arXiv Open Access 2023

Neuromorphic High-Frequency 3D Dancing Pose Estimation in Dynamic Environment

Zhongyang Zhang Kaidong Chai Haowen Yu Ramzi Majaj Francesca Walsh +5 lainnya
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Abstrak

As a beloved sport worldwide, dancing is getting integrated into traditional and virtual reality-based gaming platforms nowadays. It opens up new opportunities in the technology-mediated dancing space. These platforms primarily rely on passive and continuous human pose estimation as an input capture mechanism. Existing solutions are mainly based on RGB or RGB-Depth cameras for dance games. The former suffers in low-lighting conditions due to the motion blur and low sensitivity, while the latter is too power-hungry, has a low frame rate, and has limited working distance. With ultra-low latency, energy efficiency, and wide dynamic range characteristics, the event camera is a promising solution to overcome these shortcomings. We propose YeLan, an event camera-based 3-dimensional high-frequency human pose estimation(HPE) system that survives low-lighting conditions and dynamic backgrounds. We collected the world's first event camera dance dataset and developed a fully customizable motion-to-event physics-aware simulator. YeLan outperforms the baseline models in these challenging conditions and demonstrated robustness against different types of clothing, background motion, viewing angle, occlusion, and lighting fluctuations.

Topik & Kata Kunci

Penulis (10)

Z

Zhongyang Zhang

K

Kaidong Chai

H

Haowen Yu

R

Ramzi Majaj

F

Francesca Walsh

E

Edward Wang

U

Upal Mahbub

H

Hava Siegelmann

D

Donghyun Kim

T

Tauhidur Rahman

Format Sitasi

Zhang, Z., Chai, K., Yu, H., Majaj, R., Walsh, F., Wang, E. et al. (2023). Neuromorphic High-Frequency 3D Dancing Pose Estimation in Dynamic Environment. https://arxiv.org/abs/2301.06648

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Tahun Terbit
2023
Bahasa
en
Sumber Database
arXiv
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Open Access ✓