arXiv Open Access 2025

Avatar4D: Synthesizing Domain-Specific 4D Humans for Real-World Pose Estimation

Jerrin Bright Zhibo Wang Dmytro Klepachevskyi Yuhao Chen Sirisha Rambhatla +2 lainnya
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Abstrak

We present Avatar4D, a real-world transferable pipeline for generating customizable synthetic human motion datasets tailored to domain-specific applications. Unlike prior works, which focus on general, everyday motions and offer limited flexibility, our approach provides fine-grained control over body pose, appearance, camera viewpoint, and environmental context, without requiring any manual annotations. To validate the impact of Avatar4D, we focus on sports, where domain-specific human actions and movement patterns pose unique challenges for motion understanding. In this setting, we introduce Syn2Sport, a large-scale synthetic dataset spanning sports, including baseball and ice hockey. Avatar4D features high-fidelity 4D (3D geometry over time) human motion sequences with varying player appearances rendered in diverse environments. We benchmark several state-of-the-art pose estimation models on Syn2Sport and demonstrate their effectiveness for supervised learning, zero-shot transfer to real-world data, and generalization across sports. Furthermore, we evaluate how closely the generated synthetic data aligns with real-world datasets in feature space. Our results highlight the potential of such systems to generate scalable, controllable, and transferable human datasets for diverse domain-specific tasks without relying on domain-specific real data.

Topik & Kata Kunci

Penulis (7)

J

Jerrin Bright

Z

Zhibo Wang

D

Dmytro Klepachevskyi

Y

Yuhao Chen

S

Sirisha Rambhatla

D

David Clausi

J

John Zelek

Format Sitasi

Bright, J., Wang, Z., Klepachevskyi, D., Chen, Y., Rambhatla, S., Clausi, D. et al. (2025). Avatar4D: Synthesizing Domain-Specific 4D Humans for Real-World Pose Estimation. https://arxiv.org/abs/2512.16199

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Informasi Jurnal
Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓