74
1

DisCoRD: Discrete Tokens to Continuous Motion via Rectified Flow Decoding

Abstract

Human motion is inherently continuous and dynamic, posing significant challenges for generative models. While discrete generation methods are widely used, they suffer from limited expressiveness and frame-wise noise artifacts. In contrast, continuous approaches produce smoother, more natural motion but often struggle to adhere to conditioning signals due to high-dimensional complexity and limited training data. To resolve this discord between discrete and continuous representations, we introduce DisCoRD: Discrete Tokens to Continuous Motion via Rectified Flow Decoding, a novel method that leverages rectified flow to decode discrete motion tokens in the continuous, raw motion space. Our core idea is to frame token decoding as a conditional generation task, ensuring that DisCoRD captures fine-grained dynamics and achieves smoother, more natural motions. Compatible with any discrete-based framework, our method enhances naturalness without compromising faithfulness to the conditioning signals on diverse settings. Extensive evaluations Our project page is available at:this https URL.

View on arXiv
@article{cho2025_2411.19527,
  title={ DisCoRD: Discrete Tokens to Continuous Motion via Rectified Flow Decoding },
  author={ Jungbin Cho and Junwan Kim and Jisoo Kim and Minseo Kim and Mingu Kang and Sungeun Hong and Tae-Hyun Oh and Youngjae Yu },
  journal={arXiv preprint arXiv:2411.19527},
  year={ 2025 }
}
Comments on this paper