E-3DPSM: A State Machine for Event-Based Egocentric 3D Human Pose Estimation
Mayur Deshmukh, Hiroyasu Akada, Helge Rhodin, Christian Theobalt, Vladislav Golyanik

TL;DR
E-3DPSM introduces an event-driven state machine for egocentric 3D human pose estimation, achieving real-time performance and improved accuracy by leveraging event camera properties.
Contribution
The paper presents a novel continuous pose state machine tailored for event streams, enhancing accuracy and stability in egocentric 3D human pose estimation.
Findings
Runs in real-time at 80 Hz on a single workstation.
Improves accuracy by up to 19% (MPJPE) over previous methods.
Increases temporal stability by up to 2.7x.
Abstract
Event cameras offer multiple advantages in monocular egocentric 3D human pose estimation from head-mounted devices, such as millisecond temporal resolution, high dynamic range, and negligible motion blur. Existing methods effectively leverage these properties, but suffer from low 3D estimation accuracy, insufficient in many applications (e.g., immersive VR/AR). This is due to the design not being fully tailored towards event streams (e.g., their asynchronous and continuous nature), leading to high sensitivity to self-occlusions and temporal jitter in the estimates. This paper rethinks the setting and introduces E-3DPSM, an event-driven continuous pose state machine for event-based egocentric 3D human pose estimation. E-3DPSM aligns continuous human motion with fine-grained event dynamics; it evolves latent states and predicts continuous changes in 3D joint positions associated with…
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