arXiv Open Access 2026

Not All Frames Are Equal: Complexity-Aware Masked Motion Generation via Motion Spectral Descriptors

Pengfei Zhou Xiangyue Zhang Xukun Shen Yong Hu
Lihat Sumber

Abstrak

Masked generative models have become a strong paradigm for text-to-motion synthesis, but they still treat motion frames too uniformly during masking, attention, and decoding. This is a poor match for motion, where local dynamic complexity varies sharply over time. We show that current masked motion generators degrade disproportionately on dynamically complex motions, and that frame-wise generation error is strongly correlated with motion dynamics. Motivated by this mismatch, we introduce the Motion Spectral Descriptor (MSD), a simple and parameter-free measure of local dynamic complexity computed from the short-time spectrum of motion velocity. Unlike learned difficulty predictors, MSD is deterministic, interpretable, and derived directly from the motion signal itself. We use MSD to make masked motion generation complexity-aware. In particular, MSD guides content-focused masking during training, provides a spectral similarity prior for self-attention, and can additionally modulate token-level sampling during iterative decoding. Built on top of masked motion generators, our method, DynMask, improves motion generation most clearly on dynamically complex motions while also yielding stronger overall FID on HumanML3D and KIT-ML. These results suggest that respecting local motion complexity is a useful design principle for masked motion generation. Project page: https://xiangyue-zhang.github.io/DynMask

Topik & Kata Kunci

Penulis (4)

P

Pengfei Zhou

X

Xiangyue Zhang

X

Xukun Shen

Y

Yong Hu

Format Sitasi

Zhou, P., Zhang, X., Shen, X., Hu, Y. (2026). Not All Frames Are Equal: Complexity-Aware Masked Motion Generation via Motion Spectral Descriptors. https://arxiv.org/abs/2603.29655

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Tahun Terbit
2026
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en
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arXiv
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Open Access ✓