yang, Sibei, Chen, Xin, Yu, Jingyi, Xu, Lan
Format: Preprint
Veröffentlicht: 2023
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Online-Zugang:https://arxiv.org/abs/2312.08985
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author Liang, Han
Bao, Jiacheng
Zhang, Ruichi
Ren, Sihan
Xu, Yuecheng
Yang, Sibei
Chen, Xin
Yu, Jingyi
Xu, Lan
author_facet Liang, Han
Bao, Jiacheng
Zhang, Ruichi
Ren, Sihan
Xu, Yuecheng
Yang, Sibei
Chen, Xin
Yu, Jingyi
Xu, Lan
contents We have recently seen tremendous progress in realistic text-to-motion generation. Yet, the existing methods often fail or produce implausible motions with unseen text inputs, which limits the applications. In this paper, we present OMG, a novel framework, which enables compelling motion generation from zero-shot open-vocabulary text prompts. Our key idea is to carefully tailor the pretrain-then-finetune paradigm into the text-to-motion generation. At the pre-training stage, our model improves the generation ability by learning the rich out-of-domain inherent motion traits. To this end, we scale up a large unconditional diffusion model up to 1B parameters, so as to utilize the massive unlabeled motion data up to over 20M motion instances. At the subsequent fine-tuning stage, we introduce motion ControlNet, which incorporates text prompts as conditioning information, through a trainable copy of the pre-trained model and the proposed novel Mixture-of-Controllers (MoC) block. MoC block adaptively recognizes various ranges of the sub-motions with a cross-attention mechanism and processes them separately with the text-token-specific experts. Such a design effectively aligns the CLIP token embeddings of text prompts to various ranges of compact and expressive motion features. Extensive experiments demonstrate that our OMG achieves significant improvements over the state-of-the-art methods on zero-shot text-to-motion generation. Project page: https://tr3e.github.io/omg-page.
format Preprint
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institution arXiv
publishDate 2023
record_format arxiv
spellingShingle OMG: Towards Open-vocabulary Motion Generation via Mixture of Controllers
Liang, Han
Bao, Jiacheng
Zhang, Ruichi
Ren, Sihan
Xu, Yuecheng
Yang, Sibei
Chen, Xin
Yu, Jingyi
Xu, Lan
Computer Vision and Pattern Recognition
We have recently seen tremendous progress in realistic text-to-motion generation. Yet, the existing methods often fail or produce implausible motions with unseen text inputs, which limits the applications. In this paper, we present OMG, a novel framework, which enables compelling motion generation from zero-shot open-vocabulary text prompts. Our key idea is to carefully tailor the pretrain-then-finetune paradigm into the text-to-motion generation. At the pre-training stage, our model improves the generation ability by learning the rich out-of-domain inherent motion traits. To this end, we scale up a large unconditional diffusion model up to 1B parameters, so as to utilize the massive unlabeled motion data up to over 20M motion instances. At the subsequent fine-tuning stage, we introduce motion ControlNet, which incorporates text prompts as conditioning information, through a trainable copy of the pre-trained model and the proposed novel Mixture-of-Controllers (MoC) block. MoC block adaptively recognizes various ranges of the sub-motions with a cross-attention mechanism and processes them separately with the text-token-specific experts. Such a design effectively aligns the CLIP token embeddings of text prompts to various ranges of compact and expressive motion features. Extensive experiments demonstrate that our OMG achieves significant improvements over the state-of-the-art methods on zero-shot text-to-motion generation. Project page: https://tr3e.github.io/omg-page.
title OMG: Towards Open-vocabulary Motion Generation via Mixture of Controllers
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2312.08985